4.7 Article

Adapting to User Interest Drift for POI Recommendation

Journal

IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING
Volume 28, Issue 10, Pages 2566-2581

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TKDE.2016.2580511

Keywords

POI recommendation; user interest drift; collective inference; social-spatial correlation; user modeling

Funding

  1. ARC Discovery Early Career Researcher Award [DE160100308]
  2. ARC Discovery Project [DP140103171]
  3. National Natural Science Foundation of China [61472263, 61572335, 61303164, 61572039]
  4. Beijing Natural Science Foundation [4152023]
  5. Jiangsu Natural Science Foundation of China [BK20151223]
  6. 973 program [2014CB340405]
  7. Shenzhen Gov Research Project [JCYJ20151014093505032]
  8. Special Funds for Outstanding Youth Development [ISCAS2014-JQ02]

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Point-of-Interest recommendation is an essential means to help people discover attractive locations, especially when people travel out of town or to unfamiliar regions. While a growing line of research has focused on modeling user geographical preferences for POI recommendation, they ignore the phenomenon of user interest drift across geographical regions, i.e., users tend to have different interests when they travel in different regions, which discounts the recommendation quality of existing methods, especially for out-of-town users. In this paper, we propose a latent class probabilistic generative model Spatial-Temporal LDA (ST-LDA) to learn region-dependent personal interests according to the contents of their checked-in POIs at each region. As the users' check-in records left in the out-of-town regions are extremely sparse, ST-LDA incorporates the crowd's preferences by considering the public's visiting behaviors at the target region. To further alleviate the issue of data sparsity, a social-spatial collective inference framework is built on ST-LDA to enhance the inference of region-dependent personal interests by effectively exploiting the social and spatial correlation information. Besides, based on ST-LDA, we design an effective attribute pruning (AP) algorithm to overcome the curse of dimensionality and support fast online recommendation for large-scale POI data. Extensive experiments have been conducted to evaluate the performance of our ST-LDA model on two real-world and large-scale datasets. The experimental results demonstrate the superiority of ST-LDA and AP, compared with the state-of-the-art competing methods, by making more effective and efficient mobile recommendations.

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