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Seminar on Statistical Data Collection
Geneva, 25 – 27 September 2013
Big Data, Big Impact?
Peter Struijs and Piet Daas
2
Content
–Big Data characteristics
–Example: The use of traffic loop data
for statistics
–Big Data issues
–From ideas to statistics
3
Big Data Characteristics
–Trends
–Qualitative changes
–“Big Data are data sources”
–Volume, velocity and variety
–Big Data may have no design
4
5
Issues (1)
–Positioning of the NSI
–Statistical output
–Statistical methodology
6
Issues (2)
–Statistical process
–Privacy and security
–Organisation
7
The Road to Statistics Based on Big Data
– From source orientation to output
orientation
– Do not let Big Data issues block progress
– Roadmap approach:
‐Identify a programme of outputs based on Big Data
‐For each output, define time target and ownership
‐Let owner identify conditions to be fulfilled
‐Commit supporting services to fulfilling the
conditions
8
Conclusion
– What is the role of NSIs in the future?
– How to make progress in making statistics
based on Big Data?
– What does this mean for the national and
international statistical community?
9

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Big data Big impact?

  • 1. Seminar on Statistical Data Collection Geneva, 25 – 27 September 2013 Big Data, Big Impact? Peter Struijs and Piet Daas
  • 2. 2
  • 3. Content –Big Data characteristics –Example: The use of traffic loop data for statistics –Big Data issues –From ideas to statistics 3
  • 4. Big Data Characteristics –Trends –Qualitative changes –“Big Data are data sources” –Volume, velocity and variety –Big Data may have no design 4
  • 5. 5
  • 6. Issues (1) –Positioning of the NSI –Statistical output –Statistical methodology 6
  • 7. Issues (2) –Statistical process –Privacy and security –Organisation 7
  • 8. The Road to Statistics Based on Big Data – From source orientation to output orientation – Do not let Big Data issues block progress – Roadmap approach: ‐Identify a programme of outputs based on Big Data ‐For each output, define time target and ownership ‐Let owner identify conditions to be fulfilled ‐Commit supporting services to fulfilling the conditions 8
  • 9. Conclusion – What is the role of NSIs in the future? – How to make progress in making statistics based on Big Data? – What does this mean for the national and international statistical community? 9