Title of article :
Improving POI Recommendation via Dynamic Tensor Completion
Author/Authors :
Liao, Jinzhi Key Laboratory of Science and Technology on Information System Engineering - National University of Defense Technology, Changsha, China , Tang, Jiuyang Key Laboratory of Science and Technology on Information System Engineering - National University of Defense Technology, Changsha, China , Zhao, Xiang Key Laboratory of Science and Technology on Information System Engineering - National University of Defense Technology, Changsha, China , Shang , Haichuan Institute of Industrial Science - e University of Tokyo, Tokyo, Japan
Pages :
12
From page :
1
To page :
12
Abstract :
POI recommendation finds significant importance in various real-life applications, especially when meeting with location-based services, e.g., check-ins social networks. In this paper, we propose to solve POI recommendation through a novel model of dynamic tensor, which is among the first triumphs of its kind. In order to carry out timely recommendation, we predict POI by utilizing a completion algorithm based on fast low-rank tensor. Particularly, the dynamic tensor structure is complemented by the fast low-rank tensor completion algorithm so as to achieve prediction with better performance, where the parameter optimization is achieved by a pigeon-inspired heuristic algorithm. In short, our POI recommendation via the dynamic tensor method can take advantage of the intrinsic characteristics of check-ins data due to the multimode features such as current categories, subsequent categories, and temporal information as well as seasons variations are all integrated into the model. Extensive experiment results not only validate the superiority of our proposed method but also imply the application prospect in large-scale and real-time POI recommendation environment.
Keywords :
Dynamic Tensor Completion , Improving POI
Journal title :
Scientific Programming
Serial Year :
2018
Full Text URL :
Record number :
2608399
Link To Document :
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