1 / 13

Motivation

Learn how to establish a new validation routine to ensure optimal data accuracy across statistical domains. Gain insights on international production, complex validation processes, and monitoring performance.

mackeyr
Download Presentation

Motivation

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Re-thinking Data ValidationAnette Morgils Hertz – ahz@dst.dkKatja Overgaard – kao@dst.dkStatistics Denmark

  2. Motivation • Look at data across statistical domains • Special knowledge on international production of large multinationals necessary • Complex and time consuming

  3. Motivation • Given the same resources available – how to establish this new validation routine? • Rearranging our validation routines • Always focus on the errors that matter the most (Key account system) • Monitoring the performance of the validation routines, to ensure they perform optimally (monitoring report)

  4. Agenda • About us • SKV and Validation team • Validation Routines then and now • Monitoring the Validation Routines • Key Account System • Conclusion

  5. About us • What is International Trade in Goods (ITGS)? • Import/Export of goods • Around 9000 commodity codes and 250 country codes • Published monthly • What is International Trade in Services (ITSS)? • Import/Export of services • Around 70 service codes and 250 country codes • Published aggregated monthly and detailed quarterly • What is Balance of Payments • Use data from different sources incl. ITGS and ITSS

  6. SKV and Validation Team • SKV team • SKV  Company critical to ourstatistics • Team dedicated to validate the reported data from these companies • Validation team • Responsible for all other validation and communication with the companies

  7. Validation Routines then and now • Old system: 59 different valdation routines • Now: Some validation routines are closed, others rearranged

  8. Key Account System One person = One company

  9. Key Account System Changing weights 

  10. Monitoring Validation Routines • Monitoring report • Measuring the quality of a validation routine:

  11. Monitoring Validation Routines • Graphs for comparison • Absolute errors

  12. Conclusion • To spend our resources optimally we must monitor every validation routine • A change of focus is necessary • Start with the potential errors with the biggest impact

  13. Thank you! Anette Morgils Hertz, email: ahz@dst.dk Katja Overgaard, email: kao@dst.dk

More Related