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Improving the spatial–temporal aware attention network with dynamic trajectory graph learning for next Point-Of-Interest recommendationopen access

Authors
Cao, GangCui, ShengminJoe, Inwhee
Issue Date
May-2023
Publisher
Elsevier Ltd
Keywords
Point-Of-Interest; Attention mechanism; Graph convolution; Dynamic user preference modeling
Citation
Information Processing and Management, v.60, no.3, pp.1 - 19
Indexed
SCIE
SSCI
SCOPUS
Journal Title
Information Processing and Management
Volume
60
Number
3
Start Page
1
End Page
19
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/191608
DOI
10.1016/j.ipm.2023.103335
ISSN
0306-4573
Abstract
Next Point-Of-Interest (POI) recommendation aim to predict users’ next visits by mining their movement patterns. Existing works attempt to extract spatial–temporal relationships from historical check-ins; however, the following critical factors have not been adequately considered: (1) structured features implied in trajectory that reflect individual visit tendency; (2) collaborative signals from other users and (3) dynamic user preference. To this end, we jointly take into full consideration the graph-structured information as well as sequential effects of user trajectory sequences and propose the Trajectory Graph enhanced Spatial–Temporal aware Attention Network (TGSTAN). Given the general preference among users and the shifts of individual interests over time, we present a novel trajectory-aware dynamic graph convolution network module (TDGCN) to facilitate the capturing of local spatial correlations. Specifically, TDGCN dynamically adjusts the normalized adjacency matrix of the trajectory graph by element-wise multiplication with self-attentive POI representations. The local trajectory graph is generated from the same training batch to reflect real-time and collaborative signals, while also following causality. Moreover, we explicitly integrate spatial–temporal interval information with bilinear interpolation to comprehensively attach relative proximity to attention mechanism when capturing long-term dependence. Extensive experiments on three real-world Location-Based Social Networks datasets (Foursquare_TKY, Weeplaces and Gowalla_CA) demonstrate that the proposed TGSTAN consistently outperforms the existing state-of-the-art baselines with an average of 8.18%, 6.59%, and 9.60% improvement on the three datasets, respectively.
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