Research and development (R&D) (rd)

National Reference Metadata in Single Integrated Metadata Structure (SIMS)

Compiling agency: Statistics Norway


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)



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1. Contact Top
1.1. Contact organisation

Statistics Norway

1.2. Contact organisation unit

Division for R&D, technology and business dynamics statistics

1.5. Contact mail address

Statistisk sentralbyrå

PB 2633 St. Hanshaugen
NO-0131 Oslo


2. Metadata update Top
2.1. Metadata last certified 11/04/2023
2.2. Metadata last posted 11/04/2023
2.3. Metadata last update 11/04/2023


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
 No additional classifications  
   
   
3.3. Coverage - sector

See below.

3.3.1. General coverage
Definition of R&D  As defined by the Frascati manual.
Fields of Research and Development (FORD)  Not available
Socioeconomic objective (SEO by NABS)  Not available
3.3.2. Sector institutional coverage
Business enterprise sector

- Private and public enterprises with at least 10 employees, except some industries.

- Research institutes serving the enterprisee sector 

Hospitals and clinics  University hospitals are included in the Higher education sector. Hospitals outside the university system are included in the government sector.
Inclusion of units that primarily do not belong to BES  
3.3.3. R&D variable coverage
R&D administration and other support activities  Administration at central level: Expenditure on R&D is included as overhead expenditure in other current costs.
Administration at local level: Expenditure on R&D is included in other current costs.
Administrative and supportive personnel involved in R&D activities is included in FTE and HC, and the expenditure is included in compensation of employees.
External R&D personnel  Costs on external personnel are specified as Costs of contracted personnel, included in Other current costs of intramural R&D. Underlined in the questionnaire that this is different from Acquisition of R&D services (extramural R&D). External personnel are not included in total R&D personnel.
Clinical trials  No special effort has been made to deal with clinical trials.
3.3.4. International R&D transactions
Receipts from rest of the world by sector - availability  Mostly available, separated in different categories
Payments to rest of the world by sector - availability  Mostly available, separated in different categories
Intramural R&D expenditure in foreign-controlled enterprises – coverage   Foreign controlled enterprises are covered. It could be possible to distinguish between foreign-controlled and domestic enterprises.
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  Separate question about extramural R&D in the survey. 
Difficulties to distinguish intramural from extramural R&D expenditure  Some enterprises find it difficult to distinguish extramural expenditure from costs of contracted personnel (other current costs, intramural R&D), and it is often difficult for us to detect wrong reporting. We give information in the survey about difference between extramural R&D and external R&D personnel.
3.4. Statistical concepts and definitions

See below.

3.4.1. R&D expenditure
Coverage of years  Calendar year
Source of funds  In line with FM, but no data on exchange/transfer fund
Type of R&D  In line with FM
Type of costs  In line with FM, but no separate information on capitalized computer software or other intellectual property products.
Economic activity of the unit

Main economic activity of the conducting unit, enterprise.

Before 2021: breakdown by NACE was based on a question in the survey regarding R&D distributed on the establishments (local-kind-of-activity units) in the enterpise.

Economic activity of industry served (for enterprises in ISIC/NACE 72)   Only some enterprises in NACE 72 are reclassified to the main industry served.
Product field  Not included
Defence R&D - method for obtaining data on R&D expenditure  No special method for defence R&D 
3.4.2. R&D personnel

See below.

3.4.2.1. R&D personnel – Head Counts (HC)
Coverage of years  Average number of persons during the calendar year surveyed
Function Data available for two categories: researchers and other R&D personnel (technical&administrative personnel). 
Before 2021: Researchers and other R&D personnel were classified by education level
Qualification The survey request the following categories 0-6, 7, 8 (ISCED 2011). 
Age Not included
Citizenship Not included

 

Average number of persons during the calendar year surveyed

3.4.2.2. R&D personnel – Full Time Equivalent (FTE)
Coverage of years  Calendar year
Function Data available for two categories: researchers and other R&D personnel (technical&administrative personnel). 
Before 2021: Researchers and other R&D personnel were classified by education level
Qualification The survey request the following categories 0-6, 7, 8 (ISCED 2011). 
Age  Not included
Citizenship  Not included
3.4.2.3. FTE calculation

Information from the R&D survey, ask for number of FTEs on R&D, performed by employees during the calendar year.

3.4.2.4. R&D personnel - Cross-classification by function and qualification
Cross-classification Unit Frequency
 N/A    
     
     
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 reporting unit is legal unit.

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  All active enterprises in the Business Enterprise sector (enterprises with at least 10 employees) and research institutes serving the enterprise sector.  
Estimation of the target population size    
Size cut-off point  Enterprises with 10 or more employees  
Size classes covered (and if different for some industries/services)  

All size classes except for 0 and 1-9.

Enterprises with 10-19 employees in NACE 41-43 and 49-53 are excluded.

 
NACE/ISIC classes covered  A03, B05-B09, C10-C33, D35, E36-E39, F41-F43, G46, H49-H53, J58-63, K64-K66, M70-72, M74.90, N82.990  
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 units within the NACE- and size classes in the target population, with 10 or more employees at the end of the statistical year. Data source: National business registry.
Methods and data sources used for identifying a unit as known or supposed R&D performer  Known R&D performers from the last R&D survey (above a certain threshold for R&D activity; more than 1 million NOK in intramural R&D expenditure or 3 million NOK in extramural R&D). In addition, enterprises that applied funding from the Norwegian Research Council. We get a list of enterprises from the Norwegian Research Council. All enterprises with 10 or more employees in NACE 72 are included.
Frequency and the methods applied for inclusion R&D performers not known and not supposed to perform R&D  Not relevant. The frame in the Norwegian survey is all enterprises regardless of R&D activity or not. We have not a register of all R&D performing enterprises. 
Number of “new”1) R&D enterprises that have been identified and included in the target population   Not relevant. The frame in the Norwegian survey is all enterprises regardless of R&D activity or not. We have not a register of all R&D performing enterprises. 
Systematic exclusion of units from the process of updating the target population  Enterprises with less than 10 employees are excluded. In NACE 41-43 and 49-53 enterprises with less than 20 employees are excluded. Some industries are excluded because of very little R&D, se section 3.6.1 (NACE/ISIC classes covered).
Estimation of the frame population  12703 (brutto population)

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

Expenditure: NOK 1000

R&D personnel: number of persons

R&D FTE: number of FTE


5. Reference Period Top

Calendar year


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  Statistics Norway produces statistics in line with European statistics code of practice.
6.1.2. National legislation
Existence of R&D specific statistical legislation  No, but there is a statistical programme where R&D statistics is mentioned together with all other national statistics. Governed by the general national statistical legislation.
Legal acts  LOV-2019-06-21-32
Obligation of responsible organisations to produce statistics (as derived from the legal acts)  Statistics Norway produce R&D statistic for all R&D performing sectors in Norway.
Right of responsible organisations to collect data – obligation of (natural / legal) persons to provide raw and administrative data (as derived from the legal acts)  N/A
Obligation of responsible organisations to protect confidential information from disclosure  (as derived from the legal acts)  N/A
Rights of access of third organisations / persons to data and statistics (as derived from the legal acts)  N/A
Planned changes of legislation  N/A
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: Yes

 

 

b)       Confidentiality commitments of survey staff: Yes

 

7.2. Confidentiality - data treatment

Data is never published for less than three units. Also rules for dominance: confidential if one unit with at least 90 percent of total intramural R&D expenditure or two units with at least 95 per cent of total intramural R&D expenditure. 


8. Release policy Top
8.1. Release calendar

Planned release are registered in the release calendar at www.ssb.no

8.2. Release calendar access

https://www.ssb.no/en/kommende-publiseringer

 

8.3. Release policy - user access

Data are available for all users at the same time when we release data, no one have access before release.


9. Frequency of dissemination Top

Annual


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

See below.

10.1.1. Availability of the releases
  Availability (Y/N)1 Content, format, links, ...
Regular releases  Y  The release of the data is made public through a newsletter on Statistics Norway's web pages. (Preliminary and final figures).
Ad-hoc releases  N  

 

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)

 Y    In addition to general publications on ssb.no, the figures are also made available through the publication “Report on Science & Technology Indicators for Norway”  (https://www.forskningsradet.no/indikatorrapporten/). Variables for all performing sectors as well as time series. (forskningsradet.no/indikatorrapporten). 
Specific paper publication (e.g. sectoral provided to enterprises)

(paper, online)

 Y  On irregular basis there are published shorter articles or reports. 

1) Y – Yes, N - No 

10.3. Dissemination format - online database

Online databank for R&D that include most of the variables back in time.

https://www.ssb.no/en/statbank/list/foun

10.3.1. Data tables - consultations

Not requested.

10.4. Dissemination format - microdata access

See below.

10.4.1. Provisions affecting the access
Access rights to the information  Researchers from approved research institutes may have access to unidentified microdata from the R&D statistics (direct identification removed)
Access cost policy  Full cost
Micro-data anonymisation rules  Direct identification is removed and the units get a new number/key.
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  Y  Aggregate figures  In addition to the press release, key aggregates, tables and figures are available online.
Data prepared for individual ad hoc requests  Y  Micro-data/Aggregate figures  
Other  N    

1) Y – Yes, N - No 

10.6. Documentation on methodology

Methodology of R&D survey described at webpage www.ssb.no/en/foun

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.)  Metadata is published as a parallel to the press release. The press release addresses analyses’ key points and comparisons over time. Availability is further ensured by, including contact persons' names, phone numbers and e-mail addresses. Furthermore, figures accompany key tables for clarity purposes.
Request on further clarification, most problematic issues  Sometimes. Examples: coverage and industry/size classes.
Measures to increase clarity  More information on web page.
Impression of users on the clarity of the accompanying information to the data   Generally good impression.


11. Quality management Top
11.1. Quality assurance

Statistics Norway has systems for quality assurance, and production of statistics follows European statistics code of practice. Different kind of quality reviews of statistics. The methodology for the R&D statistics for BES was in 2016 evaluated by methodology experts in Statistics Norway.

11.2. Quality management - assessment

The methodology for the R&D statistics for BES was in 2016 evaluated by methodology experts in Statistics Norway. The conclusion was that the existing methodology is reliable and gives well estimated results. There is always uncertainty, but we have tried to limit this with a large sample of enterprises. As mentioned earlier all enterprises with more than 50 employees (with some exceptions) are census surveys that give reliable results. It is also a strength that the response rate is very high (about 99 per cent) and there is virtually no item nonresponse. Additionally, the quality of the business register data used for sample selection and weights are considered to be of high quality.


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-National level  Norwegian Research Council  Data used for research purposes, as well as benchmarking and
drawing policy implications
 1-National level  Ministry of Education and Research  Data used for policy assessment and policy creation.
 1-National level  Ministry of Trade, Industry and Fishery  Data used for policy assessment and policy creation.
 1-National level  Ministry of Local Government and Modernisation   Data used for regional benchmarking, policy assessment and policy creation.
2- Social actors National media, as well as regional
media and trade specific journals
National media are interested in the benchmarking aspects, specifically comparisons to the other Nordic countries. Regional and trade specific media naturally have a narrower interest, depending on their respective audience.
 3-Media National media, as well as regional
media and trade specific journals
National media are interested in the benchmarking aspects, specifically comparisons to the other Nordic countries. Regional and trade specific media naturally have a narrower interest, depending on their respective audience.
 4- Researchers and students Researchers from Norwegian
universities, colleges, and research
institutions
Micro data used in analytical studies. Researchers’ needs vary with the institutions to which they belong. Researchers from regional colleges often use micro data for regional studies and projects.

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  Statistics Norway does not undertake a national user satisfaction survey per se. Instead, regular meetings are held with key users. At these meetings the users are encouraged to evaluate previous surveys, as well as suggest changes or amendments to future surveys.
User satisfaction survey specific for R&D statistics  Yes, the regular yearly meetings are specific for R&D statistics
Short description of the feedback received

Occationally some users want timelier data, but accept the difficulties in reducing the duration of the production process. Occasionally some users want more detailed breakdowns or full coverage of NACE-classes.

12.3. Completeness

See below.

12.3.1. Data completeness - rate

N/A

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  X          
Optional data on R&D personnel    X        
Regional data on R&D expenditure and R&D personnel    X        

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  Annual (from 2001)        
Type of R&D  Y  Biennial        
Type of costs  Y  Annual (from 2001)        
Socioeconomic objective  N          
Region  Y  Annual (from 2001)        
FORD  N          
Type of institution  Y (partly)          

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  Annual (from 2001)    Female researchers estimated in 2021  Only 2021  Response burden
Function  Y  Annual (from 2001)    Before 2021: Function defined by education level  Only 2001-2020  Response burden, available information, quality. Good correspondence between occupation and education level on aggregated level.
Qualification  Y (partly)  Annual (from 2001)        
Age  N          
Citizenship  N          
Region  Y   Annual (from 2001)        
FORD  N          
Type of institution  Y (partly)          
Economic activity  Y   Annual (from 2001)        
Product field  N          
Employment size class  Y   Annual (from 2001)        

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  N          
Function  Y Annual (from 2001)   Before 2021: Function defined by education level   Only 2001-2020   Response burden, available information, quality. Good correspondence between occupation and education level on aggregated level.
Qualification  Y (partly)  Annual (from 2001)        
Age  N          
Citizenship  N          
Region  Y  Annual (from 2001)        
FORD  N          
Type of institution  Y (partly)          
Economic activity  Y  Annual (from 2001)        
Product field  N          
Employment size class  Y Annual (from 2001)         

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
 Extramural R&D expenditure, from type of sector/institution  Y  Annual (from 2001)      
 R&D services sold/delivered to others Y  Annual (from 2005)      
  Thematic and technology areas  Y  Annual (from 2001)  18 areas    
           
           

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  2  5  1  5  5  
Total R&D personnel in FTE  2  1  5  5    -
Researchers in FTE  5  1  5  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        

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

A model-based prediction variance was estimated. The sample design and weighting has been taken into account.

13.2.1.2. Coefficient of variation for key variables by NACE
  Industry sector1 Services sector2 TOTAL
R&D expenditure  0,7  1,2  0,8
R&D personnel (FTE)  0,8  1,4  0,9

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
  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    2,8  0,1  0  0,8
R&D personnel (FTE)   2,9  0,1  0,9 
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:

 Frame population is based the official, up-to-date, business register. There is assumed to be no under-coverage.

 

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)      
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)  No groups    
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.

 

 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)    1369 1179   241  2789
Number of surveyed enterprises that have changed stratum (after inspection of their characteristics)    0  0  1
Misclassification rate      0,08%    0,04%
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)    1512 889   193 2594 
Number of surveyed enterprises that have changed stratum (after inspection of their characteristics)    1  5  0  5
Misclassification rate    0,07% 0,4%     0,2%
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:

Some respondents probably report based on their own definition of R&D, and it may not correspond to the definition in the questionnaire.  Some respondents may have difficulties with distinguish between external R&D personnel and extramural R&D. Within ICT related development there are risk of overreporting R&D. Problems with R&D integrated in deliveries for costumers. 

 

b)      Measures taken to reduce their effect:

 Information in the questionnaire and guidelines. Routines to detect errors during editing.

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    2877  2065  429 5371 
Total number of units in the sample   2895  2084  440  5419 
Unit Non-response rate (un-weighted)   0,006   0,009 0,025   0,009
Unit Non-response rate (weighted)          
13.3.3.1.2. Unit non-response rates by NACE
  Industry1) Services2) TOTAL
Number of units with a response in the realised sample  2782  2589 5371 
Total number of units in the sample 2789  2630  5419 
Unit Non-response rate (un-weighted) 0,003   0,016 0,009 
Unit Non-response rate (weighted)      

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 survey is mandatory for the respondents. There were sent one reminder as a formal decision of sanction (a fine/fee). The respondents are informed that the fee is waived if the surveys is completed within a second/final due date. The most important enterprises get an additional reminder on email before the formal reminder.
 
If enterprises don’t respond after the second due date, the fine will be enforced by a national authority responsible for collecting debt owed to the government. The respondents will be informed that paying the fine does not release them from the legal obligation to answer the survey.
 
13.3.3.1.4. Unit non-response survey
Conduction of a non-response survey  Non-response analysis survey is not carried out
Selection of the sample of non-respondents  
Data collection method employed  
Response rate of this type of survey  
The main reasons of non-response identified  
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
Imputation (Y/N)  Y  Y  Y
If imputed, describe method used, mentioning which auxiliary information or stratification is used No item non-response. But enterprises not responding to the survey are imputated if they reported R&D last survey. Method: mainly information from last year survey. No item non-response. But enterprises not responding to the survey are imputated if they reported R&D last survey. Method: mainly information from last year survey.  No item non-response. But enterprises not responding to the survey are imputated if they reported R&D last survey. Method: mainly information from last year survey. 
13.3.3.3. Magnitude of errors due to non-response
   Magnitude of error (%) due to non-response
Total intramural R&D expenditure  0
Total R&D personnel in FTE  0
Researchers in FTE
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  
Data are collected on a web-based questionnaire. Report on paper questionnaire is no longer accepted.
In the web-based questionnaire automatic controls are incorporated to minimize inconsistent reporting. Wrong values being reported have been reduced significantly compared to paper questionnaire.
 
A common electronic platform is used for transferring data from the web survey to an in-house editing program. SAS is also used in data processing.
 
Estimates of data entry errors  No numbers available on data entry errors. Some reports in NOK, instead of 1000 NOK, detected.
Variables for which coding was performed  No variables
Estimates of coding errors  Not relevant
Editing process and method
After receiving the questionnaires from the enterprises, the data is revised on a micro level. With the web-based questionnaire, the number of errors is reduced considerably.
During the data revision, answers from previous surveys are used as a reference. Numerous consistency checks are undertaken. Where discrepancies are found, the auditor either corrects obvious mistakes, or contacts the enterprise to rule out mistakes and misconceptions. In addition, the auditors use information from the CIS survey, annual reports, Internet etc.
 
The data revision is also done on the macro level. Enterprises that contribute significantly to their aggregate/group are prioritized in the data revision. Tables on macro level are being checked to find possible errors.
 
While the editing process is meticulous and precise, it is possible for some errors to slip by without being identified and corrected.
 
Procedure used to correct errors  Mostly recontacting enterprises or correction based on information from previous surveys, annual reports etc.
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: 2021-12-31

b) Date of first release of national data: 2022-10-26

c) Lag (days): 299

14.1.2. Time lag - final result

 a) End of reference period:  2021-12-31

b) Date of first release of national data: 2023-02-16

c) Lag (days): 412

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)  T+10  T+18
Delay (days)   0  0
Reasoning for delay    


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 general issues.

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  
Researcher FM2015, §5.35-5.39. NO   Before 2021: definition of researcher based on education level
Approach to obtaining Headcount (HC) data FM2015, §5.58-5.61 (in combination with  Eurostat's EBS Methodological Manual on R&D Statistics). NO   
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   
Reporting data according to formula: Total R&D personnel = Internal R&D personnel + External R&D personnel FM2015, §5.25  YES (Internal personnel only)  We don't include external R&D personnel in Total R&D personnel.
Intramural R&D expenditure FM2015 Chapter 4 (mainly paragraph 4.2). NO   
Special treatment for NACE 72 enterprises FM2015, § 7.59.  NO Most enterprises in NACE 72 are classified in NACE 72, only some enterprises are classified according to industry served. 
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

 

Target population FM2015 Chapter 7 (mainly paragraph 7.7 in combination with Eurostat's EBS Methodological Manual on R&D Statistics).   NO  
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   
Sector coverage FM2015 Chapter 3 (mainly § 3.51-3.59) in combination with Eurostat's EBS Methodological Manual on R&D Statistics).   NO  
NACE coverage and breakdown Reg. 2020/1197 : Annex 1, Table 18    NO Some NACE are not included because of no R&D/negligible amount of R&D 
Enterprise size coverage and breakdown Reg. 2020/1197 : Annex 1, Table 18   NO  
Reference period for the main data Reg. 2020/1197 : Annex 1, Table 18    NO  
Reference period for all data Reg. 2020/1197 : Annex 1, Table 18    NO  
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  
Data collection method NO  
Cooperation with respondents  NO  
Follow-up of non-respondents  NO  
Data processing methods  NO  
Treatment of non-response  NO  
Data weighting  NO  
Variance estimation  NO  
Data compilation of final and preliminary data  NO  
Survey type  NO  
Sample design  NO  
Survey questionnaire  NO  
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)    1995, 1987, 1985, 1984, 1981
 1995:The Business Enterprise survey was expanded considerably to include a sample of units with a minimum of 10 employees (previously 50 employees minimum) in branches which have been traditionally covered ; several service units have also been included. Total figures including the “new” enterprises (expansion) are therefore not comparable with those for previous years. 1987:The BE survey was expanded to include Bank and Insurance Services and more Engineering Services.1985:A significant number of new enterprises within computing and technical services was included. 1984:The coverage of the survey was expanded to include more private firms, notably within the branches of Transport, Commercial and Engineering Services and Other activities (ISIC 71, 8323/24). 1981:The coverage of the survey was expanded to include more private firms, notably within the branches of Transport, Commercial and Engineering Services and Other activities (ISIC 71, 8323/24). Prior to 1981 each institutes R&D was included under the industry it principally served.
  Function    2021

 Before 2021: Education level was used as a proxy for function. From 2021 onwards, function is reported directly.

Only 2021: Female researchers are estimated

  Qualification      
R&D personnel (FTE)   1995, 1987, 1985, 1984, 1981   1995:The Business Enterprise survey was expanded considerably to include a sample of units with a minimum of 10 employees (previously 50 employees minimum) in branches which have been traditionally covered ; several service units have also been included. Total figures including the “new” enterprises (expansion) are therefore not comparable with those for previous years. 1987:The BE survey was expanded to include Bank and Insurance Services and more Engineering Services.1985:A significant number of new enterprises within computing and technical services was included. 1984:The coverage of the survey was expanded to include more private firms, notably within the branches of Transport, Commercial and Engineering Services and Other activities (ISIC 71, 8323/24). 1981:The coverage of the survey was expanded to include more private firms, notably within the branches of Transport, Commercial and Engineering Services and Other activities (ISIC 71, 8323/24). Prior to 1981 each institutes R&D was included under the industry it principally served.
  Function   2021   Before 2021: Education level was used as a proxy for function. From 2021 onwards, function is reported directly.
  Qualification      
R&D expenditure    1995, 1987, 1985, 1984, 1981   1995:The Business Enterprise survey was expanded considerably to include a sample of units with a minimum of 10 employees (previously 50 employees minimum) in branches which have been traditionally covered ; several service units have also been included. Total figures including the “new” enterprises (expansion) are therefore not comparable with those for previous years. 1987:The BE survey was expanded to include Bank and Insurance Services and more Engineering Services.1985:A significant number of new enterprises within computing and technical services was included. 1984:The coverage of the survey was expanded to include more private firms, notably within the branches of Transport, Commercial and Engineering Services and Other activities (ISIC 71, 8323/24). 1981:The coverage of the survey was expanded to include more private firms, notably within the branches of Transport, Commercial and Engineering Services and Other activities (ISIC 71, 8323/24). Prior to 1981 each institutes R&D was included under the industry it principally served.
Source of funds    1987, 1980  1987: The “own funds” of commercial State enterprises (included as executive units in the business enterprise sector), previously included in government funds, were reclassified as own funds of business enterprises. - The BE survey was expanded to include Bank and Insurance Services and more Engineering Services. 1980: the "own funds" of the mining sector (i.e. oil producers) include funds from their foreign parent companies
Type of costs    See above  See above
Type of R&D    See above  See above
Other    2021

Before 2021: Industry breakdowns and regional breakdowns were based on distribution of R&D on the establishments in the enterprise (a question in the survey).

From 2021 enterprise was used for industry breakdowns and regional breakdowns.

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

Data is produced the same way in odd and 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

Not available

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
 Total intramural R&D      CIS    Some differences in population, sample, data collection etc. 
           
           
           
           
           
15.3.4. Coherence – Foreign-controlled EU enterprises – inward FATS

The R&D survey is used for R&D variables in inward FATS. 

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)  43964751.000  
27145
 19708
Final data (delivered T+18)  43962927.982  
27053
19711
 
Difference (of final data)  -1823.018  92  3
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)  1045 NOK (1000)
Consistency between FTEs of external R&D personnel and other current costs for external R&D personnel (2)  Not available

(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
 Difficult to calculate costs for producing business R&D statistics.

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
Restricted from publication


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  R&D Survey for business enterprises. Norwegian: Forskning og utvikling (FoU) i næringslivet.
Type of survey  Combination of census and sample survey. Data are collected by means of one survey specially designed to measure R&D in the business enterprises and one designed for research institutes serving enterprise sector. Web-based questionnary. Se details below.
Combination of sample survey and census data
For enterprises with 50 employees or more there is a census survey
- with the following exceptions: a sample of 30 per cent were drawn for enterprises with 50-99 employees in NACE 41-43, 46, 49-53, due to the large number of enterprises in these NACE-classes.
 
For enterprises with 10-49 employees:
-  census: all enterprises with large R&D expenditures reported in the previous survey (more than 1 million NOK in intramural R&D or 3 million NOK in extramural R&D) all enterprises with at least 10 in NACE 72, enterprises with at least 10 employees that applied funding from the Norwegian Research Council (list from the Norwegian Research Council).
- sample: among the other enterprises a random sample is drawn. In NACE 41-43, 49-53 enterprises with 10-19 employees were excluded.
 
 Research institutes serving enterprise sector: census.
Combination of dedicated R&D and other survey(s)  No
    Sub-population A (covered by sampling)  9485
    Sub-population B (covered by census)  3218
Variables the survey contributes to  
All variables reported to Eurostat. 
- R&D personnel (headcounts and FTE), by gender and education level and function
- R&D expenditure (intramural), by type of cost, type of R&D and source of fund.
- Extramural R&D, from type of institution/sector
 
Survey timetable-most recent implementation  
May: Questionnaire sent out
October: Publishing of first results
February: Final results
 
18.1.2. Sample/census survey information
  Stage 1 Stage 2 Stage 3
Sampling unit  Enterprise. Legal unit is reporting unit.    
Stratification variables (if any - for sample surveys only)  NACE (ISIC) and size-class (number of employees)    
Stratification variable classes

Employees: 10-19, 20-49, 50+. In addition 50-99 in nace 41-43, 46, 49-53.

NACE is classified to two-digit level.

   
Population size

 

12690

   
Planned sample size  
 
5419
   
Sample selection mechanism (for sample surveys only)  Stratified random selection. Census for enterprises with 50+ employees and larger. See 18.1.1.    
Survey frame  Central register of Enterprises and Establishments    
Sample design  
The sample was stratified by 2-digit NACE and size classes (10-19, 20-49). The sampling rate is in general 30 per cent for size class 20-49, 15 per cent for 10-19. In NACE 41-43 and 49-53 there is also strata with 50-99 employees.
In NACE 41-43, 49-53 enterprises with 10-19 employees were excluded from the frame population.
 
There are some modifications:
- A minimum of 10 enterprises (or all available, whichever is smallest) was drawn in each stratum.
- A supplementary sample was drawn by Economic Region (Norwegian classification corresponding to NUTS 4) to ensure that a minimum of 10 units from each region was
included if the initial sample had fewer than 10 enterprises in any region. Census.
- Supplementary sample with enterprises that reported R&D last survey. Census. 
 
   
Sample size  5390 (included imputed non-respondents with R&D from previous year’s survey)    
Survey frame quality  High quality    
18.1.3. Information on collection of administrative data or of pre-compiled statistics
Source  N/A
Description of collected data / statistics  N/A
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)  
 Realized sample included non-respondents that are imputed with R&D information from last survey.
Total: 5390 
10-19 employees:  1070
20-49 employees:  1811
50-99 employees:  1186
100+: 1323
 
Mode of data collection  Web-based questionnaire 
Incentives used for increasing response  Mandatory survey
Follow-up of non-respondents  1 reminder, use of fee
Replacement of non-respondents (e.g. if proxy interviewing is employed)  Imputation based on information from last survey or other information, only for enterprises with R&D in the last survey.
Response rate (ratio of completed "interviews" over total number of eligible enterprises or enterprises of unknown eligibility)  About 99%
Non-response analysis (if applicable -- also see section 18.5. Data compilation - Weighting and Estimation methods) Non-response analysis is not carried out 
18.3.2. Questionnaire and other documents
Annex Name of the file
R&D national questionnaire and explanatory notes in English:  RD_BESSI_A_NO_2021_0000_an_2.pdf (English)
R&D national questionnaire and explanatory notes in the national language:  RD_BESSI_A_NO_2021_0000_an_1.pdf (Norwegian)
Other relevant documentation of national methodology in English:  
Other relevant documentation of national methodology in the national language:  


Annexes:
R&D questionnaire, 2021, BES, norwegian
R&D questionnaire, 2021, BES, english
18.4. Data validation

Many procedures for checking the source and output data. Examples: calculating response rate, comparing with data from previous years (both micro and macro level), controlling inconsistencies between different variables, micro and macro editing. Special focus on important units (checking with annual reports, internet), detection of outliers. 

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

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    0,1  0,4  1,4  0,4
R&D personnel (FTE)   0,1  0,4  1,4   0,4
18.5.1.2. Imputation rate (un-weighted) (%) by NACE
  Industry1 Services2 TOTAL
R&D expenditure  0,6  0,2  0,4
R&D personnel (FTE) 0,6   0,2  0,4

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)  Not relevant; annual survey.
Data compilation method - Preliminary data Same method as final data, but fewer variables/dimensions. Some data validation is executed after publishing preliminary data. 
18.5.3. Measurement issues
Method of derivation of regional data

2021: The location of the enterprise is used.

Before 2021: Enterprises are asked to report total R&D persons and total R&D expenditure on establishments (local kind-of-activity units). This was used to make regional distribution.

Coefficients used for estimation of the R&D share of more general expenditure items  Not relevant
Inclusion or exclusion of VAT and provisions for depreciation in the measurement of expenditures Excluded (mentioned in the guidelines for the questions) 
Differences between national and Frascati Manual classifications not mentioned above and impact on national statistics  
18.5.4. Weighting and estimation methods
Weight calculation method  
For all the numerical variables such as R&D expenditure, R&D personnel etc. number of employees was used to calculate weights. For each stratum the number of employees in the population is divided by the number of employees in the achieved sample. The population and sample are stratified by NACE 2-digit level and size. Enterprises that ceased operation during data collection were removed from the sampling frame before weighting. 
 
Statistics Norway uses the inverse of the sampling fraction i.e. using the number of enterprises, to calculate how many enterprises that have R&D activity (all variables that are number of units, yes or no questions etc.).
 
Data source used for deriving population totals (universe description)  
Statistics Norway's business register for all enterprises in Norway, this database in
constantly being updated and developed.
 
Variables used for weighting  Employees in each stratum. Number of enterprises int each stratum.
Calibration method and the software used  Statistics Norway used SAS-macro commands developed by its own staff.
Estimation  Coefficient of variation calculated
18.6. Adjustment

Not requested.

18.6.1. Seasonal adjustment

Not requested.


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