Research and development (R&D) (rd)

National Reference Metadata in Single Integrated Metadata Structure (SIMS)

Compiling agency: Hungarian Central Statistical Office


Eurostat metadata
Reference metadata
1. Contact
2. Metadata update
3. Statistical presentation
4. Unit of measure
5. Reference Period
6. Institutional Mandate
7. Confidentiality
8. Release policy
9. Frequency of dissemination
10. Accessibility and clarity
11. Quality management
12. Relevance
13. Accuracy
14. Timeliness and punctuality
15. Coherence and comparability
16. Cost and Burden
17. Data revision
18. Statistical processing
19. Comment
Related Metadata
Annexes (including footnotes)



For any question on data and metadata, please contact: Eurostat user support

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1. Contact Top
1.1. Contact organisation

Hungarian Central Statistical Office

1.2. Contact organisation unit

Business Statistics Department

Internal Trade and Research and Development Statistics Section

1.5. Contact mail address

1024 Budapest, Keleti Károly utca 5-7, Hungary


2. Metadata update Top
2.1. Metadata last certified 30/10/2023
2.2. Metadata last posted 30/10/2023
2.3. Metadata last update 30/10/2023


3. Statistical presentation Top
3.1. Data description

Statistics on Business enterprise R&D (BERD) measure research and experimental development (R&D) performed in the business enterprise sector, i.e. R&D expenditure and R&D personnel. In line with this objective the target population for the national R&D survey of the business enterprise sector consist of all R&D performing enterprises (including all R&D performers – occasional and continuous, known and unknown - in all branches and size classes) belonging to this sector. The “enterprise” is defined in Council Regulation (EEC) No 1993/696 of 15 March 1993. The results are related to the population of all R&D performing enterprises classified in Sections A to U of the common statistical classification of economic activities as established by Regulation (EC) No 1893/2006 of the European Parliament and of the Council (NACE Rev.2).

 

The main concepts and definitions used for the production of R&D statistics are given by OECD (2015), Frascati Manual 2015: Guidelines for Collecting and Reporting Data on Research and Experimental Development, The Measurement of Scientific, Technological and Innovation Activities, which is the internationally recognised standard methodology for collecting R&D statistics and by Eurostat’s European Business Statistics Methodological Manual on R&D Statistics. (EBS Methodological Manual on R&D Statistics).

 

Since the beginning of 2021, the collection of R&D statistics is based on Commission Implementing Regulation (EU) No 2020/1197 of 30 July 2020. The Regulation sets the framework for the collection of R&D statistics and specifies the main variables of interest and their breakdowns at predefined level of detail. Statistics on science, technology and innovation were collected until the end of 2020 based on Commission Implementing  Regulation (EU) No 2012/995 concerning the production and development of Community statistics on science and technology.

3.2. Classification system
3.2.1. Additional classifications
Additional classification used Description
 by R&D intensity  OECD Taxonomy of Economic Activities Based on R&D Intensity.
   
   
3.3. Coverage - sector

See below.

3.3.1. General coverage
Definition of R&D  No deviations.
Fields of Research and Development (FORD)  No deviations.
Socioeconomic objective (SEO by NABS)  No deviations.
3.3.2. Sector institutional coverage
Business enterprise sector  The BES sector is defined in line with FM2015 and SNA Corporations sector, including public corporations, NPIs that are market producers of goods or services or serve business, but excluding those that are HE institutions. Units that are borderline cases are sectoralised in accordance to SNA.
Hospitals and clinics  Hospitals or clinics that belong to BES according to SNA are included in BES. (Most hospitals that perform R&D are included in the GOV and HES sectors.)
Inclusion of units that primarily do not belong to BES  A few potential R&D performing PNP units that primarily do not belong to BES are observed in the BES sector.
3.3.3. R&D variable coverage
R&D administration and other support activities  No deviations from FM.
External R&D personnel  No deviations from FM. Categories included: R&D consultants, leased R&D employees, Doctoral or master students and R&D grant holders.
Clinical trials  The R&D part of the clinical trials performed by units belonging to BES are included.
3.3.4. International R&D transactions
Receipts from rest of the world by sector - availability  Available
Payments to rest of the world by sector - availability  No statistics available.
Intramural R&D expenditure in foreign-controlled enterprises – coverage   Foreign-controlled enterprises are covered in the R&D data collection. Foreign-controlled and domestic enterprises can be distinguished. 
3.3.5. Extramural R&D expenditures

According to the Frascati Manual, expenditure on extramural R&D (i.e. R&D performed outside the statistical unit enterprise) is not included in intramural R&D performance totals (FM, §4.12).

Data collection  on extramural R&D expenditure (Yes/No)  Yes.
Method for separating extramural R&D expenditure from intramural R&D expenditure Survey is designed to collect data on extramural R&D expenditure separately. Guidelines are provided in the filling instructions to help data providers distinguish between extramural and intramural R&D activities (e.g. the organisation in charge of the management of the R&D project). Expenditures related to extramural R&D activities are to be reported under "contracted-out R&D costs".
Difficulties to distinguish intramural from extramural R&D expenditure  Yes, in some cases (i.e.: to distinguish between purchased R&D services from fully contacted-out projects).
3.4. Statistical concepts and definitions

See below.

3.4.1. R&D expenditure
Coverage of years  Calendar year
Source of funds

 There is a complete report of BERD by sources of funds. Data is collected by internal/external breakdown and by transfer/exchange breakdown.

Type of R&D  No deviations. (Until 2020 breakdown of R&D expenditure by type of R&D was estimated based on the breakdown of R&D costs by type of R&D.)
Type of costs  No deviations. 
Economic activity of the unit  Data on main economic activity of the institution conducting the R&D activity is by NACE classification, in line with the National Business Register.
Economic activity of industry served (for enterprises in ISIC/NACE 72)   Industry orientation for enterprises in NACE 72 is surveyed by a dedicated survey question on product field. 
Product field  Data is collected on Product field by NACE classification at 2-digits, with the exclusion of NACE 72. Multiple product fields can be selected.
Defence R&D - method for obtaining data on R&D expenditure  Data on defence R&D is collected by SEO breakdown.
3.4.2. R&D personnel

See below.

3.4.2.1. R&D personnel – Head Counts (HC)
Coverage of years  Total number of persons employed during the calendar year.
Function  Data are available by functions: 'Researchers', 'technicians' and 'other supporting staff'. Data on R&D personnel is collected separately and both for internal and external personnel, in line with the Frascati Manual.
Qualification  Since 1999 qualification of R&D personnel is surveyed according to ISCED. Available for internal personnel only. Data on qualification of the external R&D personnel is not collected, as data is not available in good quality.
Age  Available for internal personnel only. Data on the age of the external R&D personnel is not collected, as data is not available in good quality.
Citizenship  Available for internal personnel only. Data on citizenship of the external R&D personnel is not collected, as data is not available in good quality.
3.4.2.2. R&D personnel – Full Time Equivalent (FTE)
Coverage of years  Calendar year
Function  Data are available by functions: 'Researchers', 'technicians' and 'other supporting staff'. Data on R&D personnel is collected separately and both for internal and external personnel, in line with the Frascati Manual.
Qualification  Not available
Age  Not available
Citizenship  Not available
3.4.2.3. FTE calculation

Reporting units make the calculations of FTE for Researchers, technicians and other supporting staff.

3.4.2.4. R&D personnel - Cross-classification by function and qualification
Cross-classification Unit Frequency
 Available for internal R&D personnel only  Headcount  Annual
     
     
3.5. Statistical unit

The statistical unit for BERD is the enterprise as defined by Council Regulation (EEC) No 1993/696 of 15 March 1993.

The statistical unit of the data collection is the enterprise, but the reporting unit of the data collection is the legal unit. In case of enterprises consisting of multiple legal units: all legal units are surveyed that belong to an enterprise, where a potential R&D performing legal unit is identified.

3.6. Statistical population

See below.

3.6.1. National target population

The objective of the European R&D statistics is to cover all intramural R&D activities. In line with this objective the target population for the national R&D survey of the Business Enterprise Sector should consist of all R&D performing enterprises (including all R&D performers – occasional and continuous, known and unknown - in all branches and size classes) belonging to this sector. In practice however, countries in their R&D surveys might exclude some enterprises for which R&D activities are deemed to be non-existent or negligible, in order to limit the response burden or due to budgetary constraints.

 

  Target population when sample/census survey is used for collection of raw data Target population when administrative data or pre-compiled statistics are used
Definition of the national target population No deviation. All known and potential R&D performing enterprises in the reference period are included in the target population (with both regular and occasional R&D performance).  
Estimation of the target population size  ca 10.000 enterprises  
Size cut-off point  Those enterprises with 0 employees that belong to NACE 72 are not surveyed. There is no cut-off point on the volume of R&D.   
Size classes covered (and if different for some industries/services)  All size classes are covered for all industries/services.  
NACE/ISIC classes covered  All NACE classes are covered.  
3.6.2. Frame population – Description

The target population is the population for which inferences are made. The frame (or frames, as sometimes several frames are used) is a device that permits access to population units. The frame population is the set of population units which can be accessed through the frame and the survey data really refer to this population.

 

Method used to define the frame population  All business enterprises active in the reference period.
Methods and data sources used for identifying a unit as known or supposed R&D performer Known or potential R&D performers are identified by including in the data collection the following enterprises:

- known R&D performers during previous years

- businesses that received funds from the EU and/or national government budget during the reference period for R&D activities

- businesses that have NACE 72 as primary activity

Data sources included:

-list of former (from previous 5 years) R&D performers from R&D statistics of (source: HCSO)

-list from government funders which include identification data on enterprises that received funds from the EU and/or national government for R&D (sources: Ministries, National Research, Development and Innovation Office)

- list of enterprises that received tax credits or allowances for R&D (source: Tax Authority)

- various media sources

- national business register (source: HCSO)

- innovation statistics (national CIS data collections) (source: HCSO)

Frequency and the methods applied for inclusion R&D performers not known and not supposed to perform R&D  We continously monitor the Hungarian media to spot enterprises that might have R&D activities.
Number of “new”1) R&D enterprises that have been identified and included in the target population  There have been approx. 3000 "new" reporting units who were identified for the 2021 data collection, from the data sources described above (government funding list, media, etc.) and also because of the methodologhical change to the SUE.
Systematic exclusion of units from the process of updating the target population  We systematically exclude individuals and those who are self-employed.
Estimation of the frame population  ca 10.000

1)       i.e. enterprises previously not known or not supposed to perform R&D

3.7. Reference area

Not requested. R&D statistics cover national and regional data.

3.8. Coverage - Time

Not requested. See point 3.4.

3.9. Base period

Not requested.


4. Unit of measure Top

R&D personnel: number of persons

R&D expenditure: thousand Euro, thousand HUF


5. Reference Period Top

January 1 - December 31, 2021


6. Institutional Mandate Top
6.1. Institutional Mandate - legal acts and other agreements

See below.

6.1.1. European legislation
Legal acts / agreements Since the beginning of 2021, the collection of R&D statistics is based on Commission Implementing Regulation (EU) No 2020/1197 of 30 July 2020 laying down technical specifications and arrangements pursuant to Regulation (EU) 2019/2152 of the European Parliament and of the Council on European business statistics repealing 10 legal acts in the field of business statistics. Regulation No 2020/1197 sets the framework for the collection of R&D statistics and specifies the main variables of interest and their breakdowns at predefined level of detail.  Commission Implementing Regulation (EU) No 2012/995 concerning the production and development of Community statistics on science and technology was in force until the end of 2020.
Nature of the “obligations” of responsible national organisations to produce statistics and report to international organisations

Mandatory

6.1.2. National legislation
Existence of R&D specific statistical legislation  R&D data collection was carried out according to the national Government Decree on The National Statistical Data Collection Programme enacting the surveys of the reference period
Legal acts  Hungarian Act CLV. of 2016. on Statistics
Obligation of responsible organisations to produce statistics (as derived from the legal acts)  Yes
Right of responsible organisations to collect data – obligation of (natural / legal) persons to provide raw and administrative data (as derived from the legal acts)  Yes
Obligation of responsible organisations to protect confidential information from disclosure  (as derived from the legal acts)  Yes
Rights of access of third organisations / persons to data and statistics (as derived from the legal acts)  Yes
Planned changes of legislation  No
6.1.3. Standards and manuals

- Frascati Manual 2015, Guidelines for Collecting and Reporting Data on Research and Experimental Development

- EBS Methodological Manual on R&D Statistics

6.2. Institutional Mandate - data sharing

Not requested.


7. Confidentiality Top
7.1. Confidentiality - policy

Confidentiality, being one of the process quality components, concerns the privacy of data providers (households, enterprises, administrations and other respondents), the confidentiality of the information they provide and the extent of its use for statistical purposes.

A property of data indicating the extent to which their unauthorised disclosure could be prejudicial or harmful to the interest of the source or other relevant parties.

 

a)       Confidentiality protection required by law:

  Legislation and policy at national level:

  • The Act CLV of 2016 on Official Statistics (the Hungarian Statistical Law);
  • Act CXII of 2011 on Informational self-administration and freedom of information.
  • The confidentiality policy of HCSO is available here
  • Additional information in English is available on the website

HCSO ensures confidentiality for all the data reported by data providers and the exclusive use of the data for statistical purposes. We disseminate only aggregated data in full compliance with the rules of confidentiality. Individual data, as well as aggregated data consisting of fewer than 3 enterprises are regarded as confidential. Researchers have access to de-identified data sets and to anonymised micro data for scientific purposes with appropriate legal and methodological guaranties in place.

 

b)       Confidentiality commitments of survey staff:

 Employees can work with datasets in their competence with registered and controlled access rights, and need to work in line with the confidentiality policies and protocols.

7.2. Confidentiality - data treatment

According to the Hungarian Act on Statistics those aggregates which come from less than 3 data providers are deemed to be confidential. To publish these values we need a permission from each affected data provider.


8. Release policy Top
8.1. Release calendar

There is a release policy in place for the R&D data set. The release calendar is publicly available on the website. 

8.2. Release calendar access

HCSO's publication and revision calendar is publicly available on the website: 

https://www.ksh.hu/katalogus/#/en

https://www.ksh.hu/katalogus/#/

8.3. Release policy - user access

Data is disseminated to the public according to the release policy and release calendar. At t+M6, some key, preliminary results were published in the national online summary tables. Dissemination of the final data in the national database took place at t+M9.


9. Frequency of dissemination Top

Yearly.


10. Accessibility and clarity Top
10.1. Dissemination format - News release

A regular press release is linked to the dissemination of final data.

10.1.1. Availability of the releases
  Availability (Y/N)1 Content, format, links, ...
Regular releases  Y On HCSO's website a short news release with key figures is published to announce the release of the annual R&D publication.
Ad-hoc releases  

1) Y - Yes, N – No

10.2. Dissemination format - Publications

See below.

10.2.1. Availability of means of dissemination
Means of dissemination Availability (Y/N)1 Content, format, links, ...
General publication/article

(paper, online)

 Yes Annual R&D Publication (includes analysis of R&D data, in Hungarian only):

Kiadványtár - Központi Statisztikai Hivatal (ksh.hu)

Statistical Yearbook, 2021 - (with some selected R&D data):

Publication Repertory - Hungarian Central Statistical Office (ksh.hu)

Specific paper publication (e.g. sectoral provided to enterprises)

(paper, online)

 No  

1) Y – Yes, N - No 

10.3. Dissemination format - online database

http://statinfo.ksh.hu/Statinfo/themeSelector.jsp?page=2&szst=OHK&lang=en

https://www.ksh.hu/stadat_eng?lang=en&theme=tte

10.3.1. Data tables - consultations

Not requested.

10.4. Dissemination format - microdata access

See below. In order to support scientific research, HCSO opens up data files for accredited researchers. R&D microdata is disseminated at HCSO' Safe Center.

10.4.1. Provisions affecting the access
Access rights to the information  Available only in safe centre.
Access cost policy  Basic access to the safe center is free of charge. HCSO charges for individual data requests in the safe center.
Micro-data anonymisation rules  Direct identification details of respondents is dropped from dataset to avoid identification.
10.5. Dissemination format - other

See below.

10.5.1. Metadata - consultations

Not requested.

10.5.2. Availability of other dissemination means
Dissemination means Availability (Y/N)1  Micro-data / Aggregate figures Comments
Internet: main results available on the national statistical authority’s website  Yes  Aggregate figures Database access via website is free of charge for the public. No registration is needed to access the public database.
Data prepared for individual ad hoc requests  Yes   Aggregate figures Ad hoc, individual data requests are usually received from government bodies, educational insitutionals, or other third parties. Pricing of such data provision is set in line with HCSO's general data provision pricing policy, and is assessed on an individual basis (depending on the related workload).
Other  Yes   Aggregate figures

Regular data requests from government bodies are based on official cooperational agreements.

R&D data is regulary transmitted to and published by the OECD.

1) Y – Yes, N - No 

10.6. Documentation on methodology

Each publication with R&D data contains the main definitions, concepts and a section on brief methodological summary of the R&D data collection.

E.g.: Summary Tables - Methodology Summary:

https://www.ksh.hu/apps/meta.objektum?p_lang=EN&p_menu_id=110&p_ot_id=100&p_obj_id=BHAA

https://www.ksh.hu/docs/eng/modsz/tte_meth.html

 

Detailed R&D metadata are available on the website of Hungarian Central Statistical Office, both in English and Hungarian:

 http://www.ksh.hu/apps/meta.menu?p_lang=EN&p_menu_id=210&p_session_id=38254329

10.6.1. Metadata completeness - rate

Not requested.

10.7. Quality management - documentation

See below.

10.7.1. Information and clarity
Type(s) of data accompanying information available (metadata, graphs, quality reports, etc.)  Each publication with R&D data contains R&D metadata (summary of the methodology, concepts, definitions).

Detailed R&D metadata is available on HCSO's website both in English and Hungarian:

 http://www.ksh.hu/apps/meta.menu?p_lang=EN&p_menu_id=210&p_session_id=38254329
Request on further clarification, most problematic issues Requests were sent for more detailed data as published.
Measures to increase clarity When publishing R&D data, HCSO provides explanatory notes and description of data.
Impression of users on the clarity of the accompanying information to the data  Data users are mostly satisfied.


11. Quality management Top
11.1. Quality assurance

The HCSO Quality Policy lays out the principles and commitments related to the quality of statistics. The documentis consistent with the goals set out in the Mission and Vision statements andwith the principles of the European Statistics Code of Practice and is publicly available on the HCSO website.

The European Statistics Code of Practice is available on the website of the HCSO. Also, HCSO together with the member-organisations of the Hungarian Official Statistical Service created a National Statistics Code of Practice based on the European Statistics Code of Practice.

Quality Guidelines are meant to ensure the quality of the statistical processes. The document has been in place since 2007 (1st revision in 2009, 2nd revision in 2014 and 3rd revision is currently ongoing). The latest version (2014) is available on the HCSO website.

At HCSO, special attention is given to quality measurement, monitoring and documentation. Procedures are in place in order to ensure updated documentation on product quality. Apart from the internal reports, quality reports are regularly provided to Eurostat as well.

All statistical processes of the national R&D survey were carried out in accordance with HCSO’s Quality Policy, Quality Guidelines and in line with the National Statistics Code of Practice that is consistent with the principles of the European Statistics Code of Practice.

In the R&D data collection, principles relevant for the institutional environment, the statistical procedures and statistical output were observed.

11.2. Quality management - assessment

As primary aspect, Commission Regulation was taken into account beside data requests of the other national and international users. All data providers receive a detailed guideline as an annex of the questionnaire, and contact details of our colleagues, who can help to fill the R&D questionnaire.

The statistical processes and activities were supported by HCSO’s main, integrated, metadata-driven IT systems that are in line with the statistical planning and development conventions. Statistical processes of the R&D data collection were monitored based on quality indicators built into these IT systems (Integrated Survey Control System for Business and Social Surveys, Integrated Electronic Data Collection System, Integrated Data Processing System, Data Entry and Validation System).

Main strength of the data collection: Organisations have to provide their R&D data through ELEKTRA, HCSO's online data collection system. Good quality for all variables were achieved by implementing a complex and consistent set of validation rules. Quality checks of interval level data were conducted and data were also confronted with data of the previous years. 

The HCSO's electronic registration system is used for incoming questionnaires. Reasons of nonresponse are also coded. The continous monitoring of the response rate was carried out. To increase resonse rate, after the survey deadline non-responding enterprises received several round of reminders by e-mail and by phone. The burden on data providers and data producers was also measured. The questionnaire includes a question on time spent on filling it.


12. Relevance Top
12.1. Relevance - User Needs

See below.

12.1.1. Needs at national level
Users’ class1 Description of users Users’ needs
  1 - European level Eurostat
The European Commission (BG RTD), OECD, UN
According to Commission regulations No. 2019/2152 and 2020/1197
Various time series data on R&D indicators
  1 - National level Ministry of Finance, Ministry of  Human Capacities, Ministry for Innovation and Technology, Prime Minister’s Office, other Ministries The main indicators of R&D activities concerning to expenditure and personnel data
  1 - National level National Research, Development and Innovation Office, Regional innovation and knowledge centers The main indicators of R&D activities concerning to expenditure and personnel data detailed by NACE categories, size classes, regions andother breakdowns
  1 - National level Hungarian Central Statistical Office R&D data needs of other sections and departments within the Office for analysis and publication purposes
  3 - Media Various newspapers, periodicals R&D data needs of journalists for keeping the general public informed
  4 - Researchers  Hungarian Academy of Science, Research institutes, Higher educational institutes, Researchers and students  Data by different breakdowns according to needs of analyses
  5 - Enterprises  Enterprises Data by different breakdowns according to needs of analyses

1)       Users' class codification

1- Institutions:
• European level: Commission (DGs, Secretariat General), Council, European Parliament, ECB, other European agencies etc.
• in Member States, at the national or regional level: Ministries of Economy or Finance, other ministries (for sectoral comparisons), National Statistical Institutes and other statistical agencies (norms, training, etc.), and
• International organisations: OECD, UN, IMF, ILO, etc.

2- Social actors: Employers’ associations, trade unions, lobbies, among others, at the European, national or regional level.

3- Media: International or regional media – specialized or for the general public – interested both in figures and analyses or comments. The media are the main channels of statistics to the general public.

4- Researchers and students (Researchers and students need statistics, analyses, ad hoc services, access to specific data.)

5- Enterprises or businesses (Either for their own market analysis, their marketing strategy (large enterprises) or because they offer consultancy services)

6- Other (User class defined for national purposes, different from the previous classes. )

12.2. Relevance - User Satisfaction

To evaluate if users' needs have been satisfied, the best way is to use user satisfaction surveys.

12.2.1. National Surveys and feedback
Conduction of a user satisfaction survey or any other type of monitoring user satisfaction  A separate user satisfaction survey is not carried out, HCSO register data user’s opinion/feedback regularly.
User satisfaction survey specific for R&D statistics A dedicated user satisfaction survey for R&D data is not carried out. Feedback from key users of R&D data (e.g. government bodies) is collected at regular consultations.
Short description of the feedback received The data users are mainly satisfied.
12.3. Completeness

See below.

12.3.1. Data completeness - rate

Not applicable.

12.3.2. Completeness - overview

Completeness is assessed via comparison of the data delivered against the requirements of Commission Implementing Regulation (EU) No 2020/1197.

 

  5

(Very Good)

4

(Good)

3

(Satisfactory)

2

 (Poor)

1

(Very poor)

Reasons for missing cells

Preliminary variables  X          
Obligatory data on R&D expenditure  X          
Optional data on R&D expenditure    X        
Obligatory data on R&D personnel          
Optional data on R&D personnel    X        
Regional data on R&D expenditure and R&D personnel          

Criteria:

A) Obligatory data. Only 'Very Good' = 100%, Poor' >95%; 'Very Poor' <100% apply.

B) Optional data. 'Very Good' = 100%; 'Good' = >75%; 'Satisfactory' 50 to 75%%; 'Poor' 25 to 50%; 'Very Poor' 0 to 25%.

12.3.3. Data availability

See below.

12.3.3.1. Data availability - R&D Expenditure
  Availability1 Frequency of data collection Gap years – years with missing data Modifications - Description Modifications - Year of introduction Modifications - Reasons
Source of funds  Y-1990  Annual   2018: Data on HES sector as source of funds is available  2018  FM2015
Type of R&D  Y-1990  Annual        
Type of costs  Y-1990  Annual   2018: In line with FM2015, employment costs of the external personnel are included in the 'other current costs' category only.  2018  FM2015
Socioeconomic objective  Y-1990  Annual        
Region  Y-1990  Annual   2021: Introduction of Statistical Unit Enterprise (SUE) impacts the units' classification by region  2021  Regulation (EU) 2019/2152
FORD  Y-1994  Annual        
Type of institution  N          

1) Y-start year, N – data not available

12.3.3.2. Data availability - R&D Personnel (HC)
  Availability1 Frequency of data collection Gap years – years with missing data Modifications - Description Modifications - Year of introduction Modifications - Reasons
Sex  Y-1990(Researchers)  Annual   2000: Data on technicians and other supporting staff category is collected.

2018: HC(total) =HC (internal)+HC(external) 

In line with FM2015, in addition to internal R&D personnal, gender data is collected for external R&D personnel, too.

 

Y-2000 (reserachers, technicians and other supporting staff categories)

Y-2018 (internal and external R&D personnel)

 FM2015

Function  Y-1990  Annual   In line with FM2015, in addition to internal R&D personnel, occupation data is collected for external R&D personnel, too. Y-2018 (internal and external R&D personnel)  FM2015
Qualification  Y-2000 (for internal R&D personnel)  Annual        
Age  Y-2003 (for internal researchers)  Annual   Before 2003, age dimension was available 5 yearly.    
Citizenship  Y-2004 (for internal researchers)  Annual        
Region  Y-1995   Annual    2021: Introduction of Statistical Unit Enterprise (SUE) impacts the units' classification by region

Y-2018 (for internal and external R&D personnel)

Y-2021

 FM2015

 Regulation (EU) 2019/2152

FORD  Y-1981        Y-2018 (for internal and external R&D personnel)  FM2015
Type of institution  N          
Economic activity  Y-1990   Annual    2021: Introduction of Statistical Unit Enterprise (SUE) impacts the units' classification by economic activity

Y-2018 (for internal and external R&D personnel)

Y-2021

 FM2015

 Regulation (EU) 2019/2152

Product field  N          
Employment size class  Y-2000  Annual    2021: Introduction of Statistical Unit Enterprise (SUE) impacts the units' classification by size class

Y-2018 (for internal and external R&D personnel)

Y-2021

 FM2015

 Regulation (EU) 2019/2152

1) Y-start year, N – data not available

12.3.3.3. Data availability - R&D Personnel (FTE)
  Availability1 Frequency of data collection Gap years – years with missing data Modifications - Description Modifications - Year of introduction Modifications - Reasons
Sex  Y-2006  Annual   2018: HC(total) =HC (internal)+HC(external) In line with FM2015, in addition to internal R&D personnal, gender data is collected for external R&D personnel, too. Y-2018 (internal and external R&D personnel)  FM2015
Function  Y-1990  Annual   In line with FM2015, in addition to internal R&D personnal, data on occupation is collected for external R&D personnel, too.  Y-2018 (internal and external R&D personnel)  FM2015
Qualification  N          
Age  N          
Citizenship  N          
Region  Y-1990  Annual    2021: Introduction of Statistical Unit Enterprise (SUE) impacts the units' classification by region

Y-2018 (internal and external R&D personnel)

Y-2021

 FM2015

Regulation (EU) 2019/2152

FORD  Y-1990  Annual     Y-2018 (internal and external R&D personnel)  FM2015
Type of institution  N          
Economic activity  Y-1990  Annual    2021: Introduction of Statistical Unit Enterprise (SUE) impacts the units' classification by economic activity

Y-2018 (internal and external R&D personnel)

Y-2021

 FM2015

 Regulation (EU) 2019/2152

Product field  N          
Employment size class  Y-2000   Annual    2021: Introduction of Statistical Unit Enterprise (SUE) impacts the units' classification by size class

Y-2018 (internal and external R&D personnel)

Y-2021

 FM2015

 Regulation (EU) 2019/2152

1) Y-start year, N – data not available

12.3.3.4. Data availability - other
Additional dimension/variable available at national level1) Availability2  Frequency of data collection Breakdown

variables

Combinations of breakdown variables Level of detail
R&D personnel   Y-2007  annual  FoS     2-digit level  
Number of researchers   Y-2007  annual  FoS     2-digit level  
Intramural R&D expenditure   Y-2007  annual  FoS     2-digit level  
           
           

1) This question is optional. It refers to variables and breakdowns NOT asked by the Commission Implementing Regulation (EU) No 2020/1197 (neither as 'optional'), if R&D data for BES are collected for additional breakdowns or/and at more detailed level than requested.

2) Y-start year


13. Accuracy Top
13.1. Accuracy - overall

Accuracy in the statistical sense denotes the closeness of computations or estimates to the exact or true values. Statistics are not equal with the true values because of variability (the statistics change from implementation to implementation of the survey due to random effects) and bias (the average of the possible values of the statistics from implementation to implementation is not equal to the true value due to systematic effects).

 

Several types of statistical errors occur during the survey process. The following typology of errors has been adopted:

1. Sampling errors. These only affect sample surveys. They are due to the fact that only a subset of the population, usually randomly selected, is enumerated.

2. Non-sampling errors. Non-sampling errors affect sample surveys and complete enumerations alike and comprise:

a) Coverage errors,

b) Measurement errors,

c) Non response errors and

d) Processing errors.

 

Model assumption errors should be treated under the heading of the respective error they are trying to reduce.

13.1.1. Accuracy - Overall by 'Types of Error'
  Sampling errors Non-sampling errors1) Model-assumption Errors1) Perceived direction of the error2)
Coverage errors Measurement errors Processing errors Non response errors
Total intramural R&D expenditure  Not applicable.  4  5   -     -     -   +/-
Total R&D personnel in FTE  Not applicable.  4  5    -     -     -   +/-
Researchers in FTE  Not applicable.  4  5   -     -     -   +/-

1)  Ranking of the type(s) of errors that result in over/under-estimation, from the most important source of error (1) to the least important source of error (5). In the event that errors of a particular type do not exist, is used the sign ‘-‘.

2)  The perceived direction of the ‘overall’ error using the signs “+” for over estimation, “-” for under estimation and “+/-” when assumption of the direction of the error cannot be made for R&D.

13.1.2. Assessment of the accuracy with regard to the main indicators
Indicators 5

(Very Good)1

4

(Good)2

3

(Satisfactory)3

2

(Poor)4

1

(Very poor)5

Total intramural R&D expenditure  X        
Total R&D personnel in FTE  X        
Researchers in FTE  X        

1) 'Very Good' = High level of coverage (annual rate of substitution in the target population lower than 5%). High average rates of response (>80%) in census and sample surveys (BES R&D). Full data consistency with reference to totals and relationships between variables in the dataset sent to Eurostat.  

2) 'Good' = In the event that at least one out of the three criteria above described would not be fully met.

3) 'Satisfactory' = In the event that the average rate of response would be lower than 60% even by meeting the two remaining criteria.

4) 'Poor' = In the event that the average rate of response would be lower than 60% and at least one of the two remaining criteria would not be met.

5) 'Very Poor' = If all the three criteria are not met.

13.2. Sampling error

That part of the difference between a population value and an estimate thereof, derived from a random sample, which is due to the fact that only a subset of the population is enumerated.

13.2.1. Sampling error - indicators

The main indicator used to measure sampling errors is the coefficient of variation (CV).
Definition of coefficient of variation:
CV= (Square root of the estimate of the sampling variance) / (Estimated value)

13.2.1.1. Variance Estimation Method

Not applicable.

13.2.1.2. Coefficient of variation for key variables by NACE

Not applicable.

  Industry sector1 Services sector2 TOTAL
R&D expenditure      
R&D personnel (FTE)      

1)        Industry sector (NACE Rev. 2: 01-03, 05-09, 10-33, 35, 36-39, 41-43)

2)        Services sector (NACE Rev 2.: 45-47,49-53,55-56,58-63,64-66 68,69-75,77-82,84,85,86-88,90-93,94-96,97-98,99)

13.2.1.3. Coefficient of variation for key variables by Size Class

Not applicable.

  0-9 employees and self-employed persons (optional) 10-49 employees and self-employed persons 50-249 employees and self-employed persons 250- and more employees and self-employed persons TOTAL
R&D expenditure          
R&D personnel (FTE)          
13.3. Non-sampling error

Non-sampling errors occur in all phases of a survey. They add to the sampling errors (if present) and contribute to decreasing overall accuracy. It is important to assess their relative weight in the total error and devote appropriate resources for their control and assessment.

13.3.1. Coverage error

Coverage errors (or frame errors) are due to divergences between the target population and the frame population. The frame population is the set of target population members that has a chance to be selected into the survey sample. It is a listing of all items in the population from which the sample is drawn that contains contact details as well as sufficient information to perform stratification and sampling.

 

a)       Description/assessment of coverage errors:

 

 

b)       Measures taken to reduce their effect:

 

 

13.3.1.1. Over-coverage - rate

Magnitude of error (%) = (Observed Value-True Value)/ True Value (%) 

13.3.1.1.1. Over-coverage rate - groups

 

Groups Magnitude – R&D expenditure Magnitude – Total R&D personnel (FTE)
Groups/categories of the frame population that were not covered or were partly covered in the target population (unknown R&D performing enterprises)  not known    
Groups/categories in the target  population that were covered while they should not (i.e. units surveyed that should belong to another sector of performance than BES)  not known    
13.3.1.2. Common units - proportion

Not requested.

13.3.1.3. Frame misclassification rate

Misclassification rate measures the percentage of enterprises that changed stratum between the time the frame was last updated and the time the survey was carried out. It is defined as the number of enterprises that changed stratum divided by the number of enterprises which belong to the stratum, according to the frame. The rate can be estimated based on the characteristics of the surveyed enterprises.

 

Not applicable.

 By size class for the Industry Sector 
  0-9 employees and self-employed persons (optional) 10-49 employees and self-employed persons 50-249 employees and self-employed persons 250-and more employees and self-employed persons TOTAL
Number or surveyed enterprises in the stratum (according to frame)          
Number of surveyed enterprises that have changed stratum (after inspection of their characteristics)          
Misclassification rate          
By size class for the Services Sector
  0-9 employees and self-employed persons (optional) 10-49 employees and self-employed persons 50-249 employees and self-employed persons 250-and more employees and self-employed persons TOTAL
Number or surveyed enterprises in the stratum (according to frame)          
Number of surveyed enterprises that have changed stratum (after inspection of their characteristics)          
Misclassification rate          
13.3.2. Measurement error

Measurement errors occur during data collection and generate bias by recording values different than the true ones (e.g. difficulty to distinguish intramural from extramural R&D Expenditure). The survey questionnaire used for data collection may have led to the recording of wrong values, or there may be respondent or interviewer bias.

 

a)       Description/assessment of measurement errors:

 The difficulty for data providers to distinguish between purchased R&D services from fully contacted-out projects, and to calculate the FTE for external personnel can lead to measurement errors.

 

b)      Measures taken to reduce their effect:

Guidelines are provided in the filling instructions to help data providers distinguish between extramural and intramural R&D activities, and to deliniate fully contracted-out activities from purchased R&D services (which belong to intramural R&D activities).

During data collection, R&D expenditure data is continuously monitored (both extramural and intramural expenditure). All interrelated data being provided is checked for logical consistency, and when problematic data is found, data providers are requested for correction.

 

13.3.3. Non response error

Non-response occurs when a survey failed to collect data on all survey variables from all the population units designated for data collection in a sample or complete enumeration.

There are two elements of non-response:

- Unit non-response, which occurs when no data (or so little as to be unusable) are collected on a designated population unit.

- Item non-response, which occurs when data only on some, but not all survey variables are collected on a designated population unit.

The extent of response (and accordingly of non response) is also measured with response rates.

13.3.3.1. Unit non-response - rate

The main interest is to judge if the response from the target population was satisfying by computing the weighted and un-weighted response rate.
Definition:
Eligible are the sample units which indeed belong to the target population. Frame imperfections always leave the possibility that some sampled units may not belong to the target population. Moreover, when there is no contact with sample units and no other way to establish their eligibility they are characterised as ‘unknown eligibility units’
Definition:
Un-weighted Unit Non- Response Rate = 1 - (Number of units with a response) / (Total number of eligible and unknown eligibility units in the survey) 
Weighted Unit Non- Response Rate = 1 - (Total weighted responding units) / (Total weighted number of eligible / unknown eligibility units in the sample)

13.3.3.1.1. Unit non-response rates by Size Class
 

0-9 employees and self-employed persons (optional)

10-49 employees and self-employed persons

50-249 employees and self-employed persons 250-and more employees and self-employed persons TOTAL
Number of units with a response in the realised sample  3798  1843  1192  733  7566
Total number of units in the sample  5445  2290  1337  773  9845
Unit Non-response rate (un-weighted)  0,30  0,20  0,11  0,05  0,23
Unit Non-response rate (weighted)  Not applicable  Not applicable  Not applicable  Not applicable  Not applicable
13.3.3.1.2. Unit non-response rates by NACE
  Industry1) Services2) TOTAL
Number of units with a response in the realised sample  2500  5066  7566
Total number of units in the sample  2965  6880  9845
Unit Non-response rate (un-weighted)  0,16  0,26  0,23
Unit Non-response rate (weighted)  Not applicable  Not applicable  Not applicable

1)        Industry (NACE Rev. 2: 01-03, 05-09,10-33,35,36-39,41-43)

2)        Services (NACE Rev 2.: 45-47,49-53,55-56,58-63,64-66 68,69-75,77-82,84,85,86-88,90-93,94-96,97-98,99)

13.3.3.1.3. Recalls/Reminders description

The first reminding e-mail was sent out 7 days before the deadline and the second was 7 days after the deadline. A third, warning letter was sent 28 days after the deadline. Those who did not send back the questionnaire after the third letter were contacted by phone as many times as neccessary.

13.3.3.1.4. Unit non-response survey
Conduction of a non-response survey  No
Selection of the sample of non-respondents  Not applicable
Data collection method employed  Not applicable
Response rate of this type of survey  Not applicable
The main reasons of non-response identified  Not applicable
13.3.3.2. Item non-response - rate

Definition:
Un-weighted Item non-Response Rate (%) = 1-(Number of units with a response for the item) / (Total number of eligible , for the item, units in the sample) * 100

13.3.3.2.1. Un-weighted item non-response rate
  R&D Expenditure R&D Personnel (FTE) Researchers (FTE)
Item non-response rate (un-weighted) (%)  0  0  0
Imputation (Y/N)  N  N  N
If imputed, describe method used, mentioning which auxiliary information or stratification is used  Not applicable.  Not applicable.  Not applicable.
13.3.3.3. Magnitude of errors due to non-response
   Magnitude of error (%) due to non-response
Total intramural R&D expenditure  1-2%*
Total R&D personnel in FTE  1-2%*
Researchers in FTE  1-2%*

*: Estimation of non-response error for census survey.

13.3.4. Processing error

Between data collection and the beginning of statistical analysis, data must undergo a certain processing: coding, data entry, data editing, imputation, etc. Errors introduced at these stages are called processing errors. Data editing identifies inconsistencies or errors in the data.

13.3.4.1. Identification of the main processing errors
Data entry method applied Respondents have to provide their R&D data through HCSO’s online data collection system called ELEKTRA. This system contains checking rules to ensure that contradictions and severe errors are corrected by the respondents before the questionnaire is submitted. After arrival, data undergoes a more thorough data checking procedure which can identify further possible errors. In these cases, colleagues responsible for data checking have to decide if the problematic data is acceptable. If not, they contact respondents to clarify the data. The only way for respondents to provide data is through the ELEKTRA system, questionnaires are not accepted by email or by post.
Estimates of data entry errors Not applicable.
Variables for which coding was performed Not applicable.
Estimates of coding errors Not applicable.
Editing process and method The statistical processes and activities were supported by HCSO’s main, integrated, metadata-driven IT systems that are in line with the statistical planning and development conventions. Statistical processes of R&D data collection were monitored based on quality indicators built into these IT systems (Integrated Survey Control System for Business and Social Surveys, Integrated Electronic Data Collection System, Integrated Data Processing System, Data Entry and Validation System).
Procedure used to correct errors Re-contact with information provider.
13.3.5. Model assumption error

Not requested.


14. Timeliness and punctuality Top
14.1. Timeliness

Timeliness and punctuality refer to time and dates, but in a different manner: the timeliness of statistics reflects the length of time between their availability and the event or phenomenon they describe. Punctuality refers to the time lag between the release date of the data and the target date on which they should have been delivered, with reference to dates announced in the official release calendar.

14.1.1. Time lag - first result

Time lag between the end of reference period and the release date of the results:
Indicator: (Release date of provisional/ first results) - (Date of reference for the data)

 

a) End of reference period: December 31, 2021

b) Date of first release of national data: October 12, 2022

c) Lag (days): 285

14.1.2. Time lag - final result

a) End of reference period: December 31, 2021

b) Date of first release of national data: June 28, 2023

c) Lag (days): 544

14.2. Punctuality

Punctuality refers to the time lag between the release date of data and the target date on which they were scheduled for release as announced officially.

14.2.1. Punctuality - delivery and publication

Punctuality of time schedule of data release = (Actual date of the data release) - (Scheduled date of the data release).

14.2.1.1. Deadline and date of data transmission
  Transmission of provisional data Transmission of final data
Legally defined deadline of data transmission (T+_ months) 10 18
Actual date of transmission of the data (T+x months)  10  18
Delay (days)   -19  -2
Reasoning for delay  n.a.  n.a.


15. Coherence and comparability Top
15.1. Comparability - geographical

See below.

15.1.1. Asymmetry for mirror flow statistics - coefficient

Not requested.

15.1.2. General issues of comparability

No deviation from FM2015 and Eurostat Methodological Guidelines.

15.1.3. Survey Concepts Issues

The following table lists a number of key survey concepts and conceptual issues; it gives reference to the Commission Implementing Regulation (EU) No 2020/1197 or Frascati manual and EBS Methodological Manual on R&D Statistics paragraphs with recommendations about these concepts / issues.

 

Concept / Issues Reference to recommendations  Deviation from recommendations Comments on national definition / Treatment – deviations from recommendations
R&D personnel FM2015 Chapter 5 (mainly paragraph 5.2).  No deviation.  
Researcher FM2015, §5.35-5.39.  No deviation.  
Approach to obtaining Headcount (HC) data FM2015, §5.58-5.61 (in combination with  Eurostat's EBS Methodological Manual on R&D Statistics).  No deviation.  
Approach to obtaining Full-time equivalence (FTE) data FM2015, §5.49-5.57 (in combination with Eurostat’s EBS Methodological Manual on R&D Statistics).  No deviation.  
Reporting data according to formula: Total R&D personnel = Internal R&D personnel + External R&D personnel FM2015, §5.25  No deviation.  
Intramural R&D expenditure FM2015 Chapter 4 (mainly paragraph 4.2).  No deviation.  
Special treatment for NACE 72 enterprises FM2015, § 7.59.  No deviation.  
Statistical unit FM2015 Chapter 7 (mainly paragraphs 7.3 and 7.7 in combination with Eurostat's EBS Methodological Manual on R&D Statistics).  No deviation.  
Target population FM2015 Chapter 7 (mainly paragraph 7.7 in combination with Eurostat's EBS Methodological Manual on R&D Statistics).  No deviation.  
Identification of not known R&D performing or supposed to perform R&D enterprises FM2015 Chapter 7 (mainly paragraph 7.7 in combination with Eurostat's EBS Methodological Manual on R&D Statistics).  No deviation.  
Sector coverage FM2015 Chapter 3 (mainly § 3.51-3.59) in combination with Eurostat's EBS Methodological Manual on R&D Statistics).  No deviation.  
NACE coverage and breakdown Reg. 2020/1197 : Annex 1, Table 18   No deviation.  
Enterprise size coverage and breakdown Reg. 2020/1197 : Annex 1, Table 18  No deviation.  
Reference period for the main data Reg. 2020/1197 : Annex 1, Table 18   No deviation.  
Reference period for all data Reg. 2020/1197 : Annex 1, Table 18   No deviation.  
15.1.4. Deviations from recommendations

The following table lists a number of key methodological issues, which may affect the international comparability of national R&D statistics. The table gives the references in the Frascati manual, where related recommendations are made. Countries are asked to report on the existence of any deviations from existing recommendations and comment upon.

 

Methodological issues Deviation from recommendations Comments on national treatment / treatment deviations from recommendations
Data collection preparation activities  No deviation.  
Data collection method  No deviation.  
Cooperation with respondents  No deviation.  
Follow-up of non-respondents  No deviation.  
Data processing methods  No deviation.  
Treatment of non-response  No deviation.  
Data weighting  Not applicable.  
Variance estimation  Not applicable.  
Data compilation of final and preliminary data  No deviation.  
Survey type  Census  
Sample design  Not applicable.  
Survey questionnaire  No deviation.  
15.2. Comparability - over time

See below.

15.2.1. Length of comparable time series

See below.

15.2.2. Breaks in time series
  Length  of comparable time series  Break years1 Nature of the breaks
R&D personnel (HC)  4 years  

1998


2000

 

2018

Since 1998 personnel dealing with activities related to safety and warehouse operations in R&D units are excluded as recommended in FM. 

In 2000 the target population was changed:including limited partnerships and non-profit organisations dealing with R&D activities.

In 2018, the 'external R&D personnel' with several sub-categories is introduced, therefore there is a break in the total R&D personnel data. The impact is significant. TOTAL R&D personnel (HC) = Internal (HC) + External personnel (HC)

  Function  4 years 2018 There is a break due to the break in the total R&D personnel data.
  Qualification  22 years    
R&D personnel (FTE)  4 years  

1998


2000

 

2018

Since 1998 personnel dealing with activities related to safety and warehouse operations in R&D units are excluded as recommended in FM. 


In 2000 the target population was changed: including limited partnerships and non-profit organisations dealing with R&D activities.

In 2018, the 'external R&D personnel' with several sub-categories is introduced, therefore there is a break in the total R&D personnel data. The impact is significant. TOTAL R&D personnel (FTE) = Internal (FTE) + External personnel (FTE)

  Function  4 years  2018 There is a break due to the break in the total R&D personnel data.
  Qualification  not available    
R&D expenditure  4 years  1994

 

 2018

 -Purchase of licences and know-how, previously included in business enterprise R&D expenditure, has been excluded since 1994.

-The Central Technological Fund (KMÜFA) as source of fund has changed over time: KMÜFA was classified as business enterprise sector fund until 1993 and as government sector fund since 1994.

In 2018, the R&D expenditure data has a break due to the break in the Type of costs data (i.e. capital costs on other intellectual property products is included).

Source of funds  4 years  2018 In 2018, the source of funds data has a break due to the break in the Type of costs data and HES fund. 
Type of costs  4 years  2018 In 2018, there is a break in the capital costs because expanditure on 'other intellectual property products' is included. 
Type of R&D  4 years  2018 In 2018, the Type of R&D data has a break due to the break in the Type of costs data. 
Other      

1)       Breaks years are years for which data are not fully comparable to the previous period.

15.2.3. Collection of data in the even years

 There is no difference in data collection for even years.

15.3. Coherence - cross domain

This part deals with any national coherence assessments which may have been undertaken. It reports results for variables which are the same or relevant to R&D statistics, from other national surveys and / or administrative sources and explains and comments on their degree of agreement with R&D statistics.  Intramural R & D expenditure (code 230101 in the Commission Implementing Regulation (EU) 2020/1197) and R & D personnel (code 230201) are surveyed also in foreign-controlled EU enterprises statistics (inward FATS).

The Community innovation survey 2020 (CIS2020) (inn_cis12) (europa.eu) also collects the R&D expenditure of enterprises that form the coverage of the CIS2020 survey. 

15.3.1. Coherence - sub annual and annual statistics

Not requested.

15.3.2. Coherence - National Accounts

Coherence with SNA is aimed at in the R&D data collection, with special regards to the sectoralisation of units, and in line with FM2015 recommendations.

The SNA calculation takes into account R&D data (e.g..: data on software development).

15.3.3. National Coherence Assessments
Variable name R&D Statistics - Variable Value Other national statistics - Variable value Other national statistics - Source Difference in values (of R&D statistics) Explanation of / comments on difference
  Internal R&D expenditure (2021)  2 531 109 thousand euro  1 624 469 thousand euro  CIS2020 - Expenditure on R&D performed in-house   - 

 This variable is collected in a coherent way in the two data collections. The different value is due to the difference in the reference year, the target populatation (size class, NACE observed) and the data collection methodology (census vs. sample).

           
           
           
           
           
15.3.4. Coherence – Foreign-controlled EU enterprises – inward FATS

 

Two separate departments are responsible for the production of R&D and FATS data in the Statisctial Office. There is only one R&D data collection, and this data is also used to produce the FATS R&D dataset. The two datasets are therefore coherent and differences are minimal.

15.4. Coherence - internal

See below.

15.4.1. Comparison between preliminary and final data

This part compares key R&D variables as preliminary and final data.

 

  Total R&D expenditure (in 1000 of national currency) Total R&D personnel (in FTEs) Total number of researchers  (in FTEs)
Preliminary data (delivered at T+10)  684 723 017 thousand HUF  37 113  26 261
Final data (delivered T+18)  684 723 017 thousand HUF  37 113  26 261
Difference (of final data)  0  0  0
15.4.2. Consistency between R&D personnel and expenditure
  Average remuneration (cost in national currency)
Consistency between FTEs of internal R&D personnel and R&D labour costs (1)  9 048 000 HUF
Consistency between FTEs of external R&D personnel and other current costs for external R&D personnel (2)  4 312 000 HUF (estimated)

(1)    Calculate the average remuneration (cost) of individuals belonging to the internal R&D personnel, excluding those who are only formally ‘employees’ (university students, grant holders, etc.).

(2)    Calculate the average remuneration (cost) of individuals belonging to the external R&D personnel (FTEs/other current R&D costs for external R&D personnel).


16. Cost and Burden Top

The assessment of costs associated with a statistical product is a rather complicated task since there must exist a mechanism for appointing portions of shared costs (for instance shared IT resources and dissemination channels) and overheads (office space, utility bills etc). The assessment must become detailed and clear enough so that international comparisons among agencies of different structures are feasible. 

16.1. Costs summary

 

  Costs for the statistical authority (in national currency) % sub-contracted1)
Staff costs    
Data collection costs    
Other costs    
Total costs    
Comments on costs
 Not available separately. No work sub-contracted.

1)       The shares of the figures given in the first column that are accounted for by payments to private firms or other Government agencies.

16.2. Components of burden and description of how these estimates were reached
  Value Computation method
Number of Respondents (R)  7133  
Average Time required to complete the questionnaire in hours (T)1  Not available.  
Hourly cost (in national currency) of a respondent (C)  Not available.  
Total cost  Not available.  

1)        T = the time required to provide the information, including time spent assembling information prior to completing a form or taking part in interview and the time taken up by any subsequent contacts after receipt of the questionnaire (‘Re-contact time’)


17. Data revision Top
17.1. Data revision - policy

Not requested.

17.2. Data revision - practice

Not requested.

17.2.1. Data revision - average size

Not requested.


18. Statistical processing Top
18.1. Source data

Several separate activities are used for the collection of raw data or pre-compiled administrative data and statistics related to R&D. For simplicity, we call them surveys irrespective of whether they are sample surveys, censuses, collections of administrative data/pre-compiled statistics. This section presents the names of the surveys by sector of performance as well as methodological information for each survey. Depending on the type of survey and sector of performance, only the sections corresponding to that survey and sector are filled in.

18.1.1. Data source – general information
Survey name  Report on R&D activity of enterprises 
Type of survey  Census
Combination of sample survey and census data  No 
Combination of dedicated R&D and other survey(s)  No 
    Sub-population A (covered by sampling)  
    Sub-population B (covered by census)  Target population is covered by census only.
Variables the survey contributes to  The survey contributes to the production of all mandatory variables.
Survey timetable-most recent implementation  The questionnaire was sent to the enterprises at the beginning of March. Data was processed by the end of June, 2022.
18.1.2. Sample/census survey information
  Stage 1 Stage 2 Stage 3
Sampling unit      
Stratification variables (if any - for sample surveys only)      
Stratification variable classes      
Population size      
Planned sample size      
Sample selection mechanism (for sample surveys only)      
Survey frame      
Sample design      
Sample size      
Survey frame quality      

Not applicable.

18.1.3. Information on collection of administrative data or of pre-compiled statistics
Source  No administrative data is collected and used for this statistic.
Description of collected data / statistics  
Reference period, in relation to the variables the survey contributes to  
18.2. Frequency of data collection

See 12.3.3.

18.3. Data collection

See below.

18.3.1. Data collection overview
Realised sample size (per stratum)  Not applicable
Mode of data collection  On-line survey
Incentives used for increasing response  none
Follow-up of non-respondents The first reminding e-mail was sent out 7 days before the deadline, the second 7 days after the deadline. A third, warning letter was sent 28 days after the deadline. Selected non-responding enterprises were followed-up by phone as well.
Replacement of non-respondents (e.g. if proxy interviewing is employed)  Not applicable
Response rate (ratio of completed "interviews" over total number of eligible enterprises or enterprises of unknown eligibility)  Not applicable
Non-response analysis (if applicable -- also see section 18.5. Data compilation - Weighting and Estimation methods)  Not applicable
18.3.2. Questionnaire and other documents
Annex Name of the file
R&D national questionnaire and explanatory notes in English:  
R&D national questionnaire and explanatory notes in the national language:

 R&D_BES_2021_questionnaire_HU

 R&D_BES_2021_explanatory_notes_HU

Other relevant documentation of national methodology in English:  
Other relevant documentation of national methodology in the national language:  


Annexes:
R&D_BES_2021_questionnaire_HU
R&D_BES_2021_explanatory_notes_HU
18.4. Data validation

We continously monitored the response rate and we compared it with the statistics of the previous cycle. We also compered the data received with relevant external (eg. Ministry) data source. We investigated inconsistencies in the statistics.  

18.5. Data compilation

See below.

18.5.1. Imputation - rate

Imputation is the method of creating plausible (but artificial) substitute values for all those missing.
Definition:
Imputation rate (for the variable x) % = (Number of imputed records for the variable x) / (Total number of possible records for x)*100

 

Unit-level imputation was used to reduce non-response error. Data was only imputed for those units (for all data points) where data was available from the previous year’s data collection and the unit had 100+ employees. Data was imputed with the unit’s own data from the previous year. 

Item imputation was not used as all questions in the survey are mandatory.

18.5.1.1. Imputation rate (un-weighted) (%) by Size class
  0-9 employees and self-employed persons (optional) 10-49 employees and self-employed persons 50-249 employees and self-employed persons 250-and more  employees and self-employed persons TOTAL
R&D expenditure  0  0  0,2%  0,5%  0,7%
R&D personnel (FTE)  0  0  0,2%  0,5%  0,7%
18.5.1.2. Imputation rate (un-weighted) (%) by NACE
  Industry1 Services2 TOTAL
R&D expenditure  0,4%  0,3%  0,7%
R&D personnel (FTE)  0,4%  0,3%  0,7%

1)       Industry (NACE Rev. 2: 01-03, 05-09,10-33,35,36-39,41-43)

2)       Services (NACE Rev 2.: 45-47, 49-53, 55-56, 58-63, 64-66 68, 69-75, 77-82, 84, 85, 86-88, 90-93, 94-96, 97-98, 99)

 

18.5.2. Data compilation methods
Data compilation method - Final data (between the survey years)  We have an annual R&D survey.
Data compilation method - Preliminary data  We have an annual R&D survey.
18.5.3. Measurement issues
Method of derivation of regional data  All R&D variables are classified by region on the basis of the residence of the enterprise. The residence of an enterprise with multiple legal units is the residence of the head legal unit. 
Coefficients used for estimation of the R&D share of more general expenditure items  No estimation used.
Inclusion or exclusion of VAT and provisions for depreciation in the measurement of expenditures  Exclusion of VAT.
Differences between national and Frascati Manual classifications not mentioned above and impact on national statistics  We have no differences in classifications.
18.5.4. Weighting and estimation methods
Weight calculation method  No weighting.
Data source used for deriving population totals (universe description)  
Variables used for weighting  
Calibration method and the software used  
Estimation  No estimation.
18.6. Adjustment

Not requested.

18.6.1. Seasonal adjustment

Not requested.


19. Comment Top


Related metadata Top


Annexes Top