More about HKUST
Stacking Collaborative Filtering for Implicit Feedback
MPhil Thesis Defence Title: "Stacking Collaborative Filtering for Implicit Feedback" By Miss Lin Huang Abstract Stacking is a successful ensemble learning method which has been used widely in machine learning area. There are also many hybrid systems which can combine recommender algorithms using stacking technique. However, most of them focus on combining algorithms based on explicit feedback datasets, which are not always available. Implicit feedback, which expresses preferences implicitly in the format of users? behaviors such as click log or purchase log, is more common and easier to get in the most situations. So how to combine implicit recommender algorithms becomes a hot topic. Collaborative Filtering (CF), a central methodology in recommender systems, makes predictions of unknown preferences for a particular user based on other users? preferences. In this thesis, our work focuses on combining implicit CF algorithms by stacking framework. The procedures are arranged as follows. Firstly, we study many existing CF methods for implicit feedback. Secondly, we build a hybrid recommender system that can combine implicit CF algorithms. Our hybrid system aims to improve rank-based performance metrics, MAP and NDCG, which are more relevant and useful. In addition, we find that the popularity of items correlate well with many CF models in our experimental observations and propose to add the popularity of items as an additional feature in our combination. Empirical results show that our hybrid system outperforms the component model significantly. However, performance decreases when adding items’ popularity as an additional feature into meta-learning algorithm directly. Date: Friday, 18 June 2010 Time: 9:00am – 11:00am Venue: Room 3501 Lifts 25/26 Committee Members: Prof. Qiang Yang (Supervisor) Dr. Lei Chen(Chairperson) Dr. Raymond Wong **** ALL are Welcome ****