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Points-of-Interest Relationship Inference with Spatial-enriched Graph Neural Networks

Authors :
Chen, Yile
Li, Xiucheng
Cong, Gao
Long, Cheng
Bao, Zhifeng
Liu, Shang
Gu, Wanli
Zhang, Fuzheng
Chen, Yile
Li, Xiucheng
Cong, Gao
Long, Cheng
Bao, Zhifeng
Liu, Shang
Gu, Wanli
Zhang, Fuzheng
Publication Year :
2022

Abstract

As a fundamental component in location-based services, inferring the relationship between points-of-interests (POIs) is very critical for service providers to offer good user experience to business owners and customers. Most of the existing methods for relationship inference are not targeted at POI, thus failing to capture unique spatial characteristics that have huge effects on POI relationships. In this work we propose PRIM to tackle POI relationship inference for multiple relation types. PRIM features four novel components, including a weighted relational graph neural network, category taxonomy integration, a self-attentive spatial context extractor, and a distance-specific scoring function. Extensive experiments on two real-world datasets show that PRIM achieves the best results compared to state-of-the-art baselines and it is robust against data sparsity and is applicable to unseen cases in practice.

Details

Database :
OAIster
Publication Type :
Electronic Resource
Accession number :
edsoai.on1333753033
Document Type :
Electronic Resource