Abstract

Sparsity of rating data is a severe problem to be solved in modern recommendation researches. The fusion recommendation method is an effective solution for the problem. The method combines rating data and other types of user feedback data, such as reviews and image, to improve performance of the traditional recommendation algorithms. Some researchers have proposed fusion recommendation algorithms based on BP (Back Propagation) neural network and achieved better results. However, some existing fusion recommendation algorithms based on BP neural network still have some shortcomings. They rely on the assistance of the traditional recommendation algorithms. Moreover, the high complexity of the fusion processes of these algorithms possibly has negative impacts on the fusion effects. In this paper, we modify the fusion recommendation algorithm and propose the NNFR (neural networks fusion recommendation) model. This model improves the structure of BP neural network by specially designing the structure of network layers. User reviews and ratings can be processed in two separate sub-networks respectively and further fused in the fusion layer. The fusion features of user reviews and ratings are directly applied to perform recommendation, in order to avoid the assistance of the traditional recommendation algorithms and improve the fusing efficiency and quality. Experimental results indicate that the outstanding performance of NNFR model than comparative recommendation algorithms on rating predictions and top-k recommendations. Moreover, NNFR model can still produce high-quality recommendation results in the scenarios of sparse data.

Highlights

  • Under the background of rapid development of e-commerce, the online marketing has become more and more prosperous

  • MODEL OVERVIEW In order to fuse user reviews and ratings in recommendation model and solve the problem of data sparsity, this paper proposes a modified fusion recommendation model NNFR based on BP neural network

  • The latent vector can be used to solve the problem of data sparsity and generate more accurate recommendation results than the traditional recommendation algorithms because it integrates the information on user reviews and ratings

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Summary

INTRODUCTION

Under the background of rapid development of e-commerce, the online marketing has become more and more prosperous. H. Wang et al.: Research on BP Neural Network Recommendation Model Fusing User Reviews and Ratings two steps to realize the fusion process: (1) the first step is to extract the feature information from user feedback data by using BP neural networks; (2) the second step is to fuse the extracted feature information with rating information in the traditional recommendation algorithms (e.g. collaborative filtering) to achieve the final recommendation results. Xiao and Shen [3] proposed a model to extract the feature information from unstructured user feedback data by using the automatic encoder neural network. We make efforts to improve the fusion recommendation algorithm based on BP neural network, in order to improve the efficiency of fusion process and solve the problem of data sparsity. The NNFR model proposed can directly fuse the rating data and user reviews by using the fusion layer of the neural network without the assistance of the traditional recommendation algorithms. The semantic information extracted by LDA is more interpretable and understandable for human

RELATED WORKS
NNFR MODEL TRAINING
EVALUATION METRICS
CONCLUSION
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