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M. Ackerman, D. Billsus, S. Gaffney, S. Hettich, G. Khoo, D. Kim, R. Klefstad, C.

M. Ackerman, D. Billsus, S. Gaffney, S. Hettich, G. Khoo, D. Kim, R. Klefstad, C. Lowe, A. Ludeman, J. Muramatsu, K. Omori, M. Pazzani1, D. Semler, B. Starr, & P. Yap Department of Information and Computer Science University of California, Irvine.

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M. Ackerman, D. Billsus, S. Gaffney, S. Hettich, G. Khoo, D. Kim, R. Klefstad, C.

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  1. M. Ackerman, D. Billsus, S. Gaffney, S. Hettich, G. Khoo, D. Kim, R. Klefstad, C. Lowe, A. Ludeman, J. Muramatsu, K. Omori, M. Pazzani1, D. Semler, B. Starr, & P. Yap Department of Information and Computer Science University of California, Irvine Learning Probabilistic User Profiles: Interesting Web Sites, Notifying User of Relevant Changes to Web Pages, and Locating Grant Opportunities Adaptive Web – Spring 2009 Asli Yazagan

  2. Introduction 3 agents that helps user to find interesting information • Syskill & Webert • Long-term information seeking goals • DICA • Monitor user-specified web pages and notify the user only for significant changes. • GrantLearner • Notifies an individual of new research grant opportunities that meet the learned profile of the individual’s research interests.

  3. Syskill & Webert • A user-given topic name and an index page • Users feedbacks to identify user interest • Used profile to calculate the probability that any webpage is interesting to the user. • Represent interest as keyword vectors. • Naive Bayesian is used to revise the profile

  4. Experiment & Result • Question: How accuracy would be learned user’s preferences when data from several topics are combined? • Polled pages from 5 topics rated by a single user and create a collection over 450 documents. • User rated % 69.5 of these documents as cold. • Result: Asking user to provide a topic and learning a separate profile per topic is essential for this system. • Problem : words that are informative in a domain are irrelevant for others.

  5. Do-I-Care • Creates and maintains a web page for each topic and report its findings. Other users using the system can monitor such a web pages to be notified when another user’s agent has found an interesting change on the web. • Questions: • When should a user revisit a known site for new information ? • How does a user share new information with others who may be interested ?

  6. Do-I-Care • User defined target pages. • Identify changes • Decide it is interesting or not • Notify user • Accept relevance feedback • Facilitate information sharing

  7. Grant Learner • System learns to distinguish between interesting and uninteresting funding opportunities based on user’s ratings of the descriptions.

  8. Research Work • Goal: to reduce overall amount of effort required by a user to get useful results from the agent. • Idea: to find additional information to determine which word should be use for features in the profile? • Asking to user • Using lexical knowledge [WordNet]

  9. Experiment

  10. Using Lexical Information

  11. Future Directions • Changes Syskill& Webert interface that allows users to share their profiles with other users. People can publish their profiles and they can be used by other people interested in someone’s area of expertise. • Similar approach might be used in education settings. Instructors train a profile based on their judgments about relevance of items to a class they are teaching. These profiles could be given to students, who obtain an “automated information guide” for their information needs with respect to the class they are taking.

  12. Questions ?

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