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Pre-Conference Talk by LE Duy Dung | Indexable Bayesian Personalized Ranking for Efficient Top-K Recommendation

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Indexable Bayesian Personalized Ranking for Efficient Top-K Recommendation


Speaker (s):

LE Duy Dung

PhD Candidate

School of Information Systems

Singapore Management University


Date:


Time:


Venue:

 

October 19, 2017, Thursday


2:30pm - 3:00pm


Meeting Room 4.4, Level 4

School of Information Systems

Singapore Management University

80 Stamford Road

Singapore 178902

We look forward to seeing you at this research seminar.

About the Talk

Top-k recommendation seeks to deliver a personalized recommendation list of k items to a user. The dual objectives are (1) accuracy in identifying the items a user is likely to prefer, and (2) efficiency in constructing the recommendation list in real time. One direction towards retrieval efficiency is to formulate retrieval as approximate k nearest neighbor (kNN) search aided by indexing schemes, such as locality-sensitive hashing, spatial trees, and inverted index. These schemes, applied on the output representations of recommendation algorithms, speed up the retrieval process by automatically discarding a large number of potentially irrelevant items when given a user query vector. However, many previous recommendation algorithms produce representations that may not necessarily align well with the structural properties of these indexing schemes, eventually resulting in a significant loss of accuracy post-indexing. In this paper, we introduce Indexable Bayesian Personalized Ranking (IBPR) that learns from ordinal preference to produce representation that is inherently compatible with the aforesaid indices. Experiments on publicly available datasets show superior performance of the proposed model compared to state-of-the-art methods on top-k recommendation retrieval task, achieving significant speedup while maintaining high accuracy.

This a pre-conference talk for 26th ACM International Conference on Information and Knowledge Management (CIKM 2017).

 

About the Speaker

LE Duy Dung is a PhD candidate from the School of Information Systems at Singapore Management University, supervised by Assistant Professor Hady Wirawan Lauw. He received his Degree of Engineer in Mathematics and Informatics from the Hanoi University of Science and Technology in 2014. His research interests are information retrievals, recommender systems, and visual analytics.