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arxiv 1607.02754 v1 pith:ZMEXALDX submitted 2016-07-10 cs.IR

Hybrid Recommender System Based on Personal Behavior Mining

classification cs.IR
keywords recommenderbehaviorhybridmodelpatternalgorithmappliedcollaborative
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Recommender systems are mostly well known for their applications in e-commerce sites and are mostly static models. Classical personalized recommender algorithm includes item-based collaborative filtering method applied in Amazon, matrix factorization based collaborative filtering algorithm from Netflix, etc. In this article, we hope to combine traditional model with behavior pattern extraction method. We use desensitized mobile transaction record provided by T-mall, Alibaba to build a hybrid dynamic recommender system. The sequential pattern mining aims to find frequent sequential pattern in sequence database and is applied in this hybrid model to predict customers' payment behavior thus contributing to the accuracy of the model.

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