More about HKUST
Collaborative and Transfer Learning in Recommendations
The Hong Kong University of Science and Technology
Department of Computer Science and Engineering
PhD Thesis Defence
Title: "Collaborative and Transfer Learning in Recommendations"
By
Mr. Bin CAO
Abstract
Nowadays recommendation has become a key feature in many online services.
The quality of recommendations is one of the key factors to the revenue
for these service providers. Therefore, it is critical for them to provide
high quality recommendations.
However, the recommendation task is non-trivial. Learning problems in
recommendation usually are not well-defined traditional learning problems.
It is common that users would provide heterogeneous feedback on items from
heterogeneous domains. For example, as a recommender system like Amazon,
it may need to provide personalized movie recommendations for a user based
her/his feedback from multiple domains including books and clothing. As a
search engine like Google, it may need to serve personalized ads based on
users' searching behaviors and browsing history.
In this thesis, we consider the problems of using transfer-learning
techniques to improve recommendations. More specifically, we consider the
problems where we formulate multiple recommendation tasks in the problem
and we ask three questions. Firstly, how to share knowledge when items
span over multiple heterogeneous domains? Secondly, how to share knowledge
across different user feedback? Thirdly, how to transfer knowledge with
respect to a particular recommendation task from other source tasks? To
answer these questions, we study transfer-learning based collaborative
filtering models that could handle heterogeneous feedback and domain
adaptation. Furthermore, we conduct experiments on real world dataset to
show the effectiveness of the proposed models.
Date: Wednesday, 3 August 2011
Time: 10:00am – 12:00noon
Venue: Room 3584
Lifts 27/28
Chairman: Prof. David Hui (CBME)
Committee Members: Prof. Qiang Yang (Supervisor)
Prof. Raymond Wong
Prof. Dit-Yan Yeung
Prof. Weichuan Yu (ECE)
Prof. Michael R. Lyu (Comp. Sci. & Engg., CUHK)
**** ALL are Welcome ****