Modeling Location-Based User Rating Profiles for Personalized Recommendation

Author:

Yin Hongzhi1,Cui Bin2,Chen Ling3,Hu Zhiting4,Zhang Chengqi3

Affiliation:

1. University of Queensland, QLD, Australia

2. Peking University, Beijing, China

3. University of Technology, Sydney

4. Carnegie Mellon University

Abstract

This article proposes LA-LDA, a location-aware probabilistic generative model that exploits location-based ratings to model user profiles and produce recommendations. Most of the existing recommendation models do not consider the spatial information of users or items; however, LA-LDA supports three classes of location-based ratings, namely spatial user ratings for nonspatial items, nonspatial user ratings for spatial items, and spatial user ratings for spatial items. LA-LDA consists of two components, ULA-LDA and ILA-LDA, which are designed to take into account user and item location information, respectively. The component ULA-LDA explicitly incorporates and quantifies the influence from local public preferences to produce recommendations by considering user home locations, whereas the component ILA-LDA recommends items that are closer in both taste and travel distance to the querying users by capturing item co-occurrence patterns, as well as item location co-occurrence patterns. The two components of LA-LDA can be applied either separately or collectively, depending on the available types of location-based ratings. To demonstrate the applicability and flexibility of the LA-LDA model, we deploy it to both top- k recommendation and cold start recommendation scenarios. Experimental evidence on large-scale real-world data, including the data from Gowalla (a location-based social network), DoubanEvent (an event-based social network), and MovieLens (a movie recommendation system), reveal that LA-LDA models user profiles more accurately by outperforming existing recommendation models for top- k recommendation and the cold start problem.

Funder

National Natural Science Foundation of China

ARC Discovery Project)

973 program

Australian Research Council

Chinese National “111” project, “Attracting International Talents in Data Engineering and Knowledge Engineering Research.”

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

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