Integrating Knowledge-based and Collaborative-filtering Recommender Systems
@inproceedings{Burke2000IntegratingKA, title={Integrating Knowledge-based and Collaborative-filtering Recommender Systems}, author={R. Burke}, year={2000} }
Knowledge-based and collaborative-filtering recommender systems facilitate electronic commerce by helping users find appropriate products from large catalogs. This paper discusses the strengths and weaknesses of both techniques and introduces the possibility of a hybrid recommender system that combines the two approaches. An approach is suggested in which knowledge-based techniques are used to bootstrap the collaborative filtering engine while its data pool is small, and the collaborative…
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