Concepedia

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Collaborative Filtering with Maximum Entropy

31

Citations

11

References

2004

Year

Abstract

As users navigate through online document collections on high-volume Web servers, they depend on good recommendations. We present a novel maximum-entropy algorithm for generating accurate recommendations and a data-clustering approach for speeding up model training. Recommender systems attempt to automate the process of "word of mouth" recommendations within a community. Typical application environments such as online shops and search engines have many dynamic aspects.

References

YearCitations

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