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Pre-Conference Talk by NGUYEN Tiep Trong

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Representation Learning for Homophilic Preferences


Speaker (s):

NGUYEN Tiep Trong

PhD Candidate

School of Information Systems

Singapore Management University


Date:


Time:


Venue:

 

September 7, 2016, Wednesday


4:00 pm - 5:00 pm


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

Users express their personal preferences through ratings, adoptions, and other consumption behaviors. We seek to learn latent representations for user preferences from such behavioral data. One representation learning model that has been shown to be effective for large preference datasets is Restricted Boltzmann Machine (RBM). While homophily, or the tendency of friends to share their preferences at some level, is an established notion in sociology, thus far it has not yet been clearly demonstrated on RBM-based preference models. The question lies in how to appropriately incorporate social network into the architecture of RBM-based models for learning representations of preferences. In this paper, we propose two potential architectures: one that models social network among users as additional observations, and another that incorporates social network into the sharing of hidden units among related users. We study the efficacies of these proposed architectures on publicly available, real-life preference datasets with social networks, yielding useful insights.

This a pre-conference talk for 10th ACM Conference on Recommender Systems.

 

About the Speaker

NGUYEN Tiep Trong is third-year PhD student in Information Systems. He received his Bachelor of Ho Chi Minh University of Technology, Vietnam. In August 2014, he enrolled the SMU PhD Program under the supervision of Prof. Hady W. Lauw. His research focus on recommender systems, especially social network mining on user preferences.