Importance of regional cooperation in development of metadata based on IST Gordana Radojevic.

Slides:



Advertisements
Similar presentations
Implementation of the CoP in SLOVENIA Cooperation with data users Genovefa RUŽIĆ Deputy Director-General.
Advertisements

ESCWA SDMX Workshop Session: SDMX and Data. Session Objectives At the end of this session you will: –Know the SDMX model of a data structure definition.
EXERCISE: IDENTIFY CONCEPTS SDMX Training BANK INDONESIA SEPTEMBER 2015 YOGYAKARTA, INDONESIA.
Coordination mechanisms in the area of statistics Henri Laurencin UNCTAD, co-chairman of the Committee for Coordination of Statistical Activities World.
TURKISH STATISTICAL INSTITUTE INFORMATION TECHNOLOGIES DEPARTMENT 1 TURKISH STATISTICAL INSTITUTE (TurkStat) TURKISH STATISTICAL INSTITUTE (TurkStat)
Eurostat Expression language (EL) in Eurostat SDMX - TWG Luxembourg, 5 Jun 2013 Adam Wroński.
National design, fieldwork and data harmonization for Labour Force Survey Irena Svetin Statistical Office of the Republic of Slovenia September 2014.
Overview of regional, urban and rural statistics Teodora Brandmuller Eurostat Unit E4 Regional indicators and geographical information Working Party on.
ADDIS ABEBA, ETHIOPIA 5 – 7 OCTOBER Country Presentation MAURITIUS BY E.LUKSHMUDU SENIOR STATISTICAL OFFICER STATISTICS MAURITIUS.
WEB-SUPPORTED STATISTICAL DISSEMINATION PROCESS SERVING STATISTICAL DATA USERS Matjaž Jug, M.Sc.
Role of Metadata in dissemination of census data Regional Seminar on dissemination and spatial analysis of census data, Nairobi, September, 2010.
Session topic (i) – Editing Administrative and Census data Discussants Orietta Luzi and Heather Wagstaff UNECE Worksession on Statistical Data Editing.
Carlo Vaccari – CORA final meeting1 CORA ESSNet final results.
Navigating Your Way Through the EFT, Nesstar and Beyond 20/20 (WDS)
Best GSBPM practices, Israel Central Bureau of Statistics Battia ATTALI, Elena DROR MEDSTAT IV, Training course on “Generic Statistical Business Process.
MANAGEMENT OF STATISTICAL PRODUCTION PROCESS METADATA IN ISIS
SDMX for SDG Indicators
Statistical Business Register
Multi-mode data collection
Agricultural census in Montenegro – methods of data collection
Streamlining the Statistical Production in TurkStat Metadata Studies in TURKSTAT High Level Seminar for Eastern Europe, Caucasus and Central Asia Countries.
Results of the Regional metadata Collection
State of Palestine Generic Statistical Business Process Model )GSBPM) - Palestine Case August 2017.
UNECE Work Session on Gender Statistics, Belgrade,
Dr. Olivier Thunus UNECE Task Force Vice-Chair
United Nations Statistics Division DESA, New York
WORKSHOP GROUP ON QUALITY IN STATISTICS
Exchanging Reference Metadata using SDMX
The usage of web interviewing in Lithuanian Labour Force Survey
SDMX Information Model
Statistics Sweden Sida funded projects in the Western Balkans
SEE Jobs Gateway Database 2018
Cooperation on Dissemination within the ESS
Documentation of statistics
SDMX: A brief introduction
Innovative sources and tools for living conditions surveys
LAMAS Working Group June 2013
13th Workshop on Labour Force Survey Methodology
Ten years of centralised data collection
2. An overview of SDMX (What is SDMX? Part I)
Working Party on Regional Statistics 1-2 October 2012
Software Systems for Survey and Census
Standardisation of Social Variables
2. An overview of SDMX (What is SDMX? Part I)
Data validation in Statistical Office of the Republic of Serbia
Quality assessment ESTP Training Course “Quality Management and survey Quality Measurement” Rome, 24 – 27 September 2013 Giorgia Simeoni Researcher Unit.
Working Party on Regional Statistics 1-2 October 2012
The Generic Statistical Business Process Model
Palestinian Central Bureau of Statistics
Results of the user and partner survey on Regional Statistics
The mandate to develop crime statistics
Statistics in the Enlargement context
Experience from Statistical Office of Montenegro – MONSTAT
Education and Training Statistics Work programme 2004
Task Force Household Budget Survey Innovative tools and sources
Urban Statistics – Methodological work
Labour Market Area Simulations
The role of metadata in census data dissemination
Hanna Gembarzewska, Monika Grabani
Outcome Opportunity to meet participants from other countries
Setting up a census hub for the Western Balkans
Business architecture
Lao in Census Quality Assurance
Mode effects in mixed-mode data collection WP2
H.I. Reuter – DG EUROSTAT - E4 - GISCO
PRESENTATION OF MONTENEGRO
Work Session on Statistical Metadata (Geneva, Switzerland May 2013)
Lecture Slides Essentials of Statistics 5th Edition
Introduction to reference metadata and quality reporting
Presentation transcript:

Importance of regional cooperation in development of metadata based on IST Gordana Radojevic

Misinterpretations by statistical users Montenegro Fiscal Council of Serbia (labour market statistics)

Definition of metadata from statistical point of view “Data that define and describe other data” Metadata can be defined as information that is needed to be able to use and interpret statistics. Metadata describe data by giving definitions of populations, objects, variables, methodology, and quality (EUROSTAT)  “Data about statistical data, and comprise data and other documentation that describe objects in a formalized way“ (UNECE, 2009) Metadata describe statistical data and - to some extent - processes and tools involved in the production and usage of statistical data (UNECE, -’Guidelines for the Modelling of Statistical Data and Metadata’, 1995).

Users of statistical metadata system

Time series data representation Cross-sectional data representation STATISTICAL DATA and METADATA FOR END USERS Statistical Data (Figures) Time series data representation Cross-sectional data representation Statistical Metadata (Identifiers, Descriptors) Structural metadata Statistical Metadata (Methodology, Quality) Reference metadata Source: Eurostat 5

Metadata based on IST which is developed by SORS Operational Metadata IST General metadata Reference Metadata

Metadata for end users

Implementation of IST as a regional project 1.One system on server; 2. More efficient execution of the process; 3. Shorter and simpler application time; One programmer of more statistical survey Modernization of data collection CAPI, CATI and CAWI method Management of IPA projects

Thank you! Statistical Office of Montenegro Website: www.monstat.org Email: contact@monstat.org