Abstract
Recommender systems attempt to predict items in which a user might be interested, given some information about the user's and items' profiles. Most existing recommender systems use content-based or collaborative filtering methods or hybrid methods that combine both techniques (see the sidebar for more details). We created Informed Recommender to address the problem of using consumer opinion about products, expressed online in free-form text, to generate product recommendations. Informed recommender uses prioritized consumer product reviews to make recommendations. Using text-mining techniques, it maps each piece of each review comment automatically into an ontology.
Original language | English |
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Number of pages | 9 |
Journal | IEEE Intelligent Systems |
DOIs | |
Publication status | Published - 2007 |
Keywords
- consumer behavior
- data mining
- electronic commerce
- information filtering systems
- intelligent agents (computer software)
- recommender systems (information filtering)
- text processing (computer science)