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Eurostat
Web activity evidence to increase timeliness of official statistics
IAOS 20148 – 10 October
Eurostat
My definition of big data
• Data deluge• Larger, faster, more
(a.k.a. Volume, Velocity, Variety)
• Everything is dataText, sound, images, video
• Analytics• Predictive analytics
Ex: Google translate, voice recognition, suggestions systems, health applications
• The new data product by excellenceOfficial stat: chances of getting a new job
• An emergent market
Eurostat
ESS Big Data action plan
• Scheveningen memorandum• Action plan adopted by European Statistical System
Committee• Strategy
• Pilots, three time horizons roadmap, review as needed
• Areas• Policy, Communication, Big data sources, Applications /
pilots, Methods, Quality, IT infrastructure, Skills, Experience sharing, Legislation, Governance
• http://www.cros-portal.eu/content/ess-big-data-action-plan-and-roadmap-10
Eurostat
Past experiences
• 2005: Association between web activity and unemployment identified
• 2006: Google Trends• 2008: Google Flu Trends (GFT)• 2009: GFT underestimated official figures
• 1st revision of GFT model
• 2013: GFT overestimated flu peak values• 2nd revision of GFT model
• 2014: Backlash against big data
Eurostat
Data Source: Google Trends (www.google.com/trends).
Eurostat
Weekly influenza-like illness (ILI) surveillance and Google Flu Trends (GFT) search query estimates,June 2003–March 2013
Olson DR, Konty KJ, Paladini M, Viboud C, et al. (2013) Reassessing Google Flu Trends Data for Detection of Seasonal and Pandemic Influenza: A Comparative Epidemiological Study at Three Geographic Scales. PLoS Comput Biol 9(10)
License: Creative Commons CC0 public domain dedication
Eurostat
Weekly influenza-like illness (ILI) surveillance and Google Flu Trends (GFT) search query estimates,June 2003–March 2013
Olson DR, Konty KJ, Paladini M, Viboud C, et al. (2013) Reassessing Google Flu Trends Data for Detection of Seasonal and Pandemic Influenza: A Comparative Epidemiological Study at Three Geographic Scales. PLoS Comput Biol 9(10)
License: Creative Commons CC0 public domain dedication
Eurostat
Weekly influenza-like illness (ILI) surveillance and Google Flu Trends (GFT) search query estimates,June 2003–March 2013
Olson DR, Konty KJ, Paladini M, Viboud C, et al. (2013) Reassessing Google Flu Trends Data for Detection of Seasonal and Pandemic Influenza: A Comparative Epidemiological Study at Three Geographic Scales. PLoS Comput Biol 9(10)
License: Creative Commons CC0 public domain dedication
Eurostat
Weekly influenza-like illness (ILI) surveillance and Google Flu Trends (GFT) search query estimates,June 2003–March 2013
Olson DR, Konty KJ, Paladini M, Viboud C, et al. (2013) Reassessing Google Flu Trends Data for Detection of Seasonal and Pandemic Influenza: A Comparative Epidemiological Study at Three Geographic Scales. PLoS Comput Biol 9(10)
License: Creative Commons CC0 public domain dedication
Eurostat
Source: Financial Times Magazine (2014).
Eurostat
Lessons from GFT
• Premature release of statistical product can harm its reputation
• Avoid big data hubris• Google search algorithms frequent changes
impacts validity of models• We need transparency and replicability
• GFT search terms unknown• GT is based on a sample which sampling
methodology is unknown
Eurostat
Other sources of web activity
• Wikipedia page views• Flu
• Twitter• International and internal migration flows
• Possibly other• Visits to particular websites
Eurostat
How to introduce web activity data in official flash estimates?
• Launch a larger scale balanced study
• Negative results normally are not published
• Purpose: guide decision on investment
Eurostat
How to introduce web activity data in official flash estimates?
• Diversification and assessment of the web activity data sources• NSI lack control of the source
Black boxInability to guarantee that there was no manipulationBreaks in seriesLack of continuity
• Diversify the sources• Revision of prediction models• Accreditation and certification
Eurostat
How to introduce web activity data in official flash estimates?
• Integration of web activity data with traditional official statistics sources• Official statistics should not simply reproduce
what others can do, but instead do it making use of its specific comparative advantages
• We are the original producers, we know its details• Use more detail than what is published• Traditional methods (surveys)
Eurostat
How to introduce web activity data in official flash estimates?
• Research on relation between web activity and the phenomena being predicted
• Remember lesson from GFT
• Do not confuse web activity with the phenomenon itself
Eurostat
How to introduce web activity data in official flash estimates?
• Joint effort on the development of appropriate prediction models
• Learn from each other
• Transparency
• International comparability