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Mining the Real-Time Web: A Novel Approach to Product Recommendation
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kbs-2010-revised copy.pdf | 1015.99 KB |
Date Issued
May 2012
Date Available
17T14:26:33Z August 2012
Abstract
Real-time web (RTW) services such as Twitter allow users to express their opinions and interests, often expressed in the form of short text messages providing abbreviated and highly personalized commentary in real-time. Although this RTW data is far from the structured data (movie ratings, product features, etc.) that is familiar to recommender systems research, it can contain useful consumer reviews on products, services and brands. This paper describes how Twitter-like short-form messages can be leveraged as a source of indexing and retrieval information for product recommendation. In particular, we describe how users and products can be represented from the terms used in their associated reviews. An evaluation performed on four different product datasets from the Blippr service shows the potential of this type of recommendation knowledge, and the experiments show that our proposed approach outperforms a more traditional collaborative-filtering based approach.
Sponsorship
Science Foundation Ireland
Type of Material
Journal Article
Publisher
Elsevier
Journal
Knowledge-Based Systems
Volume
29
Issue
May 2012
Start Page
3
End Page
11
Copyright (Published Version)
2012 Elsevier B.V
Subject – LCSH
User-generated content
Microblogs
Recommender systems (Information filtering)
Web 2.0
Language
English
Status of Item
Peer reviewed
This item is made available under a Creative Commons License
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