DBRec: Dual-Bridging Recommendation via Discovering Latent Groups

In recommender systems, the user-item interaction data is usually sparse and not sufficient for learning comprehensive user/item representations for recommendation. To address this problem, we propose a novel dual-bridging recommendation model (DBRec). DBRec performs latent user/item group discovery simultaneously with collaborative filtering, and interacts group information with users/items for bridging similar users/items. Therefore, a user's preference over an unobserved item, in DBRec, can be bridged by the users within the same group who have rated the item, or the user-rated items that share the same group with the unobserved item. In addition, we propose to jointly learn user-user group (item-item group) hierarchies, so that we can effectively discover latent groups and learn compact user/item representations. We jointly integrate collaborative filtering, latent group discovering and hierarchical modelling into a unified framework, so that all the model parameters can be learned toward the optimization of the objective function. We validate the effectiveness of the proposed model with two real datasets, and demonstrate its advantage over the state-of-the-art recommendation models with extensive experiments.

[1]  Nadia Magnenat-Thalmann,et al.  Time-aware point-of-interest recommendation , 2013, SIGIR.

[2]  Shie Mannor,et al.  Community Detection via Measure Space Embedding , 2015, NIPS.

[3]  Jialie Shen,et al.  On Effective Location-Aware Music Recommendation , 2016, ACM Trans. Inf. Syst..

[4]  Kyong-Ho Lee,et al.  Knowledge Graph Completion by Context-Aware Convolutional Learning with Multi-Hop Neighborhoods , 2018, CIKM.

[5]  Yiqun Liu,et al.  Social Attentional Memory Network: Modeling Aspect- and Friend-Level Differences in Recommendation , 2019, WSDM.

[6]  Thomas Lukasiewicz,et al.  Tag-Aware Personalized Recommendation Using a Hybrid Deep Model , 2017, IJCAI.

[7]  Quoc V. Le,et al.  Grounded Compositional Semantics for Finding and Describing Images with Sentences , 2014, TACL.

[8]  David M. Blei,et al.  Modeling User Exposure in Recommendation , 2015, WWW.

[9]  Yu Zhang,et al.  CoNet: Collaborative Cross Networks for Cross-Domain Recommendation , 2018, UMCit@KDD.

[10]  Brian C. Lovell,et al.  What is the best way for extracting meaningful attributes from pictures? , 2016, Pattern Recognit..

[11]  Chao Yang,et al.  Attentive Group Recommendation , 2018, SIGIR.

[12]  Hwee Tou Ng,et al.  An Unsupervised Neural Attention Model for Aspect Extraction , 2017, ACL.

[13]  Weitong Chen,et al.  Multi-source Multi-net Micro-video Recommendation with Hidden Item Category Discovery , 2019, DASFAA.

[14]  Mohan S. Kankanhalli,et al.  Aspect-Aware Latent Factor Model: Rating Prediction with Ratings and Reviews , 2018, WWW.

[15]  Bin Shen,et al.  Collaborative Memory Network for Recommendation Systems , 2018, SIGIR.

[16]  Hong Yang,et al.  Recommendation with Multi-Source Heterogeneous Information , 2018, IJCAI.

[17]  Huan Liu,et al.  Exploiting Emotion on Reviews for Recommender Systems , 2018, AAAI.

[18]  Tat-Seng Chua,et al.  Item Silk Road: Recommending Items from Information Domains to Social Users , 2017, SIGIR.

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

[20]  Xing Xie,et al.  GeoMF: joint geographical modeling and matrix factorization for point-of-interest recommendation , 2014, KDD.

[21]  Lei Yu,et al.  A Hybrid Collaborative Filtering Model with Deep Structure for Recommender Systems , 2017, AAAI.

[22]  Minyi Guo,et al.  Joint Topic-Semantic-aware Social Recommendation for Online Voting , 2017, CIKM.

[23]  Kevin Chen-Chuan Chang,et al.  Learning Community Embedding with Community Detection and Node Embedding on Graphs , 2017, CIKM.

[24]  Snigdha Chaturvedi,et al.  Feuding Families and Former Friends: Unsupervised Learning for Dynamic Fictional Relationships , 2016, NAACL.

[25]  Huan Liu,et al.  What Your Images Reveal: Exploiting Visual Contents for Point-of-Interest Recommendation , 2017, WWW.

[26]  Xinghuo Yu,et al.  Integrating Demand Response and Renewable Energy In Wholesale Market , 2018, IJCAI.

[27]  Craig MacDonald,et al.  A Deep Recurrent Collaborative Filtering Framework for Venue Recommendation , 2017, CIKM.

[28]  Jeffrey Dean,et al.  Distributed Representations of Words and Phrases and their Compositionality , 2013, NIPS.

[29]  Xu Chen,et al.  Joint Representation Learning for Top-N Recommendation with Heterogeneous Information Sources , 2017, CIKM.

[30]  Mohan S. Kankanhalli,et al.  MMALFM , 2018, ACM Trans. Inf. Syst..

[31]  Xinghuo Yu,et al.  Data-Driven Charging Strategy of PEVs Under Transformer Aging Risk , 2018, IEEE Transactions on Control Systems Technology.

[32]  Dong-Hong Ji,et al.  PARL: Let Strangers Speak Out What You Like , 2018, CIKM.

[33]  Linpeng Huang,et al.  DELF: A Dual-Embedding based Deep Latent Factor Model for Recommendation , 2018, IJCAI.

[34]  Huan Liu,et al.  Exploiting Local and Global Social Context for Recommendation , 2013, IJCAI.

[35]  Jiawei Han,et al.  Bridging Collaborative Filtering and Semi-Supervised Learning: A Neural Approach for POI Recommendation , 2017, KDD.

[36]  Xiaoyu Du,et al.  Outer Product-based Neural Collaborative Filtering , 2018, IJCAI.

[37]  Feiping Nie,et al.  Multi-Modal Joint Clustering With Application for Unsupervised Attribute Discovery , 2018, IEEE Transactions on Image Processing.

[38]  Geoffrey E. Hinton,et al.  Visualizing Data using t-SNE , 2008 .

[39]  Guang Li,et al.  LGA: latent genre aware micro-video recommendation on social media , 2018, Multimedia Tools and Applications.

[40]  Yuhong Guo,et al.  Learning Discriminative Recommendation Systems with Side Information , 2017, IJCAI.

[41]  Tim Weninger,et al.  ProjE: Embedding Projection for Knowledge Graph Completion , 2016, AAAI.

[42]  Atsuhiro Takasu,et al.  NPE: Neural Personalized Embedding for Collaborative Filtering , 2018, IJCAI.