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Active Transfer Learning for Recommendation
The Hong Kong University of Science and Technology Department of Computer Science and Engineering PhD Thesis Defence Title: "Active Transfer Learning for Recommendation" By Miss Lili ZHAO Abstract A long-standing goal of recommender system is to solve data sparsity issue, where user-item preference data is not enough to train a reliable model. Significant strides have been made towards to this goal over the last few years thanks to the fast-moving in the field of data gathering, algorithms and computing infrastructure. The progress has been especially rapid in offering context information going beyond user-item preferences. The context information can be divided into two categories in terms of its resources type:  attribute information associated with users and items, and cross-domian knowledge concerning data from different but related domain. By developing methods that can effectively utilize context information for recommendation task, performance can be enhanced further. In the first part of this dissertation, we consider the problem of improving recommendation with in-domain context data. In movie recommendation, it is often the case that movie posters and stills provide us with rich knowledge for understanding movies as well as users’ preferences. For instance, user may want to watch a movie at the minute when she/he finds some released posters or still frames attractive. Unfortunately, such unique features cannot be revealed from rating data or other forms of context being used in most of existing methods. To address this, we formulate a flexible, discriminative model that is able to model both bias and regularizations by considering such features, resulting in a better understanding of movie preferences and improved recommendation performance. The second part of this dissertation tackles the problem of cooperating cross-system knowledge in recommendation. Transfer learning techniques have demonstrated promising successes in this direction. However, despite much encouraging progress, most of the advances in transfer learning still take place in the condition of fully entity correspondences between two systems. The nature of cross-system recommendation compels us to move beyond the existing paradigm of transfer learning to develop novel algorithms. Towards this end, we build methods and techniques for general transfer learning in cross-system recommendation settings, which allow us to loose the condition of "fully corresponded" entities as input, enabling to construct entity correspondence with limited budget by using active learning strategy to facilitate knowledge transfer across recommender systems. In particular, first we propose a unified framework for cross-domain recommendation. This framework allows us to identify correspondences that can bring as much knowledge as possible, then we can conduct efficient transfer model to improve recommendation quality. Second, based on the framework, we develop three solutions that iteratively select entities in the target system based on our proposed criterion to query their correspondences in the source system. We demonstrate that these solutions can take advantage of active learning techniques, lead to many practical benefits. Date: Wednesday, 16 September 2020 Time: 2:00pm - 4:00pm Zoom Meeting: https://hkust.zoom.us/j/7866795682 Chairperson: Prof. Bing-yi JING (MATH) Committee Members: Prof. Qiang YANG (Supervisor) Prof. Kai CHEN Prof. Yangqiu SONG Prof. Weichuan YU (ECE) Prof. Jiannong CAO (PolyU) **** ALL are Welcome ****