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A Survey on Transfer Learning for Cross-Domain Recommendation
PhD Qualifying Examination Title: "A Survey on Transfer Learning for Cross-Domain Recommendation" by Mr. Guangneng HU Abstract: Recommender systems (RSs) assist consumers in tackling the information overload and long-tail issues among millions of products and services. Collaborative filtering (CF) is the key technique for RSs. CF exploits user-item behavior interactions (e.g., clicks) only and suffers from the data sparsity issue. The cross-domain (CD) recommendation technique is an effective way of alleviating the data sparse issue in RSs by leveraging the knowledge from relevant domains. This matches the core idea of transfer learning (TL) which leverages knowledge from a source domain to improve predictive performance in a target domain that has no sufficient labeled data. This survey introduces transferring knowledge approaches for CD recommendation, including feature/parameter based transfer, instance relationship transfer, and pattern/model based transfer. With the success of deep learning (DL) for learning high-level representations, there is a tendency towards applying DL for CD RSs, leading to the deep transfer learning for cross-domain recommendation. This survey also introduces these research frontiers and points out some promising directions for further investigation. Date: Thursday, 28 June 2018 Time: 5:30pm - 7:30pm Venue: Room 5560 Lifts 27/28 Committee Members: Prof. Qiang Yang (Supervisor) Prof. Huamin Qu (Chairperson) Dr. Yangqiu Song Dr. Jianfeng Cai (MATH) **** ALL are Welcome ****