HRNet: Differentially Private Hierarchical and Multi-Resolution Network for Human Mobility Data Synthesization

Author:

Takagi Shun1,Xiong Li2,Kato Fumiyuki1,Cao Yang3,Yoshikawa Masatoshi4

Affiliation:

1. Kyoto University

2. Emory University

3. Tokyo Institute of Technology

4. Osaka Seikei University

Abstract

Human mobility data offers valuable insights for many applications such as urban planning and pandemic response, but its use also raises privacy concerns. In this paper, we introduce the Hierarchical and Multi-Resolution Network (HRNet), a novel deep generative model specifically designed to synthesize realistic human mobility data while guaranteeing differential privacy. We first identify the key difficulties inherent in learning human mobility data under differential privacy. In response to these challenges, HRNet integrates three components: a hierarchical location encoding mechanism, multi-task learning across multiple resolutions, and private pre-training. These elements collectively enhance the model's ability under the constraints of differential privacy. Through extensive comparative experiments utilizing a real-world dataset, HRNet demonstrates a marked improvement over existing methods in balancing the utility-privacy trade-off.

Publisher

Association for Computing Machinery (ACM)

Reference70 articles.

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2. Ritesh Ahuja Gabriel Ghinita and Cyrus Shahabi. 2020. Differentially-private next-location prediction with neural networks. In Advances in database technology. 121--132.

3. Ehsan Amid, Arun Ganesh, Rajiv Mathews, Swaroop Ramaswamy, Shuang Song, Thomas Steinke, Vinith M Suriyakumar, Om Thakkar, and Abhradeep Thakurta. 2022. Public data-assisted mirror descent for private model training. In International Conference on Machine Learning. PMLR, 517--535.

4. Stability of stochastic gradient descent on nonsmooth convex losses;Bassily Raef;Advances in Neural Information Processing Systems,2020

5. Raef Bassily, Adam Smith, and Abhradeep Thakurta. 2014. Private empirical risk minimization: Efficient algorithms and tight error bounds. In 2014 IEEE 55th annual symposium on foundations of computer science. IEEE, 464--473.

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