A Personalized Recommendation Model Based on Contextual Information

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Abstract:

Personalized recommendation offers a new way to solve the problem of information overload. In order to effectively build user model and improve the effect of personalized recommendation, this paper proposes a novel model for mining contextual information of non-structure text, and insects the contextual information into user model, which enriches user model. The experiment results shown that the model can greatly improve the recommendation performance when the model is applied to contextual data of the recommender system in hotel.

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1530-1533

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January 2015

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© 2015 Trans Tech Publications Ltd. All Rights Reserved

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