Attribute-aware multi-task recommendation

User-item rating interactions in the recommender system have a deep potential connection with the friend relationships in the social network. In short, users who like the same kind of items may be potential friends in social network, and vice versa, friends in social networks tend to like similar items. Although the above-mentioned two kinds of interactive information can complement and inspire each other, either of them is sparse, which is still not enough to make accurate recommendations. In order to make up for this defect, we then mine useful information from attribute information, learning more informative node representation. In this paper, we explore attribute learning and mutual utilization, complementation and inspiration between social data and rating data. We propose a generic Attribute-Aware Multi-task Recommendation framework (AAMR) for rating prediction and social prediction, which learns representations for users and items by preserving both rating data and social data and attribute information, so as to conduct both rating prediction and trust relationship prediction tasks. Because many users are both in the rating matrix and in social networks, in the common learning, the two tasks will share the embedding of users, which makes the social data and rating data enrich each other’s semantics and alleviate each other’s sparsity. To justify our proposal, we conduct extensive experiments on a real-world dataset. Compared to the state-of-the-art rating and trust prediction approaches, AAMR can learn more informative representations, achieving substantial gains on both tasks.

[1]  Aidong Zhang,et al.  Collaborative restricted Boltzmann machine for social event recommendation , 2016, 2016 IEEE/ACM International Conference on Advances in Social Networks Analysis and Mining (ASONAM).

[2]  Guolong Chen,et al.  Human action recognition via multi-task learning base on spatial-temporal feature , 2015, Inf. Sci..

[3]  Junghwan Kim,et al.  UniWalk: Explainable and Accurate Recommendation for Rating and Network Data , 2017, ArXiv.

[4]  Yixin Su,et al.  MMF: Attribute Interpretable Collaborative Filtering , 2019, 2019 International Joint Conference on Neural Networks (IJCNN).

[5]  Matthew D. Hoffman,et al.  Variational Autoencoders for Collaborative Filtering , 2018, WWW.

[6]  Yuzhen Niu,et al.  Fast Gaussian kernel learning for classification tasks based on specially structured global optimization , 2014, Neural Networks.

[7]  Yuzhen Niu,et al.  Fitting-based optimisation for image visual salient object detection , 2017, IET Comput. Vis..

[8]  Mohamed Nadif,et al.  Social regularized von Mises–Fisher mixture model for item recommendation , 2017, Data Mining and Knowledge Discovery.

[9]  Henry Leung,et al.  Performance analysis of statistical optimal data fusion algorithms , 2014, Inf. Sci..

[10]  Junwei Han,et al.  Generative Adversarial Network Based Heterogeneous Bibliographic Network Representation for Personalized Citation Recommendation , 2018, AAAI.

[11]  Tinghuai Ma,et al.  LGIEM: Global and local node influence based community detection , 2020, Future Gener. Comput. Syst..

[12]  Jun Li,et al.  Towards Context-aware Social Recommendation via Individual Trust , 2017, Knowl. Based Syst..

[13]  Shao-Yuan Li,et al.  BayDNN: Friend Recommendation with Bayesian Personalized Ranking Deep Neural Network , 2017, CIKM.

[14]  Yong Yu,et al.  SVDFeature: a toolkit for feature-based collaborative filtering , 2012, J. Mach. Learn. Res..

[15]  Archana S. Vaidya,et al.  Privacy-Preserving Profile Matching System for Trust-Aware Personalized User Recommendations in Social Networks , 2017 .

[16]  Jung-Woo Ha,et al.  Reinforcement Learning based Recommender System using Biclustering Technique , 2018, ArXiv.

[17]  Archana S. Vaidya,et al.  A Review on Trust-Aware and Privacy Preserving Profile Matching System for Personalized User Recommendations in Social networks , 2014 .

[18]  Guolong Chen,et al.  Multilayer Obstacle-Avoiding X-Architecture Steiner Minimal Tree Construction Based on Particle Swarm Optimization , 2015, IEEE Transactions on Cybernetics.

[19]  Zhiwei Wang,et al.  Recommender Systems with Heterogeneous Side Information , 2019, WWW.

[20]  Florian Strub,et al.  Collaborative Filtering with Stacked Denoising AutoEncoders and Sparse Inputs , 2015, NIPS 2015.

[21]  Iraklis Varlamis,et al.  A Trust-Aware System for Personalized User Recommendations in Social Networks , 2014, IEEE Transactions on Systems, Man, and Cybernetics: Systems.

[22]  Kai Liu,et al.  Deep Item-based Collaborative Filtering for Top-N Recommendation , 2018, ACM Trans. Inf. Syst..

[23]  Chao Liu,et al.  Recommender systems with social regularization , 2011, WSDM '11.

[24]  Kwai-Sang Chin,et al.  Multi-attribute search framework for optimizing extended belief rule-based systems , 2016, Inf. Sci..

[25]  Wenwu Zhu,et al.  Structural Deep Network Embedding , 2016, KDD.

[26]  Qishan Zhang,et al.  Community discovery by propagating local and global information based on the MapReduce model , 2015, Inf. Sci..

[27]  Guolong Chen,et al.  XGRouter: high-quality global router in X-architecture with particle swarm optimization , 2015, Frontiers of Computer Science.

[28]  Dietmar Jannach,et al.  Sequence-Aware Recommender Systems , 2018, UMAP.

[29]  Martin Ester,et al.  A matrix factorization technique with trust propagation for recommendation in social networks , 2010, RecSys '10.

[30]  Yuanlong Yu,et al.  Sparse coding extreme learning machine for classification , 2017 .

[31]  Michael R. Lyu,et al.  Learning to recommend with social trust ensemble , 2009, SIGIR.

[32]  Wenzhong Guo,et al.  Robust co-clustering via dual local learning and high-order matrix factorization , 2017, Knowl. Based Syst..

[33]  Yang Xiao,et al.  Energy-efficient node scheduling algorithms for wireless sensor networks using Markov Random Field model , 2016, Inf. Sci..

[34]  Xiangnan He,et al.  Attentive Collaborative Filtering: Multimedia Recommendation with Item- and Component-Level Attention , 2017, SIGIR.

[35]  Feiping Nie,et al.  Trust prediction via aggregating heterogeneous social networks , 2012, CIKM.

[36]  Andrew McCallum,et al.  Ask the GRU: Multi-task Learning for Deep Text Recommendations , 2016, RecSys.

[37]  Qing Li,et al.  Deep Modeling of Social Relations for Recommendation , 2018, AAAI.

[38]  Zhaohui Wu,et al.  On Deep Learning for Trust-Aware Recommendations in Social Networks , 2017, IEEE Transactions on Neural Networks and Learning Systems.

[39]  Yuanlong Yu,et al.  Sparse coding extreme learning machine for classification , 2017, Neurocomputing.

[40]  Xiaoyu Du,et al.  Adversarial Personalized Ranking for Recommendation , 2018, SIGIR.

[41]  Jia Wang,et al.  Event-triggered dissipative control for networked stochastic systems under non-uniform sampling , 2018, Inf. Sci..

[42]  Guolong Chen,et al.  A PSO-based timing-driven Octilinear Steiner tree algorithm for VLSI routing considering bend reduction , 2015, Soft Comput..

[43]  Ruslan Salakhutdinov,et al.  Probabilistic Matrix Factorization , 2007, NIPS.

[44]  Wenzhong Guo,et al.  A unified algorithm based on HTS and self-adapting PSO for the construction of octagonal and rectilinear SMT , 2019, Soft Computing.

[45]  Jürgen Ziegler,et al.  Sequential User-based Recurrent Neural Network Recommendations , 2017, RecSys.

[46]  Michael R. Lyu,et al.  SoRec: social recommendation using probabilistic matrix factorization , 2008, CIKM '08.

[47]  Tat-Seng Chua,et al.  Neural Collaborative Filtering , 2017, WWW.

[48]  Barry Smyth,et al.  Why I like it: multi-task learning for recommendation and explanation , 2018, RecSys.

[49]  Jian Tang,et al.  Session-Based Social Recommendation via Dynamic Graph Attention Networks , 2019, WSDM.

[50]  Mohsen Guizani,et al.  Interest-Related Item Similarity Model Based on Multimodal Data for Top-N Recommendation , 2019, IEEE Access.

[51]  Neil Yorke-Smith,et al.  TrustSVD: Collaborative Filtering with Both the Explicit and Implicit Influence of User Trust and of Item Ratings , 2015, AAAI.

[52]  Jun Wang,et al.  A Complex-Valued Projection Neural Network for Constrained Optimization of Real Functions in Complex Variables , 2015, IEEE Transactions on Neural Networks and Learning Systems.

[53]  Fabio Crestani,et al.  Learning to Rank with Trust and Distrust in Recommender Systems , 2017, RecSys.

[54]  Donghyun Kim,et al.  Convolutional Matrix Factorization for Document Context-Aware Recommendation , 2016, RecSys.

[55]  Zechao Li,et al.  Nonpeaked Discriminant Analysis for Data Representation , 2019, IEEE Transactions on Neural Networks and Learning Systems.

[56]  Athanasios V. Vasilakos,et al.  Data Mining for the Internet of Things: Literature Review and Challenges , 2015, Int. J. Distributed Sens. Networks.

[57]  S. C. Hui,et al.  Translational Recommender Networks , 2017, ArXiv.

[58]  Yuan He,et al.  Graph Neural Networks for Social Recommendation , 2019, WWW.

[59]  Xing Xie,et al.  Session-based Recommendation with Graph Neural Networks , 2018, AAAI.

[60]  Yongfeng Zhang,et al.  Relational Collaborative Filtering: Modeling Multiple Item Relations for Recommendation , 2019, SIGIR.

[61]  Guolong Chen,et al.  A multi-label classification algorithm based on kernel extreme learning machine , 2017, Neurocomputing.

[62]  Lina Yao,et al.  Deep Learning Based Recommender System , 2017, ACM Comput. Surv..

[63]  Yang Yang,et al.  Collaborative Filtering with Social Exposure: A Modular Approach to Social Recommendation , 2017, AAAI.

[64]  Cihan Kaleli,et al.  A review on deep learning for recommender systems: challenges and remedies , 2018, Artificial Intelligence Review.

[65]  Guannan Liu,et al.  Do Co-purchases Reveal Preferences? Explainable Recommendation with Attribute Networks , 2019, ArXiv.

[66]  Jiming Liu,et al.  Proceedings of the Twenty-Third International Joint Conference on Artificial Intelligence Social Collaborative Filtering by Trust , 2022 .

[67]  Jun Tan,et al.  Stabilizing Reinforcement Learning in Dynamic Environment with Application to Online Recommendation , 2018, KDD.

[68]  Qiao Liu,et al.  STAMP: Short-Term Attention/Memory Priority Model for Session-based Recommendation , 2018, KDD.

[69]  Shun-Yao Shih,et al.  Automatic, Personalized, and Flexible Playlist Generation using Reinforcement Learning , 2018, ISMIR.