Experiences regarding the use of alternative data sources (such as the Hub) in statistical production. Per Andreasson.

Slides:



Advertisements
Similar presentations
CZECH STATISTICAL OFFICE Na padesátém 81, CZ Praha 10, Czech Republic The use of administrative data sources (experience and challenges)
Advertisements

Federal Statistical Office eSTATISTIK.core - Integrating Respondents’ IT Systems into Data Collection UNECE Work Session on Statistical Data Editing Bonn,
Statistics Portugal « (Quality Rome, 10 July 2008) « Simplified Business Information: « Improving quality by using administrative data in Portugal.
Electronic data collection System in CSB of Latvia By Karlis Zeila, Vice President, CSB of Latvia IT DG meeting, October , Eurostat.
Editing of linked micro files for statistics and research.
Joseph Lukhwareni Statistics South Africa Reengineering projects focusing on metadata and the statistical cycle Statistics South Africa, South Africa 3-5.
 ReadSoft 2004 Processing census forms.  ReadSoft 2004 ReadSoft Corporate Profile n Swedish company - founded1991 n Listed in Stockholm stock exchange.
The business process models and quality issues at the Hungarian Central Statistical Office (HCSO) Mr. Csaba Ábry, HCSO, Methodological Department Geneva,
Central Bureau of Statistics of Croatia MSIS 2009, Oslo, Norway, May 2009 CBS ISIS: Architecture for Survey Processing.
Automation Living in a Paper Oriented World and The Steps to Automation.
TRITON - An event driven SOA architecture MSIS Jakob Engdahl, Statistic Sweden
1. Population sources Sampling process – Sample design – Sample selection – Proving 2.
Li-Chun Zhang Statistics Norway
Use of technology in conducting censuses in Latin America and the Caribbean United Nations Technical Meeting on Use of Technology in Population and Housing.
Frédéric Picard and Steve Matthews
Towards more flexibility in responding to users’ needs
Surveys on prices at the Statistical office of the Republic of Slovenia (SURS) Mojca Noč Razinger.
Cooperation of statistical register and survey departments in Statistics Estonia 22nd Meeting of the Wiesbaden Group on Business Registers Tallinn,
Statistical Business Register
Contents Introducing the GSBPM Links to other standards
The Future Dissemination of OECD Statistics – Some Comments
Anna Długosz Central Statistical Office of Poland
Rudi Seljak, Aleš Krajnc
Meryem Demirci United Nations Statistics Division
Session 8 Data Processing Estonian case study
Kevin Moore Head of Platforms Development and Support Branch
The evolution of the SDMX infrastructure and services
Maintenance module Martin Heigl CTO
Web Development Services in USA Web Development Services in USA
The usage of web interviewing in Lithuanian Labour Force Survey
A generic production environment - use of GSIM in Statistics Sweden
XIS XML Input System Statistics Denmark 11 Maj 2004.
Employers, Founders and Gazelles: Developments in Business Demography in Europe Since th International Roundtable on Business Survey Frames - Wiesbaden.
Profile of Danish enterprises with 0 employees
Improving data quality in business surveys for National Statistics
Generic Statistical Business Process Model (GSBPM)
SDMX: A brief introduction
ESSnet project "Automated data collection and reporting in accommodation statistics"   Objectives, achievements and results
Transforming Automation through Artificial Intelligence
ESTP COURSE ON PRODCOM STATISTICS
Electronic Data Collection at Statistics Canada
Ten years of centralised data collection
Metadata in the modernization of statistical production at Statistics Canada Carmen Greenough June 2, 2014.
Assessment of National Accounts Compilation in the GCC Countries Giovanni Savio, Statistics Division, UN-ESCWA High level seminar on the implementation.
A new fantastic source for updating the Statistical Business Register
Eurostat – Units E2, B5 Cristina BLANARU
Working Group Meeting: Statistics on Crime and Criminal Justice 15 March 2017, Luxembourg Review of 2016 joint Eurostat-UNODC data collection Solène.
How do we unify data collection?
Johan Erikson Statistics Sweden Luxemburg, March 2012
Validation process and the IT tools used at KAS
Bureau of Transportation Statistics
Data validation in Statistical Office of the Republic of Serbia
PRODCOM SURVEY IN THE UNITED KINGDOM
UN activities on crime and criminal justice statistics
Validation Services - Implementation
„Elektra” HCSO electronic survey and its background
ESS VIP programme: Cross-cutting project on ESS data warehouses for production and dissemination John Allen Agenda point 5 Dissemination Working Group.
UOE Some conclusions of the UOE sub-group and Action plan for follow up Other news ETSWG, Jan 2003 Agenda item VII.1 document ETS12.1 Mary Dunne.
Session 7 – Eurostat 2017 SBR User Survey
Results of the user and partner survey on Regional Statistics
SISAI STATISTICAL INFORMATION SYSTEMS ARCHITECTURE AND INTEGRATION
Unit for business structure
Task Force 3, Cultural Industries Kutt Kommel
Mapping Data Production Processes to the GSBPM
Reduction of administrative burden through official statistics
The Swedish survey on turnover in the service sector
Improving Cost Efficiency of Chain Store Reporting in Norway
Étienne Saint-Pierre, Statistics Canada
Technical Coordination Group, Zagreb, Croatia, 26 January 2018
The GLC Questionnaire for 2007
Presentation transcript:

Experiences regarding the use of alternative data sources (such as the Hub) in statistical production. Per Andreasson

Digitalization in data collection Traditional paper collection From human to human Paper forms Transformation to digital format From human to machine Web forms Unbroken digital chain Från machine to machine Filie transfer

The analog loop of stupidity

An unbroken digital chain

A step-wise approach to digitalization Half-digitalized solution: Web questionnaires. Semi-automated solution: Some data provided from systems, but manually completed. Fully automated solution (Machine-to-machine), where data is sent from a business system or a Hub to an authority automatically, without any manual work needed.

The gains for us… Better possibility to combine and reuse sources Less time devoted to micro editing and re-contacts Better consistency in the statistical system

Coordinating questionnaires – The vision Sources Data collection Data Warehouse Output 1 Metadata Warehouse Output A Output B Output C 2 Output D Output E Output F 3 Output AC Output G 4 Output CDF

Difference in definitions between Surveys Employed Survey 534 813 Moms, LAPS 547 242 LAPS-NR 502 700 KS? 547 298 548 336 FEK, SAMO, IVP, INFI, TFF 546 518 FEK Regionalt 547 531 FEK Eurostat 548 273 NR 502 625 AKU

Company X Monthly surveys: Number of employees: 159 Monthly surveys: Kortperiodisk sysselsättningsstatistik - Marie Intrastat - Marianne KonjInd – Stefan och Ylva Ksju - Marie Konjunkturstatistik över vakanser - Jonas KLP - Marie PPI Quarterly surveys: Kvartalsvis bränslestatistik - Claes Investeringsenkäten - Stefan Industrins lager - Stefan UHT - Stefan Annual surveys: SLP BONUS - Jonas FEK - Ylva Företagens utgifter för IT - Ylva ISEN - Ylva IVP - Stefan Utlandsägda företag - Stefan

Conclusions Digitalization is coming! Both automated and semi-automated necessary Cooperation is a key Needs thinking in new ways

Thank you Any questions? Hasta la vista!