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Conversational collaborative recommendation - an experimental analysis
Author(s)
Date Issued
2005-11
Date Available
2013-10-01T09:08:30Z
Abstract
Traditionally, collaborative recommender systems have been based on a single-shot model of recommendation where a single set of recommendations is generated based on a user's (past) stored preferences. However, content-based recommender system research has begun to look towards more conversational models of recommendation, where the user is actively engaged in directing search at recommendation time. Such interactions can range from high-level dialogues with the user, possibly in natural language, to more simple interactions where the user is, for example, asked to indicate a preference for one of k suggested items. Importantly, the feedback attained from these interactions can help to differentiate between the user's long-term stored preferences, and her current (short-term) requirements, which may be quite different. We argue that such interactions can also be beneficial to collaborative recommendation and provide experimental evidence to support this claim.
Type of Material
Journal Article
Publisher
Springer
Journal
Artificial Intelligence Review
Volume
24
Issue
3-4
Start Page
301
End Page
308
Copyright (Published Version)
2005, Springer Netherlands
Language
English
Status of Item
Peer reviewed
This item is made available under a Creative Commons License
File(s)
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Name
paper45.pdf
Size
581.7 KB
Format
Adobe PDF
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