Personalized Transfer of User Preferences for Cross-domain Recommendation

Cold-start problem is still a very challenging problem in recommender systems. Fortunately, the interactions of the cold-start users in the auxiliary source domain can help cold-start recommendations in the target domain. How to transfer user’s preferences from the source domain to the target domain, is the key issue in Crossdomain Recommendation (CDR) which is a promising solution to deal with the cold-start problem. Most existing methods model a common preference bridge to transfer preferences for all users. Intuitively, since preferences vary from user to user, the preference bridges of different users should be different. Along this line, we propose a novel framework named Personalized Transfer of User Preferences for Cross-domain Recommendation (PTUPCDR). Specifically, a meta network fed with users’ characteristic embeddings is learned to generate personalized bridge functions to achieve personalized transfer of preferences for each user. To learn the meta network stably, we employ a task-oriented optimization procedure. With the meta-generated personalized bridge function, the user’s preference embedding in the source domain can be transformed into the target domain, and the transformed user preference embedding can be utilized as the initial embedding for the cold-start user in the target domain. Using large real-world datasets, we conduct extensive experiments to evaluate the effectiveness of PTUPCDR on both cold-start and warm-start stages. The code has been available at https://github.com/easezyc/WSDM2022-PTUPCDR.

[1]  Tao Qin,et al.  Generalizing to Unseen Domains: A Survey on Domain Generalization , 2021, IJCAI.

[2]  Fuzhen Zhuang,et al.  Domain Adaptation with Category Attention Network for Deep Sentiment Analysis , 2020, WWW.

[3]  Deqing Wang,et al.  Aligning Domain-Specific Distribution and Classifier for Cross-Domain Classification from Multiple Sources , 2019, AAAI.

[4]  Hyunsouk Cho,et al.  MeLU: Meta-Learned User Preference Estimator for Cold-Start Recommendation , 2019, KDD.

[5]  Pan Li,et al.  DDTCDR: Deep Dual Transfer Cross Domain Recommendation , 2019, WSDM.

[6]  Philip S. Yu,et al.  Visual Domain Adaptation with Manifold Embedded Distribution Alignment , 2018, ACM Multimedia.

[7]  Fuzhen Zhuang,et al.  Policy Gradients for Contextual Recommendations , 2018, WWW.

[8]  Kaisheng Yao,et al.  Robust Transfer Learning for Cross-domain Collaborative Filtering Using Multiple Rating Patterns Approximation , 2018, WSDM.

[9]  Yehuda Koren,et al.  Matrix Factorization Techniques for Recommender Systems , 2009, Computer.

[10]  Bo Zhang,et al.  Internal and Contextual Attention Network for Cold-start Multi-channel Matching in Recommendation , 2020, IJCAI.

[11]  Qing He,et al.  Warm Up Cold-start Advertisements: Improving CTR Predictions via Learning to Learn ID Embeddings , 2019, SIGIR.

[12]  Chunyan Miao,et al.  Learning Personalized Itemset Mapping for Cross-Domain Recommendation , 2020, IJCAI.

[13]  Sergey Levine,et al.  Model-Agnostic Meta-Learning for Fast Adaptation of Deep Networks , 2017, ICML.

[14]  Yong Li,et al.  Image Feature Learning for Cold Start Problem in Display Advertising , 2015, IJCAI.

[15]  Xiaolong Jin,et al.  Cross-Domain Recommendation: An Embedding and Mapping Approach , 2017, IJCAI.

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

[17]  Oriol Vinyals,et al.  Matching Networks for One Shot Learning , 2016, NIPS.

[18]  Shuicheng Yan,et al.  Neural Style Transfer via Meta Networks , 2018, 2018 IEEE/CVF Conference on Computer Vision and Pattern Recognition.

[19]  Hongbo Deng,et al.  CATN: Cross-Domain Recommendation for Cold-Start Users via Aspect Transfer Network , 2020, SIGIR.

[20]  Zhe Zhao,et al.  Modeling Task Relationships in Multi-task Learning with Multi-gate Mixture-of-Experts , 2018, KDD.

[21]  Fuzhen Zhuang,et al.  Transfer-Meta Framework for Cross-domain Recommendation to Cold-Start Users , 2021, SIGIR.

[22]  Feng Zhu,et al.  A Deep Framework for Cross-Domain and Cross-System Recommendations , 2018, IJCAI.

[23]  Hui Xiong,et al.  A Comprehensive Survey on Transfer Learning , 2019, Proceedings of the IEEE.

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

[25]  Trevor Darrell,et al.  DeCAF: A Deep Convolutional Activation Feature for Generic Visual Recognition , 2013, ICML.

[26]  Paul Covington,et al.  Deep Neural Networks for YouTube Recommendations , 2016, RecSys.

[27]  Ruobing Xie,et al.  Adversarial Feature Translation for Multi-domain Recommendation , 2021, KDD.

[28]  Guorui Zhou,et al.  Deep Interest Network for Click-Through Rate Prediction , 2017, KDD.

[29]  Ingrid Zukerman,et al.  Personalised rating prediction for new users using latent factor models , 2011, HT '11.

[30]  Jimmy Ba,et al.  Adam: A Method for Stochastic Optimization , 2014, ICLR.

[31]  Fuzhen Zhuang,et al.  Deep Subdomain Adaptation Network for Image Classification , 2020, IEEE Transactions on Neural Networks and Learning Systems.

[32]  Richard S. Zemel,et al.  Prototypical Networks for Few-shot Learning , 2017, NIPS.

[33]  Fuzhen Zhuang,et al.  Learning to Expand Audience via Meta Hybrid Experts and Critics for Recommendation and Advertising , 2021, KDD.

[34]  Wei Chu,et al.  A contextual-bandit approach to personalized news article recommendation , 2010, WWW '10.

[35]  Geoffrey J. Gordon,et al.  Relational learning via collective matrix factorization , 2008, KDD.

[36]  Fuzhen Zhuang,et al.  Modeling the Sequential Dependence among Audience Multi-step Conversions with Multi-task Learning in Targeted Display Advertising , 2021, KDD.

[37]  Minyi Guo,et al.  RippleNet: Propagating User Preferences on the Knowledge Graph for Recommender Systems , 2018, CIKM.

[38]  Zi Huang,et al.  From Zero-Shot Learning to Cold-Start Recommendation , 2019, AAAI.

[39]  Ruobing Xie,et al.  Contrastive Cross-domain Recommendation in Matching , 2021, ArXiv.

[40]  Dongha Lee,et al.  Semi-Supervised Learning for Cross-Domain Recommendation to Cold-Start Users , 2019, CIKM.

[41]  Tat-Seng Chua,et al.  Attentional Factorization Machines: Learning the Weight of Feature Interactions via Attention Networks , 2017, IJCAI.

[42]  Yang Xu,et al.  Deeply Fusing Reviews and Contents for Cold Start Users in Cross-Domain Recommendation Systems , 2019, AAAI.

[43]  Fuzhen Zhuang,et al.  Learning to Warm Up Cold Item Embeddings for Cold-start Recommendation with Meta Scaling and Shifting Networks , 2021, SIGIR.

[44]  Qiang Yang,et al.  Transfer Learning in Collaborative Filtering for Sparsity Reduction , 2010, AAAI.