Statistics New Zealand Classification Management System Andrew Hancock Statistics New Zealand Prepared for 2013 Meeting of the UN Expert Group on International.

Slides:



Advertisements
Similar presentations
SDMX in the Vietnam Ministry of Planning and Investment - A Data Model to Manage Metadata and Data ETV2 Component 5 – Facilitating better decision-making.
Advertisements

CESSDA Question Databank Tender, results and future Maarten Hoogerwerf, CESSDA expert seminar 2009.
EXtensible Catalog David Lindahl University of Rochester.
Prepared by Andrew Hancock Classification and Standards Classifications and Standards in Statistics New Zealand.
SDMX Data Structure Definition for BPM6 and EBOPS Working Party on International Trade in Goods and Trade in Services Statistics Paris, France November.
Data Model driven applications using CASE Data Models as the nucleus of software development in a Computer Aided Software Engineering environment.
Implementation of GSBPM, DDI and SDMX reference metadata at Statistics Denmark UNECE workshop 5-7 May 2015 Mogens Grosen Nielsen
Implementing a New Classification Management System at Statistics New Zealand Andrew Hancock, Statistics New Zealand Arofan Gregory, Metadata Technology.
Requirements Specification
United Nations Economic Commission for Europe Statistical Division Standards-based Modernisation An update on the work of the High-level Group for the.
Neuchâtel Terminology Model: Classification database object types and their attributes Revision 2013 and its relation to GSIM Prepared by Debra Mair, Tim.
Federal Department of Home Affairs FDHA Federal Statistical Office FSO Use of SDMX in stocking, disseminating and managing the Swiss Classification on.
Background Data validation, a critical issue for the E.S.S.
MDC Open Information Model West Virginia University CS486 Presentation Feb 18, 2000 Lijian Liu (OIM:
Future of MDR - ISO/IEC Metadata Registries (MDR) Larry Fitzwater, SC 32 WG 2 Convener Computer Scientist U.S. Environmental Protection Agency May.
ESCWA SDMX Workshop Session: Role in the Statistical Lifecycle and Relationship with DDI (Data Documentation Initiative)
CES 2012 Paris 1 High Level Group for Strategic Developments in Business Architecture in Statistics Strategy Gosse van der Veen, Statistics Netherlands.
WP.5 - DDI-SDMX Integration
Katanosh Morovat.   This concept is a formal approach for identifying the rules that encapsulate the structure, constraint, and control of the operation.
WP.5 - DDI-SDMX Integration E.S.S. cross-cutting project on Information Models and Standards Marco Pellegrino, Denis Grofils Eurostat METIS Work Session6-8.
Distributed Access to Data Resources: Metadata Experiences from the NESSTAR Project Simon Musgrave Data Archive, University of Essex.
Statistics New Zealand Classification Management System Andrew Hancock Statistics New Zealand Prepared for 2013 Meeting of the UN Expert Group on International.
Generic Statistical Information Model (GSIM) Thérèse Lalor and Steven Vale United Nations Economic Commission for Europe (UNECE)
Metadata management and statistical business process at Statistics Estonia Work Session on Statistical Metadata (Geneva, Switzerland 8-10 May 2013) Kaja.
Using ISO/IEC to Help with Metadata Management Problems Graeme Oakley Australian Bureau of Statistics.
M ETADATA OF NATIONAL STATISTICAL OFFICES B ELARUS, R USSIA AND K AZAKHSTAN Miroslava Brchanova, Moscow, October, 2014.
SDMX and DDI Working Together Technical Workshop 5-7 June 2013
4 April 2007METIS Work Session1 Metadata Standards and Their Support of Data Management Needs Daniel W. Gillman Bureau of Labor Statistics Paul Johanis.
Introduction to MDA (Model Driven Architecture) CYT.
Restricted Daejeon, April An SDMX based unified data catalogue (UDC) MSIS – Meeting on the Management of Statistical Information Systems 1.
SDMX Standards Relationships to ISO/IEC 11179/CMR Arofan Gregory Chris Nelson Joint UNECE/Eurostat/OECD workshop on statistical metadata (METIS): Geneva.
Metadata and Geographical Information Systems Adrian Moss KINDS project, Manchester Metropolitan University, UK
United Nations Economic Commission for Europe Statistical Division Part B of CMF: Metadata, Standards Concepts and Models Jana Meliskova UNECE Work Session.
Metadata Models in Survey Computing Some Results of MetaNet – WG 2 METIS 2004, Geneva W. Grossmann University of Vienna.
BAIGORRI Antonio – Eurostat, Unit B1: Quality; Classifications Q2010 EUROPEAN CONFERENCE ON QUALITY IN STATISTICS Terminology relating to the Implementation.
11 CORE Architecture Mauro Bruno, Monica Scannapieco, Carlo Vaccari, Giulia Vaste Antonino Virgillito, Diego Zardetto (Istat)
1 Schema Registries Steven Hughes, Lou Reich, Dan Crichton NASA 21 October 2015.
InSPIRe Australian initiatives for standardising statistical processes and metadata Simon Wall Australian Bureau of Statistics December
LoG: A Methodology for Metadata Registry-based Management of Scientific Data July 5, 2002 Doo-Kwon Baik
Eurostat SDMX and Global Standardisation Marco Pellegrino Eurostat, Statistical Office of the European Union Bangkok,
SDMX IT Tools Introduction
Ontology Resource Discussion
2.An overview of SDMX (What is SDMX? Part I) 1 Edward Cook Eurostat Unit B5: “Central data and metadata services” SDMX Basics course, October 2015.
ABS Issues for DDI Futures Bryan Fitzpatrick October 2012.
MetaPlus Klas Blomqvist Statistics Sweden Research and Development – Central Methods
The Role of International Standards for National Statistical Offices Andrew Hancock Statistics New Zealand Prepared for 2013 Meeting of the UN Expert Group.
GSIM, DDI & Standards- based Modernisation of Official Statistics Workshop – DDI Lifecycle: Looking Forward October 2012.
United Nations Economic Commission for Europe Statistical Division Standards-based Modernization of Official Statistics Steven Vale UNECE
United Nations Economic Commission for Europe Statistical Division Enhanced Generic Models to Support the Standardisation of Statistical Production Steven.
Statistical Data and Metadata Exchange SDMX Metadata Common Vocabulary Status of project and issues ( ) Marco Pellegrino Eurostat
1 Chapter 2 Database Environment Pearson Education © 2009.
Managing data to maximise value Supporting flexible and efficient production of official statistics Adam Brown December 2012.
United Nations Economic Commission for Europe Statistical Division GSBPM and Other Standards Steven Vale UNECE
Enterprise Architectures. Core Concepts Key Learning Points: This chapter will help you to answer the following questions: What are the ADM phase names.
1 Geospatial Standards for Canada Proposed blueprint for Jean Brodeur and Cindy Mitchell.
United Nations Economic Commission for Europe Statistical Division CSPA: The Future of Statistical Production Steven Vale UNECE
1 The XMSF Profile Overlay to the FEDEP Dr. Katherine L. Morse, SAIC Mr. Robert Lutz, JHU APL
Process Models at Statistics New Zealand METIS Workshop on the Statistical Business Process and Case Studies 11th March 2009 Craig Mitchell Standards,
Data Management: Documentation & Metadata
Metadata Infrastructure and Standardisation in New Zealand
Introduction to Alma Network Zone Topology
2. An overview of SDMX (What is SDMX? Part I)
2. An overview of SDMX (What is SDMX? Part I)
The Generic Statistical Information Model
Chapter 2 Database Environment Pearson Education © 2014.
Presentation to SISAI Luxembourg, 12 June 2012
Part B of CMF: Metadata, Standards Concepts and Models Jana Meliskova
Generic Statistical Information Model (GSIM)
Introducing the Data Documentation Initiative
Work Session on Statistical Metadata (Geneva, Switzerland May 2013)
Presentation transcript:

Statistics New Zealand Classification Management System Andrew Hancock Statistics New Zealand Prepared for 2013 Meeting of the UN Expert Group on International Statistical Classifications

Contents Overview History/Background of existing CARS System Reasons for Change Vision CMS Overview 2013 UN Expert Group Meeting

Overview Statistics New Zealand currently undergoing 10 year programme of change (Statistics 2020) Programme will: mitigate legacy computer systems transform the way statistics are delivered bring about efficiencies to systems Provides opportunity to rethink the way classifications are developed, maintained and disseminated 2013 UN Expert Group Meeting

History/Background of CARS Classification and Related Standards (CARS) created in 1996 Is a respository of all classifications, concordances and coding indexes used in Statistics NZ Currently holds 4625 classifications, 5627 versions and 2218 concordances Provides common ways to update, access and use standard classifications data 2013 UN Expert Group Meeting

Reasons for change The rationale for moving to a new classification management system is due to: The need to mitigate a legacy system The need to move from a classification repository system to a full classification management system The need to reduce proliferation of like classifications and versions A desire to introduce a new approach to the management, storage and dissemination of classification related attributes and entities UN Expert Group Meeting

Vision Move to a concepts based system Allow greater relationships between attributes Automated authorisation and dissemination processes Greater search and discovery Enable greater reuse and reduce duplication ie store once and use in multiple locations UN Expert Group Meeting

CMS Overview Proposed CMS model relates to other standards and models eg ISO/IEC 11179, Neuchatel, DDI, SDMX Being designed primarily to support classification management within a single organisation but planned for wider use across Official Statistical System Joint venture between Statistics New Zealand and Metadata Technology North America (MTNA) 2013 UN Expert Group Meeting

CMS Components Core – This portion of the model focuses on identification, versioning, and describing contexts within which classifications are used. Classification – This package gives a general model for classifications in their generic sense, and then gives more specific extensions for formal statistical classifications and derived classifications. Coding – This package describes the relationships needed for integration with the SNZ coding system, and hold constructs such as synonyms, and synonym sets. Conceptual – This is the place where the concepts and their uses are modelled, along with the model for categories (that is, units of meaning). Concordances – This package describes all the relationships which can exist in concordances UN Expert Group Meeting

Conclusions A new classification management system, and not merely a repository The model is designed to be flexible and extensible Builds on many of the best features of other models and standards Associates concepts and other types of relationships between classifications 2013 UN Expert Group Meeting

Statistics New Zealand Classification Management System Andrew Hancock Statistics New Zealand Prepared for 2013 Meeting of the UN Expert Group on International Statistical Classifications