会议专题

Weighted sequence loss based recurrent model for repurchase recommendation

  Next basket recommendation becomes an increasing concern.Repurchase recommendation,i.e.,predicting which products a user will buy again in a users next order,is a key subproblem.However,most conventional models are not able to extract the whole important features to describe the customers repurchase process: context information and sequential information.In our work,we firstly utilize the causal dilated convolutions and recurrent neural network to capture context information and sequential information in different ways.Furthermore,the information extracted by causal dilated convolutions and recurrent neural network is combined at each time step for recommendation.More importantly,to effectively adapt the repurchase recommendation,we introduce a weighted sequence loss,which is able to ignore invalid logloss at special time steps to guide the RNN combined with causal dilated convolutions(RCCNN)training.A deep experimentation shows that RCCNN is able to explain the customer repurchase behaviors,and provide reasonable recommendation.

Pengda Chen Jian Li

School of Computer Science,Beijing University of Posts and Telecommunications,Beijing,China

国际会议

The 2nd International Symposium on Application of Materials Science and Energy Materials (SAMSE 2018) 第二届材料科学应用与能源材料国际研讨会2018年

上海

英文

1-7

2018-12-17(万方平台首次上网日期,不代表论文的发表时间)