Source: Internat. Statist. Rev. Volume 74, Number 3
(2006), 357-378.
Changes in circumstances put pressure on Statistics Netherlands (SN) to redesign the way its statistics are produced. Key developments are: the changing needs of data-users, growing competition, pressure to reduce the survey burden on enterprises, emerging new technologies and methodologies and, first and foremost, the need for more efficiency because of budget cuts.
This paper describes how SN, and especially its business statistics, can adapt to these new circumstances. We envisage an optimum situation as one with a single standardised production line for all statistics and a central data repository at its core. This single production line is supported by generic and standardised tools, metadata and workflow management.
However, it is clear that such an optimum situation cannot be realised in just a few years. It should be seen as the point on the horizon. Therefore, we also describe the first transformation steps from the product-based stovepipe-oriented statistical process of the past to a more integrated process of the future.
A similar modernisation process exists in the area of social statistics. In the near future both systems of business and social statistics are expected to connect at pivotal points and eventually converge on one overall business architecture for SN. Discussions about such an overall business architecture for SN have already been started and the first core projects have been set up.
References
[1] ABS (2004). The ABS Input Data Warehouse. The Australian Bureau of Statistics (ABS), The Survey Statistician.
[2] Bethlehem, J., Kent, J. & Ypma, W. (1999). On the use of metadata in statistical data processing. UNECE Work session on Statistical Metadata, Geneva, Switzerland.
[3] CBS (2005). Rekenen op statistieken (Counting on statistics), ICT-Masterplan. Internal report, Statistics Netherlands.
[4] CBS/BES (2005). BEET (Business statistics, Efficient, Effective and on Time). Internal report, Statistics Netherlands.
[5] Colledge, M.J. (1999). Statistical integration through metadata management. International Statistical Review, 67, 79-98.
[6] Cook, L. (1999). Managing in a networked statistical system. Statistics New Zealand, Wellington, New Zealand.
[7] Donaldson, L. (2001). The contingency theory of organizations. Sage Publications.
[8] Dunnet, G. & Osborne, G. (2005). A new information model for a national statistical office in the 21 century. Presentation ISI conference 2005, Sydney, Australia.
[9] Froeschl, K.A. (1997). Metadata management in statistical information processing. Wien-New York: Springer.
[10] Gates, W. (1999). Business @ the speed of thought. New York: Warner Books.
[11] Gillman, D.W., Appel, M.V. & LaPlant, W.P. (1996). Design principles for a unified statistical data/metadata system. Proceedings of the 8th International conference on Scientific and Statistical Database Management, pp. 150-155. U.S. Bureau of the Census, Washington, United States.
[12] Gillman, D.W. (2001). Corporate metadata repository (CMR) model. Proceedings of the MetaNet Conference, Voorburg, Netherlands.
[13] Graves, R. & Hutton, T. (2003). The Statistical Town Plan. Paper for the UN-ECE/Eurostat/OECD Meeting on The Management of Statistical Information Systems, Geneva, Switzerland.
[14] Györki, I. & Pap, I. Metadata driven statistical data warehouse system at the Hungarian Central Statistical Office. Paper for the UNECE/Eurostat/OECD Work session on Statistical Metadata, Geneva, Switzerland.
[15] Immon, W.H. (2002). Building the data warehouse, (3rd edition). Wiley.
[16] Johanis, P. & Bellerose, P. (2004). Use of standardized metadata to find, select and access statistical data. Paper UNECE/Eurostat/OECD Work session on Statistical Metadata, Geneva, Switzerland.
[17] Joshua, D. & Johnson, T. (2005). Meeting the Development Challenges at ONS-A case study. Paper for the UNECE/Eurostat/OECD Meeting on the Management of Statistical Information Systems, Bratislava, Slovakia.
[18] Kimball, R. (1998). The data warehouse lifecycle toolkit. Wiley.
[19] Klep, J. (1999). Future challenges in the management of statistical metadata. Paper for the UNECE Work session on Statistical Metadata, Geneva, Switzerland.
[20] Mintzberg, H. (1986). Structure in fives; designing effective organisations. Prentice Hall.
[21] Nordbotten, S. (1967). Purposes, problems and ideas related to statistical file systems. Proceedings from the 36th session of the ISI, Sydney, Australia.
[22] Pedersen, L. & Jespersen, N. (2003). Cheaper, faster, better-what else is new? Re-engineering the statistical production in digital Denmark. Paper for the UN-ECE/Eurostat/OECD Meeting on the Management of Statistical Information Systems, Geneva, Switzerland.
[23] Renssen, R.H., Kroese, A.H. & Willeboordse, A.J. (2001). Aligning Estimates by Re-peated Weighting. Report, Statistics Netherlands.
[24] Samuelson, L. & Thygesen, L. (2004). Building OECD's new statistical information system. Paper for the UNECE/Eurostat/OECD Meeting on the Management of Statistical Information Systems, Geneva, Switzerland.
[25] Sundgren, B. (1999). An information systems architecture for national and international statistical organisations. Paper for the Seminar on Management of Statistical Information Technology, Geneva, Switzerland.
[26] Sundgren, B. (2003). Developing and implementing statistical metadata systems. Metanet, Epros-project nr. IST-1999-29093.
[27] Vosselman, W. & Willeboordse, A.J. (1997). Breaking down the walls between business statistics. Report, Statistics Netherlands.
[28] Willeboordse, A.J. (2000). Towards a New Statistics Netherlands: blueprint for a process oriented organisation structure. Internal paper, Statistics Netherlands.
[29] Willenborg, L. & Heerschap, N. (2002). Plans for an ESB, the Enterprise Service Buss. Internal report, Statistics Netherlands.
[30] Ypma, W., Huigen, R., Kazemier, B., Renssen, R. & Van Velzen, J., et al. (2005). Doorkijk statistisch proces van de toekomst (View on the statistical process of the future). Internal report, Statistics Netherlands.
[31] Zeila. Karlis, (2004). Metadata driven integrated statistical data management system. Paper for the UNECE/Eurostat/OECD Meeting on the Management of Statistical Information Systems, Geneva, Switzerland.