Role of the information technology in official statistics Juraj RIECAN Director, UN-ESCWA Statistics Division.

Slides:



Advertisements
Similar presentations
1 Statistics Norway Information Architecture – some challenges ODaF meeting, Colchester April 2008 Rune Gløersen Director Department for IT and.
Advertisements

Statistics 2020 and Platform Approach Te Käpehu Whetü May 2011.
1 1 StatBank Moldova - The newest member of the PC-Axis Family Mr. Per Olav Løvbak Head of Division, Statistics Norway International seminar on dissemination.
TURKISH STATISTICAL INSTITUTE Metadata and Standards Department 1 Nezihat KERET Gülhan Eminkahyagil Metadata and Standards Department Turkish Statistical.
Fitting a survey life cycle in the DDI Irene Wong Chuck Humphrey IASSIST Edinburgh May 2005.
1 Business Exchange Structures Concepts.
Modernization Committee on Products and Sources: Survey of National Statistical Offices on communication and promotion activities: First Results Joint.
Producing and managing metadata Workshop on Writing Metadata for Development Indicators Lusaka, Zambia 30 July – 1 August 2012 Writing Metadata for Development.
E&I for 2006 Canadian Census Mike Bankier Statistics Canada
United Nations Economic Commission for Europe Statistical Division Applying the GSBPM to Business Register Management Steven Vale UNECE
Environment Change Information Request Change Definition has subtype of Business Case based upon ConceptPopulation Gives context for Statistical Program.
Background Defining and mapping business processes in statistical organisations started at least 10 years ago –“Statistical value chain” –“Survey life-cycle”
U NITED N ATIONS R EGIONAL S EMINAR ON C ENSUS D ATA D ISSEMINATION AND S PATIAL A NALYSIS S EPTEMBER 2010, N AIROBI, K ENYA R OBERTO B IANCHINI,
NSI 1 Collect Process AnalyseDisseminate Survey A Survey B Historically statistical organisations have produced specialised business processes and IT.
Case Studies: Statistics Canada (WP 11) Alice Born Statistics UNECE Workshop on Statistical Metadata.
4 April 2007METIS Work Session1 Metadata Standards and Their Support of Data Management Needs Daniel W. Gillman Bureau of Labor Statistics Paul Johanis.
The Adoption of METIS GSBPM in Statistics Denmark.
Population Census carried out in Armenia in 2011 as an example of the Generic Statistical Business Process Model Anahit Safyan Member of the State Council.
United Nations Economic Commission for Europe Statistical Division Introducing the GSBPM Steven Vale UNECE
Eurostat Overall design. Presented by Eva Elvers Statistics Sweden.
Support for design of statistical surveys at Statistics Sweden
On Tap: Developments in Statistical Data Editing at Statistics New Zealand Paper by Allyson Seyb, Felibel Zabala and Les Cochran Presented by Felibel Zabala.
Copyright 2010, The World Bank Group. All Rights Reserved. Part 2 Labor Market Information Produced in Collaboration between World Bank Institute and the.
Quality framework for the evaluation of administrative data (to be used for statistics) Piet J.H. Daas, Judit Arends-Tóth, Barry Schouten and Léander Kuivenhoven.
1 MODERNIZATION OF BELARUSIAN STATISTICS _________________________________________________ IMPLEMENTATION OF THE PROCESS APPROACH IN ORGANIZING THE STATISTICAL.
Current and Future Applications of the Generic Statistical Business Process Model at Statistics Canada Laurie Reedman and Claude Julien May 5, 2010.
Innovations in Data Dissemination Thomas L. Mesenbourg, Jr. Acting Director U.S. Census Bureau United Nations Seminar on Innovations in Official Statistics.
Jump to first page (o ns) Modernising Statistical Systems to improve Quality The experiences of the Office for National Statistics (ONS) Presented by Emma.
United Nations Economic Commission for Europe Statistical Division Mapping Data Production Processes to the GSBPM Steven Vale UNECE
United Nations Economic Commission for Europe Statistical Division The Common Statistical Production Architecture: An Important New Tool for Process Standardisation.
Editing of linked micro files for statistics and research.
United Nations Economic Commission for Europe Statistical Division High-Level Group Achievements and Plans Steven Vale UNECE
Statistics New Zealand's Move to Process-oriented Statistics Production Julia Gretton and Tracey Savage IAOS Conference Shanghai, China, October 2008.
Pilot Census in Poland Some Quality Aspects Geneva, 7-9 July 2010 Janusz Dygaszewicz Central Statistical Office POLAND.
Developing and applying business process models in practice Statistics Norway Jenny Linnerud and Anne Gro Hustoft.
The Application for Statistical Processing at SURS Andreja Smukavec, SURS Rudi Seljak, SURS UNECE Statistical Data Confidentiality Work Session Helsinki,
Michelle Simard, Thérèse Lalor Statistics Canada CSPA Project Manager UNECE Work Session on Statistical Data Confidentiality Helsinki, October 2015 Confidentialized.
1 Towards a common statistical enterprise architecture Ongoing process reengineering at Statistics Sweden Service Oriented Architecture – SOA Sharing of.
Open GSBPM compliant data processing system in Statistics Estonia (VAIS) 2011 MSIS Conference Maia Ennok Head of Data Warehouse Service Data Processing.
© Statistisches Bundesamt, I/A Case study Federal Statistical Office Germany (Destatis) Joint UNECE/ EUROSTAT/ OECD Work Session on Statistical Metadata.
United Nations Oslo City Group on Energy Statistics OG7, Helsinki, Finland October 2012 ESCM Chapter 8: Data Quality and Meta Data 1.
Recent development in the metadata area at Statistics Sweden Klas Blomqvist
Generic Statistical Information Model (GSIM) Jenny Linnerud
Role of the IMDB in the CBA and IM Strategy Presented to Information Management Committee Standards Division June
Державна служба статистики України Statistical confidentiality assurance framework in State Statistics Service of Ukraine Anton Tovchenko head of mathematical.
Census quality evaluation: Considerations from an international perspective Bernard Baffour and Paolo Valente UNECE Statistical Division Joint UNECE/Eurostat.
5.8 Finalise data files 5.6 Calculate weights Price index for legal services Quality Management / Metadata Management Specify Needs Design Build CollectProcessAnalyse.
The business process models and quality issues at the Hungarian Central Statistical Office (HCSO) Mr. Csaba Ábry, HCSO, Methodological Department Geneva,
What is metadata? Anne Gro Hustoft, Statistics Norway
United Nations Economic Commission for Europe Statistical Division GSBPM and Other Standards Steven Vale UNECE
Introduction to Quality Management Frameworks Eurostat, Luxembourg, January 2016 Process quality Dr Johanna Laiho-Kauranne.
1 Process Orientation at statistics Sweden – Implementation and Initial Experiences IAOS Conference, October 15, 2008 Mats Bergdahl, Deputy Director Process.
How official statistics is produced Alan Vask
Developments in dissemination over the time Anne Nuka Head of Marketing and Dissemination Division
Introduction to Statistics Estonia Study visit of the State Statistical Service of Ukraine on Dissemination of Statistical Information and related themes.
MANAGEMENT OF STATISTICAL PRODUCTION PROCESS METADATA IN ISIS
Standardized and modernized data editing in Statistics Denmark
Quality assurance in official statistics
Generic Statistical Business Process Model (GSBPM)
Tomaž Špeh, Rudi Seljak Statistical Office of the Republic of Slovenia
Validation at Statistics Sweden
Using the GSBPM in Practice
Mapping Data Production Processes to the GSBPM
Metadata used throughout statistics production
MEASURING PROGRESS – BUILDING STATISTICAL CAPACITY
The future of Statistical Production
Introduction to the Common Statistical Production Architecture Alice Kovarikova High-Level Workshop on Modernization of Official Statistics, Nizhny Novgorod,
Lecture 1: Definition of quality in statistics
Presentation transcript:

Role of the information technology in official statistics Juraj RIECAN Director, UN-ESCWA Statistics Division

Collect Process Disseminate Analyse Specify needs Design Build Archive Evaluate

Collect Process Disseminate Analyse Specify needs Design Build Archive Evaluate From Information needs to the business case

Collect Process Disseminate Analyse Specify needs Design Build Archive Evaluate Formalize (data model) Structure (outputs, variables, questionnaires) Organize (workflow) Blaise (Netherlands) Survey Processor (Croatia) Quest.Designer (Australia)

Collect Process Disseminate Analyse Specify needs Design Build Archive Evaluate Reusability of components Testing Blaise (Netherlands) Quest Developer (Australia) SIV (Sweden) Quat (Netherlands) VVIS (Estonia)

Collect Process Disseminate Analyse Specify needs Design Build Archive Evaluate Basic checks Improve quality Avoid non-response Methods Questionnaires OCR On-line Remote sensing, etc. EHE Sapling (Norway) GSS (Canada) MAUSS-R (Italy) Blaise (Netherlands) SIV (Sweden) Quat (Netherlands) VVIS (Estonia)

Collect Process Disseminate Analyse Specify needs Design Build Archive Evaluate Integrate Medatata Coding Classifying Calculations, aggregation,... Editing & imputations Avoid systematic errors Limit imputations G-link, C-code, CanCEIS (Canada) Price Index Processor (UNECE) Banff, CanCEIS (Canada) Price System (Australia) DIGROS (Australia) Re-GENESEES (Australia) etc.

Collect Process Disseminate Analyse Specify needs Design Build Archive Evaluate Quality control Disclosure control Metadata Demetra+ (Eurostat) G-Series, G-Tab (Canada) PX-Edit (Sweden) Stat Control Mu-Argus, Tau-Argus (Netherlands) EVER (Italy) Confid 2 (Canada) Re-GENESEES (Italy) etc.

Collect Process Disseminate Analyse Specify needs Design Build Archive Evaluate Communication Marketing Management of releases Management of queries (Call Centre) PC-AXIS (Sweden) EISIS (ESCWA) DevInfo (UNICEF) Business Tool Box (Australia) Mapresso (Switzerland) StatFlow, StatWeb (NL) Jaxi (Spain) REEM (New Zealand) etc.

Collect Process Disseminate Analyse Specify needs Design Build Archive Evaluate Retention rules Data with metadata Confidentiality protection

Collect Process Disseminate Analyse Specify needs Design Build Archive Evaluate Lesson learned to the new survey instance

Way forward – exchange of experience Statistical information systems & IT tools Statistical metadata & metainformation systems Editing & imputation, quality control Administrative registers and records Confidentiality protection & disclosure control GIS and the cartographic representation of data Relationship with users

Thank you