GETTING THE FACTS RIGHT A guide to presenting metadata with examples on Millennium Development.

Slides:



Advertisements
Similar presentations
Guide to statistics in European Commission Development Co-operation
Advertisements

Statistics 2020 and Platform Approach Te Käpehu Whetü May 2011.
United Nations Economic Commission for Europe Statistical Division Getting the Facts Right: Metadata for MDG and other indicators UNECE Tbilisi, Georgia,
Statistical literacy from the ground up ESDS International Annual Conference London 29 November 2010 Eric Swanson, World Bank.
Internal documentation and user documentation
Mogens Grosen Nielsen Statistics Denmark
Implementation of GSBPM, DDI and SDMX reference metadata at Statistics Denmark UNECE workshop 5-7 May 2015 Mogens Grosen Nielsen
LEVERAGING THE ENTERPRISE INFORMATION ENVIRONMENT Louise Edmonds Senior Manager Information Management ACT Health.
Recent international developments in Energy Statistics United Nations Statistics Division International Workshop on Energy Statistics September 2012,
Producing and managing metadata Workshop on Writing Metadata for Development Indicators Lusaka, Zambia 30 July – 1 August 2012 Writing Metadata for Development.
United Nations Economic Commission for Europe Statistical Division Applying the GSBPM to Business Register Management Steven Vale UNECE
Neuchâtel Terminology Model: Classification database object types and their attributes Revision 2013 and its relation to GSIM Prepared by Debra Mair, Tim.
ISO as the metadata standard for Statistics South Africa
Millennium Development Goals: progress and capacity building Jessica Gardner UNECE Statistical Division Expert Group Meeting on MDG Indicators in Central.
Summary of workshop Workshop on Writing Metadata for Development Indicators Lusaka, Zambia 30 July – 1 August 2012.
Case Studies: Statistics Canada (WP 11) Alice Born Statistics UNECE Workshop on Statistical Metadata.
Data Reconciliation Issues Neda Jafar Workshop on MDG Data Reconciliation: Employment Indicators July, Beirut Workshop on MDG Data.
3 rd Annual European DDI Users Group Meeting, 5-6 December 2011 The Ongoing Work for a Technical Vocabulary of DDI and SDMX Terms Marco Pellegrino Eurostat.
Utilizing the School Restructuring Resources Lauren Morando Rhim & Bryan C. Hassel Public Impact For Center on Innovation and Improvement.
Terminology and Standards Dan Gillman US Bureau of Labor Statistics.
FSPS II objectives and The Danida approach to sustainable development MESMARD meeting Mike Akester Planning & Programme Adviser MARD.
United Nations Economic Commission for Europe Statistical Division Getting the Facts Right: Metadata for MDG and other indicators UNECE Baku, Azerbaijan,
United Nations Economic Commission for Europe Statistical Division Part B of CMF: Metadata, Standards Concepts and Models Jana Meliskova UNECE Work Session.
Current and Future Applications of the Generic Statistical Business Process Model at Statistics Canada Laurie Reedman and Claude Julien May 5, 2010.
Workshop on MDG Monitoring Kampala, Uganda, 5-8 May 2008 Reconciling international and national sources for effective global monitoring Francesca Perucci.
THE UNITED REPUBLIC OF TANZANIA Millennium Development Goals (MDGs) Monitoring Workshop Kampala Uganda, 5 th - 8 th May 2008 COORDINATION OF NATIONAL STATISTICAL.
Statistical Metadata System in the State Statistical Committee Baku, Azerbaijan, 2013 State Statistical Committee of the Republic of Azerbaijan 1.
United Nations Economic Commission for Europe Statistical Division Introduction to Steven Vale UNECE
United Nations Economic Commission for Europe Statistical Division UNECE and MDG-Monitoring: Database and regional indicators UNECE.
Monitoring Human Development OECD EXPERT GROUP ON SDMX GENEVA MAY 2007.
Modernisation Activities DIME-ITDG – February 2015 Item 7.
© Statistisches Bundesamt, I/A Case study Federal Statistical Office Germany (Destatis) Joint UNECE/ EUROSTAT/ OECD Work Session on Statistical Metadata.
United Nations Economic Commission for Europe Statistical Division Standards-based Modernization of Official Statistics Steven Vale UNECE
General Recommendations on STS Carsten Boldsen Hansen Economic Statistics Section, UNECE UNECE Workshop on Short-Term Statistics (STS) and Seasonal Adjustment.
OECD Expert Group on Statistical Data and Metadata Exchange (Geneva, May 2007) Update on technical standards, guidelines and tools Metadata Common.
METIS - UNECE Statistical Division Slide 14-6 July 2007 Part C of the Common Metadata Framework (CMF) Metadata and the Statistical Cycle.
Statistical Data and Metadata Exchange SDMX Metadata Common Vocabulary Status of project and issues ( ) Marco Pellegrino Eurostat
STATISTICAL METADATA ON THE INTERNET REVISITED Hans Viggo Sæbø, Statistics Norway
Net Enrolment Ratio in Primary Education. (Source: UNITED NATIONS Handbook of Indicators for Monitoring the Millennium Development Goals, 2003) DEFINITION.
Describe a layered S-DWH Technology Architecture Information Systems Architecture Business Architecture.
United Nations Economic Commission for Europe Statistical Division GSBPM and Other Standards Steven Vale UNECE
Eurostat Standardisation DIME-ITDG 2015 Item 6 DIME-ITDG February
PRIME MINISTRY REPUBLIC OF TURKEY TURKISH STATISTICAL INSTITUTE TurkStat Social Statistics Department Population and Demography Group REPORTING.
Workshop on MDG monitoring January Bangkok, Thailand Christian Stoff Statistics Division, ESCAP National-level coordination in MDG monitoring.
13 November, 2014 Seminar on Quality Reports QUALITY REPORTS EXPERIENCE OF STATISTICS LITHUANIA Nadiežda Alejeva Head, Price Statistics.
National Bureau of Statistics of the Republic of Moldova 1 High Level Seminar for Eastern Europe, Caucasus and Central Asia Countries (EECCA) on 'Quality.
Life circumstances and service delivery Community survey Finalise pilot survey (June 2006) List of dwellings completed (September 2006) Processes, systems.
United Nations Economic Commission for Europe Statistical Division GSBPM in Documentation, Metadata and Quality Management Steven Vale UNECE
United Nations Statistics Division Developing a short-term statistics implementation programme Expert Group Meeting on Short-Term Economic Statistics in.
ROMA 23 GIUGNO 2016 MODERNISATION LAB - FOCUSSING ON MODERNISATION STRATEGIES IN EUROPE: SOME NSIS’ EXPERIENCES Insert the presentation title Modernisation.
statistiska_centralbyran_scbwww.linkedin.com/company/scb Panel Session A: Integrating Location in.
Data Integration in Official Statistics 2017 Project Proposal
Artur Andrysiak Economic Statistics Section, UNECE
Structural and reference metadata in the European Statistical System
Modernization Maturity Model and Roadmap
COVERAGE AND DISCREPANCIES EDUCATION INDICATORS FOR MDGS
United Nations Statistics Division DESA, New York
Regional Workshop on Short-term Economic Indicators and Service Statistics September 2017 Chiba, Japan Alick Nyasulu SIAP.
United Nations Statistics Division DESA, New York
Generic Statistical Business Process Model (GSBPM)
Metadata in the modernization of statistical production at Statistics Canada Carmen Greenough June 2, 2014.
The Generic Statistical Information Model
UNECE Regional MDG Database
Alice Born, Statistics Canada
Mapping Data Production Processes to the GSBPM
Urban Statistics – Methodological work
Presentation to SISAI Luxembourg, 12 June 2012
Metadata on quality of statistical information
Generic Statistical Information Model (GSIM)
Australian and New Zealand Metadata Working Group
Presentation transcript:

GETTING THE FACTS RIGHT A guide to presenting metadata with examples on Millennium Development

What are metadata?  data that defines or describes other data  “information that is needed to be able to use and interpret statistics” (Eurostat)

With metadata Without metadata

Source: United Nations Statistics Division (2003). Indicators for Monitoring the Millennium Development Goals.

UNDP Guide to Measuring Human Development “… a reference tool that provides guidance on statistical principles…”

Metadata: particularly important for MDG-related reports and data

Metadata management: a strategic priority for statistical systems

Statistical metadata Structural metadata Reference metadata ConceptsMethodsQuality Types of metadata

Uses of statistical metadata  Data discovery  Define and describe data resources  Drive statistical production  Capture information about sources  Integral to the IT environment  Describe quality of outputs Source: Graeme Oakley, Australian Bureau of Statistics

International standards and guides  Excellent resources already exist  UNECE Working Group on Statistical Metadata (METIS)  Little guidance on metadata for development indicators

Common Metadata Framework  Evolving online reference  Statistical metadata portal  Developed by experts  Maintained by UNECE 

Handbook on Data and Metadata Reporting  Comprehensive guide to publishing metadata  Available in English and French 

Generic Statistical Business Process Model (GSBPM) Generic Statistical Information Model (GSIM)

A guide for managers  Principles of good management  Explains Statistical Metadata in a Corporate Context  Central systems and tools  Vocabularies  Classification management  Question databases

Benefits of managing metadata  Everyone uses up-to-date classifications and definitions  Gain resources  Higher morale and productivity  Capitalising on lessons learned  Easier for data users to understand  Increased trust in official statistics Producing statistics Using statistics Improving statistics

Interpret data being presented Understand comparability Detailed metadata General and related information Metadata for MDG indicators Specific and succinct General and detailed

MandatoryConditionalOptional Metadata for MDG indicators Specific and succinct General and detailed

UNECE Recommendations MandatoryConditionalOptional 1. Title describing data being presented 2. Data provider 3. Statistical concepts and definitions 4. Comparability (geographical/time) 5. Source data 6. Symbols or abbreviations 7. Accuracy 8. Contact information 9. References / Relevant links

Mandatory metadata 1. Title describing data being presented 2. Data provider 3. Statistical concepts and definitions

Conditional metadata 4. Comparability (geographical and over time) 5. Source data 6. Symbols or abbreviations Total employment by status in employment (thousands) Source: LABORSTA (laborsta.ilo.org)laborsta.ilo.org

Optional metadata 7. Accuracy 8. Contact information 9. References / relevant links

Use as a checklist Mandatory1. Title describing data being presented 2. Data provider 3. Statistical concepts and definitions Conditional4. Comparability (geographical / over time) 5. Source data 6. Symbols or abbreviations Optional7. Accuracy 8. Contact information 9. References / Relevant links

Examples to be used in group work  National Poverty line  Net enrolment in primary and secondary  Infant and child mortality rate  Proportion using improved water sources  Internet users per 1000 population