1 Building a new production system in ITSS and the improvement of validation Nordic meeting for Trade in Goods and Services/BoP 16-18 September 2014 Hagstova.

Slides:



Advertisements
Similar presentations
Statistics 2020 and Platform Approach Te Käpehu Whetü May 2011.
Advertisements

Input Data Warehousing Canada’s Experience with Establishment Level Information Presentation to the Third International Conference on Establishment Statistics.
Quality Guidelines for statistical processes using administrative data European Conference on Quality in Official Statistics Q2014 Giovanna Brancato, Francesco.
APPLIED GSBPM IN GSO by Ha Do Statistical Standard Methodology and ITC Department General Statistic Office Vietnam 1 General statistic office Vietnam.
UNECE Work Session on Statistical Data Editing Vienna April 2008 Topic ii – Editing Administrative Data and Combined Sources.
1 Editing Administrative Data and Combined Data Sources Introduction.
1 Business Exchange Structures Concepts.
United Nations Economic Commission for Europe Statistical Division Applying the GSBPM to Business Register Management Steven Vale UNECE
Role of editing and imputation in integration of sources for structural business statistics Svein Gåsemyr, Statistics Norway Svein Nordbotten, University.
Eurostat Repeated surveys. Presented by Eva Elvers Statistics Sweden.
Background Defining and mapping business processes in statistical organisations started at least 10 years ago –“Statistical value chain” –“Survey life-cycle”
CZECH STATISTICAL OFFICE Na padesátém 81, CZ Praha 10, Czech Republic The use of administrative data sources (experience and challenges)
Interactive session: Mapping the BPM-Notation on a SDWH layered architecture Discussion on Vision in sub groups.
Development of metadata in the National Statistical Institute of Spain Work Session on Statistical Metadata Genève, 6-8 May-2013 Ana Isabel Sánchez-Luengo.
Overview of quality work in Statistics Denmark Kirsten Wismer.
The Adoption of METIS GSBPM in Statistics Denmark.
United Nations Economic Commission for Europe Statistical Division Introducing the GSBPM Steven Vale UNECE
Eurostat Overall design. Presented by Eva Elvers Statistics Sweden.
Lisbone, March ALBANIAN METADATA AlbMeta Prepared by INSTAT Working Group.
Revision Project of the Business Register (BR) and Business Statistics in September 2013 Tuula Viitaharju.
1 1 Expert Group on Energy Statistics. New York 2 – 5 Nov ESCN and the Oslo Group Olav Ljones Chair of the Oslo Group Statistics Norway
United Nations Economic Commission for Europe Statistical Division Mapping Data Production Processes to the GSBPM Steven Vale UNECE
Editing of linked micro files for statistics and research.
CBS-SSB STATISTICS NETHERLANDS – STATISTICS NORWAY Work Session on Statistical Data Editing Oslo, Norway, September 2012 Jeroen Pannekoek and Li-Chun.
SNA seminar in the Caribbean Integrated questionnaires Marie Brodeur Director General, Industry Statistics Branch, Statistics Canada St. Lucia February,
Establishment of a quality function on division level Nordic meeting - Faroe Islands September 2014 Casper Winther
Developing and applying business process models in practice Statistics Norway Jenny Linnerud and Anne Gro Hustoft.
ORGANISATION FOR ECONOMIC CO-OPERATION AND DEVELOPMENT ORGANISATION DE COOPÉRATION ET DE DEVELOPMENT ÉCONOMIQUES OECDOCDE Workshop on improving statistics.
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.
SDMX and Metadata SDMX Basics Course 12 April 2013 Daniel Suranyi Eurostat B5 Management of statistical data and metadata.
ESS-net DWH ESSnet on microdata linking and data warehousing in statistical production Harry Goossens – Statistics Netherlands Head Data Service Centre.
Project Management Basics
RECENT DEVELOPMENT OF SORS METADATA REPOSITORIES FOR FASTER AND MORE TRANSPARENT PRODUCTION PROCESS Work Session on Statistical Metadata 9-11 February.
EDIT – Eurostat’s editing tool
Dissemination of SBS data and technical visits to MSs item 10 of the agenda Structural Business Statistics Working Group 14 April 2015, Luxembourg.
Process reengineering at Statistics Sweden Bo Sundgren
5.8 Finalise data files 5.6 Calculate weights Price index for legal services Quality Management / Metadata Management Specify Needs Design Build CollectProcessAnalyse.
Describe a layered S-DWH Technology Architecture Information Systems Architecture Business Architecture.
The business process models and quality issues at the Hungarian Central Statistical Office (HCSO) Mr. Csaba Ábry, HCSO, Methodological Department Geneva,
Project Communication Management Manage Communications - Inputs Inputs Communications Management Plan Work Performance Reports Enterprise Environmental.
1 1 Energy prices in energy statistics (and IRES) Mr. Atle Tostensen Statistics Norway OG4 – 2 February 2009.
TRITON - An event driven SOA architecture MSIS Jakob Engdahl, Statistic Sweden
ROMA 23 GIUGNO 2016 MODERNISATION LAB - FOCUSSING ON MODERNISATION STRATEGIES IN EUROPE: SOME NSIS’ EXPERIENCES Insert the presentation title Modernisation.
Nordic PPI Copenhagen 2014.
Li-Chun Zhang Statistics Norway
Implementation of Quality indicators for administrative data
MANAGEMENT OF STATISTICAL PRODUCTION PROCESS METADATA IN ISIS
Standardized and modernized data editing in Statistics Denmark
Inputs Outputs Tools and Techniques.
Process and Quality metadata
S-DWH layered architecture – Statiscs Finland
in a changing environment
Generic Statistical Business Process Model (GSBPM)
YTY − an integrated production system for business statistics
Topics Background of the development 
Unified Enterprise Survey
Nils Petter Skirstad Statistics Norway
Validation at Statistics Sweden
Applying the Generic Statistical Business Process Model to Business Register Maintenance Steven Vale UNECE
Ola Nordbeck Statistics Norway
22nd October 2007 Ivo Beuken Statistics Netherlands
Applying the ESS EARF in a VIP project: The ESS.VIP Validation example
Using the GSBPM in Practice
Mapping Data Production Processes to the GSBPM
Future Work Steven Vale UNECE
19th Working Group on Quality in Statistics
Metadata on quality of statistical information
Business architecture
Working with Project Management Processes
Presentation transcript:

1 Building a new production system in ITSS and the improvement of validation Nordic meeting for Trade in Goods and Services/BoP September 2014 Hagstova Føroya * Draft version 5 September 2014 Ekaterina Denisova Torshavn,

2 Contents 1.Rationale for improvement 2.State-of-the-art production of External trade in services 3.Integrated System for Editing and Estimation (ISEE) 4.Integration of External trade in services in ISEE and concluding remarks

3 1. Rationale for improvement Statistics Norway strategy plan for : “ greater efficiency and more effective use of knowledge assets” Eurostat visions MEETS: “more efficient way of producing enterprise and trade statistics” Production of External trade in services in terms of GSBPM

Production of regular statistics in GSBPM 4

2. State-of-the-art production of External trade in services 5 Not integrated with other statistics Non-integrated data processing Logging Time-consuming data editing Data quality controls outside the application

6 2. State-of-the-art production of External trade in services Editing base Adm. data Input 2 Dataset 1 Dataset 2 Dataset 3 Output 1 Output 2 Output 3 Imputation, cleaning, estimation Input 1 6

3. Integrated System for Editing and Estimation (ISEE) in Statistics Norway System for data collection and processing statistics per today History –Initialized in 2005: price indexes – : SBS Integration of External trade in services planned in

3. Integrated System for Editing and Estimation (ISEE) in Statistics Norway Advantages: Standardized and integrated production Metadata Data quality controls (micro and macro) Administrative registers Logging and monitoring data processing Tools for data analysis (data grid) Design of interface ______ * Source: “Innhold og muligheter i ISEE” by Haugen, P.O., Statistics Norway, ISEE-seminar, February

Example: SBS form and ISEE interface 9

4. Integration of External trade in services in ISEE and concluding remarks 10 State of the art ISEE

11 4. Integration of External trade in services in ISEE and concluding remarks Editing base Adm. data Input 2 updates Dataset 1 Dataset 2 Dataset 3 Output 1 Output 2 Output 3 Imputation, cleaning, estimation Input 1 Trade in services in ISEE? 11