Preference networks: probabilistic models for recommendation systems
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conference contribution
posted on 2024-06-03, 17:51 authored by TT Truyen, DQ Phung, Svetha VenkateshSvetha VenkateshRecommender systems are important to help users select relevant and personalised information over massive amounts of data available. We propose an unified framework called Preference Network (PN) that jointly models various types of domain knowledge for the task of recommendation. The PN is a probabilistic model that systematically combines both content-based filtering and collaborative filtering into a single conditional Markov random field. Once estimated, it serves as a probabilistic database that supports various useful queries such as rating prediction and top-N recommendation. To handle the challenging problem of learning large networks of users and items, we employ a simple but effective pseudo-likelihood with regularisation. Experiments on the movie rating data demonstrate the merits of the PN. © 2007, Australian Computer Society, Inc.
History
Volume
70Pagination
195-202Location
Gold Coast, Qld.Start date
2007-12-03End date
2007-12-04ISSN
1445-1336ISBN-13
9781920682514Language
engPublication classification
EN.1 Other conference paperTitle of proceedings
AusDM 07 : Proceedings of the 6th Australasian Conference on Data Mining and AnalyticsEvent
Institute of Analytics Professionals of Australia. Conference (6th : 2007 : Gold Coast, Qld.)Publisher
Australian Computer SocietyUsage metrics
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