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Web Analytics
A New Statistical Domain?

          Paul Askew

      Royal Statistical Society
   2010 International Conference
        13-17 September 2010
             Brighton, UK
Introduction
Web analytics:
Measurement, collection, analysis and reporting of
internet data for understanding and optimising web
usage. (WAA). …. reporting of metrics

1.   Domain
2.   Data
3.   Measures
4.   Tools
5.   Opportunities
1. Domain
Large number of sites, and increasing




       • 8,722,474 UK web sites (Nominet Aug 2010)
       • 81,632,634 Site management transactions (Aug 2010)
1. Domain
Large (public) sites with lots of activity

No. 10 (Aug 2010)
    • 498,871 unique visitors
    • 721,767 visits
    • 2,135,427 page views
Direct.gov.uk (Aug 2010)
    • 15,107,447 visits for 52,687,308 page views
BBC Radio (July 2010)
    • 3,477,571 visits for 21,071,588 listening hours
2. Data

          home        Service




 track
 every    Log         html
 click    File        java



          A      AB   B         C
2. Data
The scope of the data is increasing and complicating

Phase 1: Visits
Phase 2: Characteristics
       • Browser
       • Source (incl. search engine, ‘spiders’)
       • Date/time, entry/exit pages, duration
Phase 3: Engagement
       • Dynamic content
       • Blogs and forums – sentiment
       • Social Media – networks
2. Data
Data has some defining characteristics

Overall
   • Large volumes in real time
   • Precise and accurate
   • Consistent (ABCe)
Issues
   • Exit time
   • Cookies and Java
   • Hotel problem
3. Measures
Measures evolve from marketeers and web designers

1. Measure of activity
   • Unique visitors
2. Measures of effectiveness
   •   Bounce rate, conversion rate
3. Measures of relationship
   • More process than event based (sequence detection)
   • Frequency....loyalty
   • Propensity….days and visits to action
4. Tools
 …are maturing
a.   DIY
b.   Sector Specific
     Google (+74)
     Omniture
     Technorati
     etc…
c.   Generic
     SPSS,
     SAS
     etc…
4. Tools
5. Opportunities
1. Public good
   • Online services and user interface/experience
   • Age of austerity – tougher decisions, tighter evidence
2. Focus on messages from the data
   • 90/10 Rule, insufficient expert capacity
   • Value of narrative commentary (eg UKSA)
3. Real time vs Strategic analysis
   •   News vs trends
4. Statistical Opportunity
   •   Data volumes, issues, new techniques?
5. Opportunities
5. Experimentation and geolocation

6. Visualisation

7. Multiple data sources

8. Free data and free tools

9. Role for Meta-Meta- Data (‘sweater’ data?)

10. Interesting and challenging…
5. Opportunities
  “A new era is dawning for what you might call the
  datarati….The sexy job in the next 10 years will be
  statisticians” (Google, Jan 2009)


  “A society in which our lives and choices are enriched
  by and understanding of statistics” or “Understand
  the society and world we live in, and get the most out
  of our lives.” (Getstats, Sept 2010)


   Do let me know how you get on with web analytics
                pauljaskew@gmail.com

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Web Analytics: A new Statistical Domain

  • 1. Web Analytics A New Statistical Domain? Paul Askew Royal Statistical Society 2010 International Conference 13-17 September 2010 Brighton, UK
  • 2. Introduction Web analytics: Measurement, collection, analysis and reporting of internet data for understanding and optimising web usage. (WAA). …. reporting of metrics 1. Domain 2. Data 3. Measures 4. Tools 5. Opportunities
  • 3. 1. Domain Large number of sites, and increasing • 8,722,474 UK web sites (Nominet Aug 2010) • 81,632,634 Site management transactions (Aug 2010)
  • 4. 1. Domain Large (public) sites with lots of activity No. 10 (Aug 2010) • 498,871 unique visitors • 721,767 visits • 2,135,427 page views Direct.gov.uk (Aug 2010) • 15,107,447 visits for 52,687,308 page views BBC Radio (July 2010) • 3,477,571 visits for 21,071,588 listening hours
  • 5. 2. Data home Service track every Log html click File java A AB B C
  • 6. 2. Data The scope of the data is increasing and complicating Phase 1: Visits Phase 2: Characteristics • Browser • Source (incl. search engine, ‘spiders’) • Date/time, entry/exit pages, duration Phase 3: Engagement • Dynamic content • Blogs and forums – sentiment • Social Media – networks
  • 7. 2. Data Data has some defining characteristics Overall • Large volumes in real time • Precise and accurate • Consistent (ABCe) Issues • Exit time • Cookies and Java • Hotel problem
  • 8. 3. Measures Measures evolve from marketeers and web designers 1. Measure of activity • Unique visitors 2. Measures of effectiveness • Bounce rate, conversion rate 3. Measures of relationship • More process than event based (sequence detection) • Frequency....loyalty • Propensity….days and visits to action
  • 9. 4. Tools …are maturing a. DIY b. Sector Specific Google (+74) Omniture Technorati etc… c. Generic SPSS, SAS etc…
  • 11. 5. Opportunities 1. Public good • Online services and user interface/experience • Age of austerity – tougher decisions, tighter evidence 2. Focus on messages from the data • 90/10 Rule, insufficient expert capacity • Value of narrative commentary (eg UKSA) 3. Real time vs Strategic analysis • News vs trends 4. Statistical Opportunity • Data volumes, issues, new techniques?
  • 12. 5. Opportunities 5. Experimentation and geolocation 6. Visualisation 7. Multiple data sources 8. Free data and free tools 9. Role for Meta-Meta- Data (‘sweater’ data?) 10. Interesting and challenging…
  • 13. 5. Opportunities “A new era is dawning for what you might call the datarati….The sexy job in the next 10 years will be statisticians” (Google, Jan 2009) “A society in which our lives and choices are enriched by and understanding of statistics” or “Understand the society and world we live in, and get the most out of our lives.” (Getstats, Sept 2010) Do let me know how you get on with web analytics pauljaskew@gmail.com