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eTrust: Understanding Trust Evolution in an Online World

eTrust: Understanding Trust Evolution in an Online World. August 12-16, 2012 KDD2012. Trust and Its Evolution. Trust plays an important role in helping online users collect reliable information Abundant research on static trust for making good decisions and finding high quality content

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eTrust: Understanding Trust Evolution in an Online World

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  1. eTrust: Understanding Trust Evolution in an Online World August 12-16, 2012 KDD2012

  2. Trust and Its Evolution • Trust plays an important role in helping online users collect reliable information • Abundant research on static trust for making good decisions and finding high quality content • However, trust evolves as people interact and time passes by • It is necessary to study its evolution • Its study can advance online trust research for trust related applications

  3. Our Contributions • We identify the differences of trust study in physical and online worlds • We investigate how to study online trust evolution • We show if this study can help improve the performance of trust related applications

  4. Research in Physical and Online Worlds • Trust evolution in a physical world - Step 1: inviting a group of participants ( a small group) - Step 2: recording their sociometric information - Step 3: recording conditions or situations for the change • Differences encountered in an online world - Users are world-widely distributed - Sociometric information on trust is unavailable - Passive observation is the modus operandi to gather data

  5. Studying Online Trust Evolution • Overcoming the challenge of passive observation • Where can we find relevant data for trust study (an issue about environment) • How can we infer about the information about trust (an issue about methodology) • Modeling online trust evolution • How to incorporate social theories mathematically • Evaluating the gain of trust evolution study • Rating prediction and trust prediction

  6. Online Rating System time t

  7. Online Rating System time t time t+1

  8. Online Rating System Temporal Information time t time t+1

  9. Social Science theories • Correlations between rating and user preference - Dynamics of rating • Correlations between user preference and trust - Drifting user preferences

  10. Methodology for Trust Evolution Social theories Social theories Dynamics of user preference Trust Evolution Temporal information, rating etc Rating Prediction Online Rating System

  11. Our Framework: eTrust

  12. Components of eTrust Part 1 Part 2 Part 4 Part 3

  13. Part 1: Modeling Rating via User Preference • Rating is related to user preference and item characteristic - - is the preference of i-th user in time t, is the characteristic of j-thitem and K is the number of latent facets of items

  14. Part 2: Modeling Rating via Trust Network • People is likely to be influenced by their trust networks Trust strength between i-th and v-th users in the k-th facet Decaying the earlier rating

  15. Part 3: Modeling Trust and User preference • Modeling the correlation between trust and user preference is preference similarity vector in the k-th facet and is a user specific bias

  16. Part 4: Modeling Change of User Preference • Modeling the change of user preference cis a function to control how user preference change, λ controls the speed of change

  17. Experiments • Datasets • Findings from the study of trust evolution • Can eTrust help improve trust related applications? - Rating Prediction - Trust Prediction

  18. Experiments • Datasets • Findings from the study of trust evolution • Can eTrust help improve trust related applications? - Rating Prediction - Trust Prediction

  19. Datasets • Epinions • Product review sites • Statistics

  20. http://www.public.asu.edu/~jtang20/datasetcode/truststudy.htmhttp://www.public.asu.edu/~jtang20/datasetcode/truststudy.htm

  21. Splitting the Dataset • Epinions is separated into 11 timestamps 11thJan, 2010, 11thJan, 2001, 11thJan, 2009, 11thJan, 2002, T2 ……. T1 T11 T10

  22. Experiments • Datasets • Findings from the study of trust evolution • Can eTrust help improve trust related applications? - Rating Prediction - Trust Prediction

  23. Speed of Change of Trust • The evolution speed of an open triad is 6.12 times of that of a closed triad

  24. User preferences drift over time

  25. The speed of change varies with people and facets

  26. Experiments • Datasets • Findings from the study of trust evolution • Can eTrust help improve trust related applications? - Rating Prediction - Trust Prediction

  27. Experiments • Datasets • Findings from the study of trust evolution • Can eTrust help improve trust related applications? - Rating Prediction - Trust Prediction

  28. Applications of eTrust: Rating Prediction • Given ratings before T, we predict ratings in T+1 as,

  29. Testing Datasets • We further divide data in T11into two testing datasets - N: the ratings involved in new items or new users(10.06%) - K: the remaining ratings

  30. Comparison of Rating Prediction

  31. Experiments • Datasets • Findings from the study of trust evolution • Can eTrust help improve trust related applications? - Rating Prediction - Trust Prediction

  32. Applications of eTrust: Trust Prediction • The likelihood of trust establishing is estimated as,

  33. Testing Datasets • We also divide data in T11into two testing datasets - E: trust relations established among existing users - N: trust relations involved in new users (23.51%)

  34. Comparison of Trust Prediction

  35. Future Work • Seek more applications for eTrust - Ranking evolution - Recommendation systems - Helpfulness prediction • Generalize eTrust to other online worlds - e-commerce

  36. Questions Acknowledgments: This work is, in part, sponsored by ARO via a grant (#025071). Comments and suggestions from DMML members and reviewers are greatly appreciated.

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