CS547 Human-Computer Interaction Seminar (Seminar on People, Computers, and Design)
Fridays 12:50-2:05 · Gates B01 · Open to the public Previous | Next
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January 11, 2013 You need Flash player 8+ and JavaScript enabled to view this video.
Recommender systems are inherently driven by evaluations and reviews
provided by the users of these systems. Understanding ways in which
users form judgments and produce evaluations can provide insights for
modern recommendation systems. Many on-line social applications
include mechanisms for users to express evaluations of one another, or
of the content they create. In a variety of domains, mechanisms for
evaluation allow one user to say whether he or she trusts another
user, or likes the content they produced, or wants to confer special
levels of authority or responsibility on them. We investigate a number
of fundamental ways in which user and item characteristics affect the
evaluations in online settings. For example, evaluations are not
unidimensional but include multiple aspects that all together
contribute to user's overall rating. We investigate methods for
modeling attitudes and attributes from online reviews that help us
better understand user's individual preferences. We also examine how
to create a composite description of evaluations that accurately
reflects some type of cumulative opinion of a community. Natural
applications of these investigations include predicting the evaluation
outcomes based on user characteristics and to estimate the chance of a
favorable overall evaluation from a group knowing only the attributes
of the group's members, but not their expressed opinions.
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