Data Strategy for the Federal Public Service - Annexes

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The following is an evergreen list of terms and complementary strategies.


Glossary of Terms

The following definitions are intended to support a common understanding of key terminology when reading the 2023-2026 Data Strategy for the Federal Public Service. They are intended to be a source of collaboration and knowledge sharing and are not official policy definitions.

  1. Data flow: The circulation or movement of computerised data and information through interoperable systems and across organisations, geopolitical regions or jurisdictions.[1]
  2. Data portability: The capacity of digital data and information to be transmitted or circulated through interoperable applications or systems and across organisations or geopolitical regions. Data portability enables data subjects to have clear and manageable access to their personal data, which they have provided to a controller in a structured, commonly used, machine-readable and interoperable format, and are free to transfer it to another controller without undue burden.[2][3]
  3. Data governance: A system of decision rights and accountabilities, responsibilities and rules for the management of the availability, usability, integrity and security of the data and information to enable coherent implementation and co-ordination of data stewardship activities as well as increase the capacity (technical or otherwise) to better control the data value chain, and the resulting regulations, policies and frameworks that provide enforcement. This includes the systems within an enterprise, organization or government that define who has authority and control over data assets and how those data assets may be used, as well as the people, processes, tools and technologies required to manage and protect data assets .[4][5][6][7][8][9]
  4. Data management: A discipline that directs and supports effective and efficient management of information and data in an organization or public administration, from planning and systems development to disposal or long-term preservation. Data management involves the development, execution, and supervision of plans, policies, practices, concepts, programs, and the accompanying range of systems that contribute to the organizational or governmental mandates and to public good, as well as the maintenance of data processes to meet ongoing information lifecycle needs. It enables the delivery, control, protection, and enhancement of the value of data and information assets through integrated, user-based approaches. Key components of data lifecycle management include a searchable data inventory, reference and master data management, and a quality assessment framework.[8][9][10][11][12]
  5. Data quality: The ‘quality’ of data refers to its fitness for purpose, often measured by such criteria offered below (5a). Data quality assurance measures are used to assess and improve the quality of data. Quality assurance measures planning, implementation, and control of activities that apply quality management techniques to data (whether statistical, administrative, or otherwise) and the statistical production process, to assure data is fit for purpose, which means that it is both usable and relevant in a primary or other use-context, and meets the needs of data users. Different users may have different needs that must be balanced. a) Many organizations – within Canada and internationally – have a set of criteria defining data quality. These often include concepts such as: relevance, reliability, consistency, credibility, completeness, accuracy, timeliness, accessibility, comparability, interpretability, coherence, and proportionality, which all contribute to the data and information’s overall quality and value.[13][14][15][16][17][18][19][20]
  6. Data security: The definition, planning, development, and execution of security policies and procedures used to provide proper authentication, authorization, access, and auditing of data and information assets. Data security enables the protection of privacy, confidentiality, and integrity, as well as the maintenance of trust and social license to operate.[5][10][18][21]
  7. Data standards: Data standards are the rules and specifications by which data are described, defined and recorded. In order to share, exchange, and understand data, standardized formats and meanings are needed. Examples of data standards include data models, reference data, identifier schemas, and statistical standards. The use of data standards enables the integration of data over time and across different data sources, as well as reduces the resource requirements associated with many aspects of survey development and maintenance. [5][9][22][23]
  1. FAIR Data Principles: Set of data principles, which define characteristics that modern data resources, tools, vocabularies and infrastructures should demonstrate to facilitate the discovery and reuse of data by other parties. FAIR stands for:
    • F - Findable and easily searchable
    • A - Accessible and easy to use
    • I - Interoperable and more easily interpretable
    • R - Re-usable data that is easy to share and use[24].

Domain-Specific Strategies

Pan-Canadian Health Data Strategy - the strategy aims to support the effective creation, exchange, and use of health data for the benefit of Canadians and the public health systems they rely on. A collaborative approach to develop and deliver the strategy is being taken - federal/provincial/territorial co-development of the strategy is informed by the latest research findings, public health and data experts, and an Expert Advisory Group to provide guidance as the work evolves.

References

  1. Organisation for Economic Co-operation and Development (1985). Declaration on Transborder Data Flows. OECD: Better Policies for Better Lives. https://www.oecd.org/sti/ieconomy/declarationontransborderdataflows.htm
  2. Regulation (EU) 2016/679 of the European Parliament and of the Council of 27 April 2016 on the protection of natural persons with regard to the processing of personal data and on the free movement of such data, and repealing Directive 95/46/EC (General Data Protection Regulation) [2016] Official Journal of the European Union, Legislation Series 119, p. 45.
  3. Government of Canada, Innovation, Science and Economic Development Canada. (2019). Canada’s Digital Charter in Action: A Plan by Canadians, for Canadians. Ottawa, ON: Her Majesty the Queen in Right of Canada. https://ised-isde.canada.ca/site/innovation-better-canada/en/canadas-digital-charter/canadas-digital-and-data-strategy
  4. Data Governance Institute. (n.d.). Governance and Decision Making. Data Governance Institute. https://datagovernance.com/governance-and-decision-making/  
  5. 5.0 5.1 5.2 Organization for Economic Co-operation and Development (2008). OECD Glossary of Statistical Terms, OECD Publishing, Paris. https://doi.org/10.1787/9789264055087-en.
  6. Organisation for Economic Co-operation and Development (2019). Data Governance in the Public Sector In The Path to Becoming a Data-Driven Public Sector, OECD Digital Government Studies, OECD Publishing, Paris. https://doi.org/10.1787/059814a7-en.  
  7. Plotkin, D. (2021). Data Stewardship: An Actionable Guide to Effective Data Management and Data Governance (2nd Ed.). London, UK: Academic Press.
  8. 8.0 8.1 Statistics Canada. (2020b). Statistics Canada Data Strategy: Delivering insight through data for a better  Canada [PDF]. https://www.statcan.gc.ca/eng/about/datastrategy/statistics_+canada_data_strategy.pdf
  9. 9.0 9.1 9.2 Statistics Canada. (2021b). Enterprise Information and Data Management Glossary [PDF]. Unpublished internal departmental document.  
  10. 10.0 10.1 Data Management Association (DAMA) (2017). DAMA-DMBOK: Data Management Body of Knowledge (2nd Ed.). Basking Ridge, NJ: Technics Publications.
  11. Government of Canada, Treasury Board Secretariat. (2019). Policy on Service and Digital. Ottawa, ON: Her Majesty the Queen in Right of Canada. https://www.tbs-sct.canada.ca/pol/doc-eng.aspx?id=32603
  12. Statistics Canada. (2020a). Data Literacy Competencies. Statistics Canada. https://www.statcan.gc.ca/en/wtc/data-literacy/compentencies
  13. European Commission (2003). Eurostat. Assessment of quality in statistics - Definition of Quality in Statistics, Working Group, Luxembourg, October 2003.
  14. European Commission (2020). Eurostat. Quality assurance framework of the European statistical system: version 2.0, Publications Office, 2020. https://data.europa.eu/doi/10.2785/847733  
  15. Government of Canada. (2022). GC Data Quality Framework.https://wiki.gccollab.ca/GC_Data_Quality_Framework#Background
  16. Organisation for Economic Co-operation and Development (2002). Measuring the Non-Observed Economy: A Handbook. Paris, France: OECD Publications.  
  17. Statistics Canada (2002). Statistics Canada’s Quality Assurance Framework. Ottawa, ON: Minister of Industry. https://www150.statcan.gc.ca/n1/en/pub/12-586-x/12-586-x2002001-eng.pdf?st=QDz6ld3y
  18. 18.0 18.1 Statistics Canada (2021a). Statistics Canada’s Approach to Data Stewardship [PDF]. Unpublished internal departmental document.
  19. Wang, R.Y. and Strong, D.M. (1996) Beyond Accuracy: What Data Quality Means to Data Consumers. Journal of Management Information Systems, 12, 5-33.
  20. United Nations Departments of Economic and Social Affairs (2019). United Nations National Quality Assurance Frameworks Manual for Official Statistics [PDF]. https://desapublications.un.org/file/911/download
  21. Economic Commission for Europe of the United Nations (UNECE). (2000). Terminology on Statistical Metadata in Conference of European Statisticians Statistical Standards and Studies. (53), Geneva.
  22. International Organization for Standardization. (2016) Data quality — Part 61: Data quality management: Process reference model (ISO standard no. 8000-61:2016) https://www.iso.org/obp/ui/#iso:std:iso:8000:-61:ed-1:v1:en
  23. Standards Council of Canada. (2020). What Are Standards? Standards Council of Canada. https://www.scc.ca/en/standards/what-are-standards
  24. Wilkinson, M., Dumontier, M., Aalbersberg, I. et al. (2016). The FAIR Guiding Principles for scientific data management and stewardship. Scientific Data 3, 160018. https://www.nature.com/articles/sdata201618