Deep collaborative filtering with social promoter score-based user-item interaction: a new perspective in recommendation

被引:0
作者
Supriyo Mandal
Abyayananda Maiti
机构
[1] Indian Institute of Technology Patna,Department of Computer Science, Engineering
来源
Applied Intelligence | 2021年 / 51卷
关键词
Recommendation system; User-item interaction score; Review network; Social promoter score; View activity; Deep neural model with attention network;
D O I
暂无
中图分类号
学科分类号
摘要
Most of the existing recommender systems understand the preference level of users based on user-item interaction ratings. Rating-based recommendation systems mostly ignore negative users/reviewers (who give poor ratings). There are two types of negative users. Some negative users give negative or poor ratings randomly, and some negative users give ratings according to the quality of items. Some negative users, who give ratings according to the quality of items, are known as reliable negative users, and they are crucial for a better recommendation. Similar characteristics are also applicable to positive users. From a poor reflection of a user to a specific item, the existing recommender systems presume that this item is not in the user’s preferred category. That may not always be correct. We should investigate whether the item is not in the user’s preferred category, whether the user is dissatisfied with the quality of a favorite item or whether the user gives ratings randomly/casually. To overcome this problem, we propose a Social Promoter Score (SPS)-based recommendation. We construct two user-item interaction matrices with users’ explicit SPS value and users’ view activities as implicit feedback. With these matrices as inputs, our attention layer-based deep neural model deepCF_SPS learns a common low-dimensional space to present the features of users and items and understands the way users rate items. Extensive experiments on online review datasets present that our method can be remarkably futuristic compared to some popular baselines. The empirical evidence from the experimental results shows that our model is the best in terms of scalability and runtime over the baselines.
引用
收藏
页码:7855 / 7880
页数:25
相关论文
共 40 条
  • [1] Moreno MN(2016)Web mining based framework for solving usual problems in recommender systems. a case study for movies’ recommendation Neurocomputing 176 72-80
  • [2] Segrera S(2018)Heterogeneous information network embedding for recommendation IEEE Trans Knowl Data Eng 31 357-370
  • [3] López VF(2016)Improving matrix approximation for recommendation via a clustering-based reconstructive method Neurocomputing 173 912-920
  • [4] Muñoz MD(2019)Distributed representations based collaborative filtering with reviews Appl Intell 49 2623-2640
  • [5] Sánchez ÁL(2018)Boolean kernels for collaborative filtering in top-n item recommendation Neurocomputing 286 214-225
  • [6] Shi C(2018)Matrix factorization for recommendation with explicit and implicit feedback Knowl-Based Syst 158 109-117
  • [7] Hu B(2018)Finite-time synchronization of fractional-order complex networks via hybrid feedback control Neurocomputing 320 69-75
  • [8] Zhao WX(2020)Efficient neural matrix factorization without sampling for recommendation ACM Trans Inf Syst (TOIS) 38 1-28
  • [9] Philip SY(2019)A deep variational matrix factorization method for recommendation on large scale sparse dataset Neurocomputing 334 206-218
  • [10] Ji K(2020)Deep attention user-based collaborative filtering for recommendation Neurocomputing 383 57-68