Pre-Training Across Different Cities for Next POI Recommendation

Author:

Sun Ke1ORCID,Qian Tieyun1ORCID,Li Chenliang2ORCID,Ma Xuan1ORCID,Li Qing3ORCID,Zhong Ming1ORCID,Zhu Yuanyuan1ORCID,Liu Mengchi4ORCID

Affiliation:

1. School of Computer Science, Wuhan University, China

2. School of Cyber Science and Engineering, Wuhan University, China

3. Hong Kong Polytechnic University, China

4. Guangzhou Key Laboratory of Big Data and Intelligent Education, School of Computer Science, South China Normal University, China

Abstract

The Point-of-Interest (POI) transition behaviors could hold absolute sparsity and relative sparsity very differently for different cities. Hence, it is intuitive to transfer knowledge across cities to alleviate those data sparsity and imbalance problems for next POI recommendation. Recently, pre-training over a large-scale dataset has achieved great success in many relevant fields, like computer vision and natural language processing. By devising various self-supervised objectives, pre-training models can produce more robust representations for downstream tasks. However, it is not trivial to directly adopt such existing pre-training techniques for next POI recommendation, due to the lacking of common semantic objects (users or items) across different cities . Thus in this paper, we tackle such a new research problem of pre-training across different cities for next POI recommendation. Specifically, to overcome the key challenge that different cities do not share any common object, we propose a novel pre-training model named CATUS , by transferring the cat egory-level u niversal tran s ition knowledge over different cities. Firstly, we build two self-supervised objectives in CATUS : next category prediction and next POI prediction , to obtain the universal transition-knowledge across different cities and POIs. Then, we design a category-transition oriented sampler on the data level and an implicit and explicit transfer strategy on the encoder level to enhance this transfer process. At the fine-tuning stage, we propose a distance oriented sampler to better align the POI representations into the local context of each city. Extensive experiments on two large datasets consisting of four cities demonstrate the superiority of our proposed CATUS over the state-of-the-art alternatives. The code and datasets are available at https://github.com/NLPWM-WHU/CATUS.

Funder

NSFC

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications

Reference62 articles.

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3. Yudong Chen, Xin Wang, Miao Fan, Jizhou Huang, Shengwen Yang, and Wenwu Zhu. 2021. Curriculum meta-learning for next POI recommendation. In KDD. 2692–2702.

4. Chen Cheng, Haiqin Yang, Michael R. Lyu, and Irwin King. 2013. Where you like to go next: Successive point-of-interest recommendation. In IJCAI. 2605–2611.

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