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David Elsweiler| david.elsweiler@ur.de
Lehrstuhl für Informationswissenschaft| www.iw.ur.de
Behaviour with Search and
Recommender Systems: what
can it tell us?
Coming up...
• Discuss some of the work I have been doing in
Rec-Sys and Search
– Leisure and Food / Health domains
• Behavioural focus
• Outline the benefits I believe such a focus has
for both the rec-sys and the IR community
Caveat: Not just my work!
Computer Science
Background
Photo by Martin LaBar (going on hiatus) - Creative Commons Attribution-NonCommercial License http://www.flickr.com/photos/32454422@N00 Created with Haiku Deck
Photo by Martin LaBar (going on hiatus) - Creative Commons Attribution-NonCommercial License http://www.flickr.com/photos/32454422@N00 Created with Haiku Deck
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Photo by John Howard - Getty Royalty-Free License http://www.gettyimages.com/Corporate/LicenseAgreements.aspx Created with Haiku Deck
„This is a rec-sys problem. Think
about Netflix, Spotify, Amazon etc.“
„ but the process of searching can
also be part of the fun “
We have been investigating these questions in different
contexts:
• Wikipedia, social-media, distributed leisure events
App
• Helps vistors find events
• Generates Plans
• Guides the visitor
• 1000-2000 users
• Interaction log-data
App
• Helps vistors find events
• Generates Plans
• Guides the visitor
• 1000-2000 users
• Interaction log-data
App
• Helps vistors find events
• Generates Plans
• Guides the visitor
• 1000-2000 users
• Interaction log-data
App
• Helps vistors find events
• Generates Plans
• Guides the visitor
• 1000-2000 users
• Interaction log-data
• Every 6 months
• 1-2,000 users
• Interaction data logged
App
• Helps vistors find events
• Generates Plans
• Guides the visitor
• 1000-2000 users
• Interaction log-data
• Combine with other data
sources e.g. survey from
>50 users
• Rich understanding of
how system features
were used
• How system usage
influences experience on
evening
Photo by Kaysse - Creative Commons Attribution License http://www.flickr.com/photos/29862505@N08 Created with Haiku Deck
Photo by Thomas Rousing - Creative Commons Attribution License http://www.flickr.com/photos/43812360@N05 Created with Haiku Deck
• Offline evaluation of various Rec-Sys algs
• LNMusic: 860 users; 4,973 ratings
• LNMuseums: 1,047 users; 10,992 ratings
• Of the single recommenders the popularity
baseline performs best
• Combining Content-based and Collaborative
Filtering improves performance (dynamic
weighting even more)
• Additionally considering temporal contiguity
does not affect the performance
Photo by Thomas Rousing - Creative Commons Attribution License http://www.flickr.com/photos/43812360@N05 Created with Haiku Deck
• Online evaluation (live A/B testing)
• Different weights with our best system and TempCont
• Slight cost to user acceptance (ERec ∈ ESel )
• Routes were tighter and more compact, which
would allow users to spend less time travelling
and more time visiting events
• First hint that changing the system has an
influence on the behaviour (and perhaps on the
experience)
•
Investigating behavioural patterns
• Long Night of Music (1159 users, 111 GPS)
• Dominant tab for users:
• Most users (81.2%) stick to one or two tabs for
selecting events of interest
• Most events (82.8%) came from dominant tab
Rec Sys By Tour Genre Search Map
37.2% 15.6% 17.4% 24.5% 5.3%
Tab-usage during the night
Tab-usage during the night
• Planning phase
• Event discovery with the aim of
planning in mind e.g. Searching,
Browsing and in particular RecSys
Tab-usage during the night
Tab-usage during the night
• After 8pm behaviour changed
• Less interaction with search, genre &
RecSys
• More geographical, in part. Map tab
Tab-usage during the night
Photo by Leo Reynolds - Creative Commons Attribution-NonCommercial-ShareAlike License http://www.flickr.com/photos/49968232@N00 Created with Haiku Deck
• Metrics to model user experience on evening
• # event visits
• Evening duration
• Ratio of visiting time
• Avg. event visiting time
• Recall and Precision of visited events,
• Diversity of events
• Temporal contiguity of events
• Ratio of top N events
• Visit significantly more events than the others
– on average nearly 1.5 events more
• Spent significantly more time visiting events
• Likely because of the Temporal Contiguity
component in the RecSys
• More efficient use of time on evening
• Significantly shorter interaction times
• More popular events
• Also visited more events
• Spent less time visiting events
• Longer evenings
• Tend to only visit events near stops on one or
two lines
• Value for money users
• Visited less diverse and less popular events
• Favour more esoteric choices that fit more
closely with their specific genres of interest.
• Specificity comes at a cost of a smaller
number of visited events and also a lower
ratio of visiting time
• Greater precision, meaning they tend to
adhere more rigidly to their original plans
during the night.
• Spent less time during the evening overall
(~30 mins) and 5 mins less at each event
• Surprisingly no influence on popularity
• Seems users cherry pick known about events
of interest e.g. recommendations from friends
• Spend a lot of time planning these events
(increased interaction time before event)
Map Tab
• Interacted less before the evening (5.6min vs.
15.7min)
• Temporal contiguity for visited events is lower
• Visited events less likely to have been previously
marked
– likely explained by such users marking fewer events as
interesting (4.71 events vs. 9.79; p=0.01).
• Visited events were less popular (10.1% vs. 15.7%
of visited events were among the top 5)
Visited events precision over time:
• Map users stuck with their smaller plans
until around 9.30pm
• Other users until around 12.30 am
• Both groups were more likely to deviate
as time went on
• 55 users provided feedback about the app
and their priorities for the evening
• Rec-sys and Tour tab users appreciate routes
with:
• an efficient use of time, shorter paths, and
many events.
• Tour tab users value interestingness of events
less than other users
• Genre tab users:
• were less interested in using time
efficiently,
• didn‘t care much about having short travel
times
• not bothered about visiting many events.
• Instead, they put value on visiting
interesting but not diverse events
• Map tab users:
– 88.9% claimed they used the app as an
electronic program guide (vs 62.2%)
• Reflects map tab users having no ambitions of
making plans but instead to spontaneously
decide where to go next.
• Search tab users:
–Outliers
–don‘t really state any real prefences with
respect to the other groups
–There was one finding of note that linked to
their outcomes:
–Strong disagreement with the statement
that the app helped to reduce travelling
time, while other groups strongly agreed
–Cherry-picking events not a good strategy if
you want an efficient route
Photo by fractalznet - Creative Commons Attribution-NonCommercial License http://www.flickr.com/photos/95575701@N00 Created with Haiku Deck
• What users want differs and changes over time
• Distinct patterns of usage:
• Correlation between using specific features and
outcomes of the evening
• Correlation between reported user priorities
and usage of specific features
• Different support best in different situations
• Users adapt their behaviour
Photo by marco bono - Creative Commons Attribution-NonCommercial-ShareAlike License http://www.flickr.com/photos/47001509@N00 Created with Haiku Deck
Müller, M.; Harvey, M.; Elsweiler, D. & Mika, S. (2012), Ingredient Matching to
Determine the Nutritional Properties of Internet-Sourced Recipes, in 'Proc. 6th
International Conference on Pervasive Computing Technologies for Healthcare'
Harvey, M., Elsweiler, D., Ludwig, B. (2013)
You are what you eat: learning user tastes for
rating prediction
20th String Processing and Information Retrieval Symposium (SPIRE).
Jerusalem, Israel.
Plans
• User created
• Automatically based
on user tastes and
WHO guidelines
Plans
• User created
• Automatically based
on user tastes and
WHO guidelines
Plans
• User created
• Automatically based
on user tastes and
WHO guidelines
Behaviour with the system
• How is this system used?
• What factors affect this?
• Behavioural Change
– User has a goal (e.g. eat less fatty foods, lose
weight, eat more protein)
– Can the system help change behaviour to move
the user towards his or her goal?
• Does system usage influence behavioural
change?
Photo by Fake Plastic Alice - Creative Commons Attribution License http://www.flickr.com/photos/57764541@N00 Created with Haiku Deck
• A behavioural approach is system agnostic
• Behaviour is highly context-dependent
• As are user goals
• Behaviour > interaction:
• non-system behaviours e.g. LN outcomes
• Complementary evaluation approach
Photo by Derek Bridges - Creative Commons Attribution License http://www.flickr.com/photos/84949728@N00 Created with Haiku Deck

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CaRR Workshop Keynote Slides

  • 1. David Elsweiler| david.elsweiler@ur.de Lehrstuhl für Informationswissenschaft| www.iw.ur.de Behaviour with Search and Recommender Systems: what can it tell us?
  • 2. Coming up... • Discuss some of the work I have been doing in Rec-Sys and Search – Leisure and Food / Health domains • Behavioural focus • Outline the benefits I believe such a focus has for both the rec-sys and the IR community
  • 3. Caveat: Not just my work!
  • 5.
  • 6. Photo by Martin LaBar (going on hiatus) - Creative Commons Attribution-NonCommercial License http://www.flickr.com/photos/32454422@N00 Created with Haiku Deck
  • 7. Photo by Martin LaBar (going on hiatus) - Creative Commons Attribution-NonCommercial License http://www.flickr.com/photos/32454422@N00 Created with Haiku Deck
  • 8. Photo by ell brown - Creative Commons Attribution License http://www.flickr.com/photos/39415781@N06 Created with Haiku Deck
  • 9. Photo by will_cyclist - Creative Commons Attribution-NonCommercial License http://www.flickr.com/photos/88379351@N00 Created with Haiku Deck
  • 10. Photo by Pete Prodoehl - Creative Commons Attribution-NonCommercial-ShareAlike License http://www.flickr.com/photos/35237092540@N01 Created with Haiku Deck
  • 11. Photo by Pete Prodoehl - Creative Commons Attribution-NonCommercial-ShareAlike License http://www.flickr.com/photos/35237092540@N01 Created with Haiku Deck
  • 12. Photo by davidjwbailey - Creative Commons Attribution-NonCommercial-ShareAlike License http://www.flickr.com/photos/27711971@N06 Created with Haiku Deck
  • 13. Photo by davidjwbailey - Creative Commons Attribution-NonCommercial-ShareAlike License http://www.flickr.com/photos/27711971@N06 Created with Haiku Deck
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  • 16. Photo by bigwhitehobbit - Creative Commons Attribution-NonCommercial-ShareAlike License http://www.flickr.com/photos/28618339@N03 Created with Haiku Deck
  • 17. Photo by bigwhitehobbit - Creative Commons Attribution-NonCommercial-ShareAlike License http://www.flickr.com/photos/28618339@N03 Created with Haiku Deck
  • 18. Photo by My name's axel - Creative Commons Attribution-NonCommercial-ShareAlike License http://www.flickr.com/photos/37611179@N00 Created with Haiku Deck
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  • 21. Photo by John Howard - Getty Royalty-Free License http://www.gettyimages.com/Corporate/LicenseAgreements.aspx Created with Haiku Deck
  • 22. Photo by John Howard - Getty Royalty-Free License http://www.gettyimages.com/Corporate/LicenseAgreements.aspx Created with Haiku Deck „This is a rec-sys problem. Think about Netflix, Spotify, Amazon etc.“ „ but the process of searching can also be part of the fun “ We have been investigating these questions in different contexts: • Wikipedia, social-media, distributed leisure events
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  • 25. App • Helps vistors find events • Generates Plans • Guides the visitor • 1000-2000 users • Interaction log-data
  • 26. App • Helps vistors find events • Generates Plans • Guides the visitor • 1000-2000 users • Interaction log-data
  • 27. App • Helps vistors find events • Generates Plans • Guides the visitor • 1000-2000 users • Interaction log-data
  • 28. App • Helps vistors find events • Generates Plans • Guides the visitor • 1000-2000 users • Interaction log-data • Every 6 months • 1-2,000 users • Interaction data logged
  • 29.
  • 30. App • Helps vistors find events • Generates Plans • Guides the visitor • 1000-2000 users • Interaction log-data • Combine with other data sources e.g. survey from >50 users • Rich understanding of how system features were used • How system usage influences experience on evening
  • 31. Photo by Kaysse - Creative Commons Attribution License http://www.flickr.com/photos/29862505@N08 Created with Haiku Deck
  • 32. Photo by Thomas Rousing - Creative Commons Attribution License http://www.flickr.com/photos/43812360@N05 Created with Haiku Deck • Offline evaluation of various Rec-Sys algs • LNMusic: 860 users; 4,973 ratings • LNMuseums: 1,047 users; 10,992 ratings • Of the single recommenders the popularity baseline performs best • Combining Content-based and Collaborative Filtering improves performance (dynamic weighting even more) • Additionally considering temporal contiguity does not affect the performance
  • 33. Photo by Thomas Rousing - Creative Commons Attribution License http://www.flickr.com/photos/43812360@N05 Created with Haiku Deck • Online evaluation (live A/B testing) • Different weights with our best system and TempCont • Slight cost to user acceptance (ERec ∈ ESel ) • Routes were tighter and more compact, which would allow users to spend less time travelling and more time visiting events • First hint that changing the system has an influence on the behaviour (and perhaps on the experience) •
  • 34. Investigating behavioural patterns • Long Night of Music (1159 users, 111 GPS) • Dominant tab for users: • Most users (81.2%) stick to one or two tabs for selecting events of interest • Most events (82.8%) came from dominant tab Rec Sys By Tour Genre Search Map 37.2% 15.6% 17.4% 24.5% 5.3%
  • 36. Tab-usage during the night • Planning phase • Event discovery with the aim of planning in mind e.g. Searching, Browsing and in particular RecSys Tab-usage during the night
  • 37. Tab-usage during the night • After 8pm behaviour changed • Less interaction with search, genre & RecSys • More geographical, in part. Map tab Tab-usage during the night
  • 38. Photo by Leo Reynolds - Creative Commons Attribution-NonCommercial-ShareAlike License http://www.flickr.com/photos/49968232@N00 Created with Haiku Deck • Metrics to model user experience on evening • # event visits • Evening duration • Ratio of visiting time • Avg. event visiting time • Recall and Precision of visited events, • Diversity of events • Temporal contiguity of events • Ratio of top N events
  • 39. • Visit significantly more events than the others – on average nearly 1.5 events more • Spent significantly more time visiting events • Likely because of the Temporal Contiguity component in the RecSys • More efficient use of time on evening • Significantly shorter interaction times • More popular events
  • 40. • Also visited more events • Spent less time visiting events • Longer evenings • Tend to only visit events near stops on one or two lines • Value for money users
  • 41. • Visited less diverse and less popular events • Favour more esoteric choices that fit more closely with their specific genres of interest. • Specificity comes at a cost of a smaller number of visited events and also a lower ratio of visiting time • Greater precision, meaning they tend to adhere more rigidly to their original plans during the night.
  • 42. • Spent less time during the evening overall (~30 mins) and 5 mins less at each event • Surprisingly no influence on popularity • Seems users cherry pick known about events of interest e.g. recommendations from friends • Spend a lot of time planning these events (increased interaction time before event)
  • 43. Map Tab • Interacted less before the evening (5.6min vs. 15.7min) • Temporal contiguity for visited events is lower • Visited events less likely to have been previously marked – likely explained by such users marking fewer events as interesting (4.71 events vs. 9.79; p=0.01). • Visited events were less popular (10.1% vs. 15.7% of visited events were among the top 5)
  • 44. Visited events precision over time: • Map users stuck with their smaller plans until around 9.30pm • Other users until around 12.30 am • Both groups were more likely to deviate as time went on
  • 45. • 55 users provided feedback about the app and their priorities for the evening • Rec-sys and Tour tab users appreciate routes with: • an efficient use of time, shorter paths, and many events. • Tour tab users value interestingness of events less than other users
  • 46. • Genre tab users: • were less interested in using time efficiently, • didn‘t care much about having short travel times • not bothered about visiting many events. • Instead, they put value on visiting interesting but not diverse events
  • 47. • Map tab users: – 88.9% claimed they used the app as an electronic program guide (vs 62.2%) • Reflects map tab users having no ambitions of making plans but instead to spontaneously decide where to go next.
  • 48. • Search tab users: –Outliers –don‘t really state any real prefences with respect to the other groups –There was one finding of note that linked to their outcomes: –Strong disagreement with the statement that the app helped to reduce travelling time, while other groups strongly agreed –Cherry-picking events not a good strategy if you want an efficient route
  • 49. Photo by fractalznet - Creative Commons Attribution-NonCommercial License http://www.flickr.com/photos/95575701@N00 Created with Haiku Deck • What users want differs and changes over time • Distinct patterns of usage: • Correlation between using specific features and outcomes of the evening • Correlation between reported user priorities and usage of specific features • Different support best in different situations • Users adapt their behaviour
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  • 51. Photo by marco bono - Creative Commons Attribution-NonCommercial-ShareAlike License http://www.flickr.com/photos/47001509@N00 Created with Haiku Deck
  • 52.
  • 53. Müller, M.; Harvey, M.; Elsweiler, D. & Mika, S. (2012), Ingredient Matching to Determine the Nutritional Properties of Internet-Sourced Recipes, in 'Proc. 6th International Conference on Pervasive Computing Technologies for Healthcare'
  • 54. Harvey, M., Elsweiler, D., Ludwig, B. (2013)
You are what you eat: learning user tastes for rating prediction
20th String Processing and Information Retrieval Symposium (SPIRE). Jerusalem, Israel.
  • 55. Plans • User created • Automatically based on user tastes and WHO guidelines
  • 56. Plans • User created • Automatically based on user tastes and WHO guidelines
  • 57. Plans • User created • Automatically based on user tastes and WHO guidelines
  • 58. Behaviour with the system • How is this system used? • What factors affect this? • Behavioural Change – User has a goal (e.g. eat less fatty foods, lose weight, eat more protein) – Can the system help change behaviour to move the user towards his or her goal? • Does system usage influence behavioural change?
  • 59. Photo by Fake Plastic Alice - Creative Commons Attribution License http://www.flickr.com/photos/57764541@N00 Created with Haiku Deck • A behavioural approach is system agnostic • Behaviour is highly context-dependent • As are user goals • Behaviour > interaction: • non-system behaviours e.g. LN outcomes • Complementary evaluation approach
  • 60. Photo by Derek Bridges - Creative Commons Attribution License http://www.flickr.com/photos/84949728@N00 Created with Haiku Deck