An Attentive Spatio-Temporal Neural Model for Successive Point of Interest Recommendation
Khoa Doan, Chandan Reddy
Abstract
In a successive Point of Interest (POI) recommendation problem, analyzing user behaviors and contextual check-in information in past POI visits are essential in predicting, thus recommending, where they would likely want to visit next. Although several works, especially the Matrix Factorization and/or Markov chain based methods, are proposed to solve this problem, they have strong independence and conditioning assumptions. In this paper, we propose a deep Long Short Term Memory recurrent neural network model with a memory/attention mechanism, for the successive Point-of-Interest recommendation problem, that captures both the sequential, and temporal/spatial characteristics into its learned representations. Experimental results on two popular Location-Based Social Networks illustrate significant improvements of our method over the state-of-the-art methods. Our method is also robust to overfitting compared with popular methods for the recommendation tasks.
People
-
Bio Item
-
Bio Item
Publication Details
Date of publication: March 19, 2019
Conference: Springer Pacific-Asia Conference on Knowledge Discovery and Data Mining
Page number(s): 346-358
Volume:
Issue Number:
Publication Note: Khoa D. Doan, Guolei Yang, Chandan K. Reddy: An Attentive Spatio-Temporal Neural Model for Successive Point of Interest Recommendation.PAKDD (3) 2019: 346-358