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Neural Review Rating Prediction with Hierarchical Attentions and Latent Factors

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arxiv 1906.01511 v1 pith:HPRBICQA submitted 2019-05-29 cs.IR cs.CL

Neural Review Rating Prediction with Hierarchical Attentions and Latent Factors

classification cs.IR cs.CL
keywords reviewsfactorattentiondifferentitemslatentmodelprediction
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Text reviews can provide rich useful semantic information for modeling users and items, which can benefit rating prediction in recommendation. Different words and reviews may have different informativeness for users or items. Besides, different users and items should be personalized. Most existing works regard all reviews equally or utilize a general attention mechanism. In this paper, we propose a hierarchical attention model fusing latent factor model for rating prediction with reviews, which can focus on important words and informative reviews. Specially, we use the factor vectors of Latent Factor Model to guide the attention network and combine the factor vectors with feature representation learned from reviews to predict the final ratings. Experiments on real-world datasets validate the effectiveness of our approach.

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