Environment Change Information Request Change Definition has subtype of Business Case based upon ConceptPopulation Gives context for Statistical Program.

Slides:



Advertisements
Similar presentations
Metadata to Support the Survey Life Cycle Alice Born, Statistics Canada Joint UNECE/Eurostat/OECD Work Session on Statistical Metadata (METIS) Geneva,
Advertisements

Database Development Cycle Track 3: Managing Information Using Database.
Beginning the Research Design
DDI 3.0 Conceptual Model Chris Nelson. Why Have a Model Non syntactic representation of the business domain Useful for identifying common constructs –Identification,
Analysis Concepts and Principles
1 Business Exchange Structures Concepts.
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.
Arun Srivastava. Types of Non-sampling Errors Specification errors, Coverage errors, Measurement or response errors, Non-response errors and Processing.
UK Data Warehouse Work 23 rd May 2012 Paul Tutton, Sarah Ravenhill.
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
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.
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.
Survey Data Management and Combined use of DDI and SDMX DDI and SDMX use case Labor Force Statistics.
Generic Statistical Information Model (GSIM) Thérèse Lalor and Steven Vale United Nations Economic Commission for Europe (UNECE)
Using ISO/IEC to Help with Metadata Management Problems Graeme Oakley Australian Bureau of Statistics.
ITEC224 Database Programming
M ETADATA OF NATIONAL STATISTICAL OFFICES B ELARUS, R USSIA AND K AZAKHSTAN Miroslava Brchanova, Moscow, October, 2014.
Generic Statistical Information Model (GSIM) Thérèse Lalor and Steven Vale United Nations Economic Commission for Europe (UNECE)
Software Metrics - Data Collection What is good data? Are they correct? Are they accurate? Are they appropriately precise? Are they consist? Are they associated.
Representing variables according to the ISO/IEC standard.
The Adoption of METIS GSBPM in Statistics Denmark.
SDMX Standards Relationships to ISO/IEC 11179/CMR Arofan Gregory Chris Nelson Joint UNECE/Eurostat/OECD workshop on statistical metadata (METIS): Geneva.
Eurostat Overall design. Presented by Eva Elvers Statistics Sweden.
GSIM implementation in the Istat Metadata System: focus on structural metadata and on the joint use of GSIM and SDMX Mauro Scanu
Metadata Models in Survey Computing Some Results of MetaNet – WG 2 METIS 2004, Geneva W. Grossmann University of Vienna.
Statistics Portugal/ Metadata Unit Monica Isfan « Joint UNECE/ EUROSTAT/ OECD Work Session on Statistical Metadata.
Current and Future Applications of the Generic Statistical Business Process Model at Statistics Canada Laurie Reedman and Claude Julien May 5, 2010.
Environment Change Information Request Change Definition has subtype of Business Case based upon ConceptPopulation Gives context for Statistical Program.
United Nations Economic Commission for Europe Statistical Division Mapping Data Production Processes to the GSBPM Steven Vale UNECE
CBS-SSB STATISTICS NETHERLANDS – STATISTICS NORWAY Work Session on Statistical Data Editing Oslo, Norway, September 2012 Jeroen Pannekoek and Li-Chun.
Pilot Census in Poland Some Quality Aspects Geneva, 7-9 July 2010 Janusz Dygaszewicz Central Statistical Office POLAND.
ILO Department of Statistics Edgardo Greising
Eurostat 4. SDMX: Main objects for data exchange 1 Raynald Palmieri Eurostat Unit B5: “Central data and metadata services” SDMX Basics course, October.
United Nations Economic Commission for Europe Statistical Division Standards-based Modernization of Official Statistics Steven Vale UNECE
5.8 Finalise data files 5.6 Calculate weights Price index for legal services Quality Management / Metadata Management Specify Needs Design Build CollectProcessAnalyse.
Elaborating on the Business Architecture of SN Robbert Renssen Statistics Netherlands Standard Process Steps.
Eurostat November 2015 Eurostat Unit B3 – IT and standards for data and metadata exchange Jean-Francois LEBLANC Christian SEBASTIAN SDMX IT Tools SDMX.
Chapter Two Copyright © 2006 McGraw-Hill/Irwin The Marketing Research Process.
How official statistics is produced Alan Vask
Design Evaluation Overview Introduction Model for Interface Design Evaluation Types of Evaluation –Conceptual Design –Usability –Learning Outcome.
Statistical process model Workshop in Ukraine October 2015 Karin Blix Quality coordinator
1 DATA Act Information Model Schema (DAIMS) Version 1.0 Briefing June 2016.
Implementation of Quality indicators for administrative data
DDI and GSIM – Impacts, Context, and Future Possibilities
The Generic Statistical Information Model (GSIM) and the Sistema Unitario dei Metadati (SUM): state of application of the standard Cecilia Casagrande –
Metadata Standards for Statistical Classifications
Survey phases, survey errors and quality control system
Survey phases, survey errors and quality control system
Logical information model LIM Geneva june
GSIM The Generic Statistical Information Model
2. An overview of SDMX (What is SDMX? Part I)
Towards common metadata using GSIM and DDI 3
Database Development Cycle
SDMX Information Model: An Introduction
Jeroen Pannekoek, Sander Scholtus and Mark van der Loo
Mapping Data Production Processes to the GSBPM
Metadata used throughout statistics production
Presentation to SISAI Luxembourg, 12 June 2012
The role of metadata in census data dissemination
Chapter 10 Content Analysis
DDI and GSIM – Impacts, Context, and Future Possibilities
CSPA Templates for sharing services
CSPA Templates for sharing services
Hands-on GSIM Mauro Scanu ISTAT
SDMX training Francesco Rizzo June 2018
GSBPM Giorgia Simeoni, Istat,
GSIM overview Mauro Scanu ISTAT
Presentation transcript:

Environment Change Information Request Change Definition has subtype of Business Case based upon ConceptPopulation Gives context for Statistical Program Design initiates Statistical Program initiates Gives context for Statistical Need has subtype of specifies

Statistical Need Change Definition Business Case based upon Assessment incorporates Gap Analysis has subtype of specifies Evaluation Assessment has subtype of evaluates

Statistical Program Design Statistical Program Statistical Program Cycle Statistical Activity specifies has is comprised of Process Step Design Process Step DesignExecution has uses Statistical Program Design may be of multiple types (Acquisition, Production, Dissemination) Statistical Activity may be of multiple types (Acquisition, Production, Dissemination) specifies

Statistical Activity Acquisition Activity Production Activity Dissemination Activity has subtype of

Acquisition Activity Data Channel has Instrument Implementation populates Data Resource uses Mode uses Instrument Control Instrument Question Collection Description is described by uses Interviewer Instruction Question BlockStatement may have

Business Service Process Process Step Design RuleProcess Method Business Function consists of applies can be performed using performs Statistical Program Design Statistical Activity consists of specifies used by Process Control uses can be performed using has triggers

Process Input Specification Process Control Process Step Design Rule Process Output Specification specifies Process Input has specifies has

Process Input Transformable Input Process Control Process Step Execution Record Process Output Transformed Output triggers uses as parameters Parameter Input Process Support Input Process Metric reviews has has subtype of Process Step triggers has

Process (GSBPM Phase 5) Input Concepts Objects Structures Objects Output Concepts Objects Structures Objects Process Production Activity Statistical Business Process Input Concepts Objects Structures Objects Statistical Need Output Concepts Objects Structures Objects Evaluation Assessment Statistical Program Process Validation check: “1000 errors” Input Variable Data Set, Data Structure Parameter Input Output Variable Process Metric Business Service, Process Step, Edit Rules Data Set, Data Structure Review, Validate and Edit (GSBPM 5.3) Input Concepts Objects Output Concepts Objects Process Step, Process Control, Edit Rules Data Set, Data Structure

Process Input ConceptsStructures Process Output Concepts Identify potential errors and gaps This Process Step produces a Process Metric, “n”, the count of potential errors & gaps identified Structures Decision point based on count n Process Step from Production Group Process Control from Production Group Structures information objects Concepts information objects Impute – GSBPM 5.4 n > 0 Determine appropriate treatment and apply to potential errors and gaps. n = 0 The Process Input from Production Group records which information objects from the Concepts and Structures Groups are input to the Process Step The Process Output from Production Group records which information objects from the Concepts and Structures Groups are outputs from the Process Step

Analysis UnitCollection Unit PopulationUnit Frame Population Survey Population Target Population Analysis Population has subtype of is aggregate of

Variable Represented Variable Category Set Conceptual Domain Enumerated Conceptual Domain Described Conceptual Domain uses is has subtype of

Unit of MeasureData Type Represented Variable Instance Variable Code List Value Domain Enumerated Value Domain Described Value Domain uses is has subtype of describes refines

Unit Datum Unit of MeasureData Type Represented Variable Instance Variable Value Domain uses describes refines measures describes

Classification Family Correspondence Table Map Classification Classification Item Level Classification Scheme Classification Version Classification Variant groups has groups contains groups contains has maps

Code ListCategory Set Code Item Category Item CodeCategory contains takes meaning from Concept System Concept groups Classification Scheme Classification Item contains has subtype of

Measure Component Datum Data Structure Data Point Data Set Identifier Component is structured by measures Has observation of Unit Data Structure Component Represented Variable Instance Variable defined by describes has uses Attribute Component has has subtype of has subtype of

Dimensional Measure Component Data Structure Dimensional Data Structure Unit Data Structure Unit Identifier Component Dimensional Identifier Component Unit Attribute Component Logical Record Record Relationship Unit Measure Component Dimensional Attribute Component has has subtype of relates

Output Specification Product Dissemination Service Publication Activity Dissemination Activity Representation created from returns collects defines can be performed using includes Information Resource exposes has subtype of

Data Resource Data Set Provision Agreement provisioned by Data Location has Data Flow provides data at Information Resource Data Structure describes data for is structured by groups has subtype of Subject Field grouped by Data Provider provides data for

Identifiable Artefact TypeLanguage Context Key Administrative Detail has Contextual String has has subtype of

Organization Item Maintenance Agency Data Provider Organization Item Role Individual Organization Scheme has has subtype of Data Consumer has subtype of Organization Unit has subtype of Contact Details has