Summary

2021

Session Number:PS2

Session:

Number:PS2-8

SPENT+: A Category- and Region-Aware Successive POI Recommendation Model

Hsu-Chao Lai,  Yi-Shu Lu,  Mu-Fan Wang,  Yi-Cheng Chen,  Wen-Yueh Shih,  Jiun-Long Huang,  

pp.230-233

Publication Date:2021/9/8

Online ISSN:2188-5079

DOI:10.34385/proc.67.PS2-8

PDF download (472.9KB)

Summary:
To facilitate successive Point-of-Interests (POI) rec- ommendation, the categories of POIs and the regions where POIs are located are seldom considered in existing models. In view of this, we extend a state-of-the-art model SPENT, named SPENT+, by taking the category and the region into considerations. In SPENT+, we formulate category- and region- aware check-in sequences, design the similarity trees to aggre- gate similar features, and finally establish the category latent vectors and region latent vectors, respectively. The above two latent vectors are aggregated as the category-region-aware latent vectors. Therefore, the category-region-latent vectors are sent to an LSTM together with conventional check-in sequences to improve successive POI recommendation. We conduct two real datasets, Gowalla and Foursquare, and compare with state-of- the-art methods in experiments. Results show that SPENT+ outperforms the baselines in terms of precision and recall.