PMF

Author:

Feng Jie1,Rong Can2,Sun Funing3,Guo Diansheng3,Li Yong1

Affiliation:

1. Beijing National Research Center for Information Science and Technology (BNRist), Department of Electronic Engineering, Tsinghua University, Beijing, China

2. School of Software and Microelectronics, Peking University, Beijing, China

3. Tencent Inc. Beijing, China

Abstract

With the popularity of mobile devices and location-based social network, understanding and modelling the human mobility becomes an important topic in the field of ubiquitous computing. With the model developing from personal models with own information to the joint models with population information, the prediction performance of proposed models become better and better. Meanwhile, the privacy issues of these models come into the view of community and the public: collecting and uploading private data to the centralized server without enough regulation. In this paper, we propose PMF, a privacy-preserving mobility prediction framework via federated learning, to solve this problem without significantly sacrificing the prediction performance. In our framework, based on the deep learning mobility model, no private data is uploaded into the centralized server and the only uploaded thing is the updated model parameters which are difficult to crack and thus more secure. Furthermore, we design a group optimization method for the training on local devices to achieve better trade-off between performance and privacy. Finally, we propose a fine-tuned personal adaptor for personal modelling to further improve the prediction performance. We conduct extensive experiments on three real-life mobility datasets to demonstrate the superiority and effectiveness of our methods in privacy protection settings.

Publisher

Association for Computing Machinery (ACM)

Subject

Computer Networks and Communications,Hardware and Architecture,Human-Computer Interaction

Reference50 articles.

1. Never Walk Alone: Uncertainty for Anonymity in Moving Objects Databases;Abul Osman;ICDE,2008

2. Privacy-Preserving Machine Learning: Threats and Solutions

3. Keith Bonawitz Hubert Eichner Wolfgang Grieskamp Dzmitry Huba Alex Ingerman Vladimir Ivanov Chloe Kiddon Jakub Konecny Stefano Mazzocchi H Brendan McMahan etal 2019. Towards federated learning at scale: System design. arXiv preprint arXiv:1902.01046 (2019). Keith Bonawitz Hubert Eichner Wolfgang Grieskamp Dzmitry Huba Alex Ingerman Vladimir Ivanov Chloe Kiddon Jakub Konecny Stefano Mazzocchi H Brendan McMahan et al. 2019. Towards federated learning at scale: System design. arXiv preprint arXiv:1902.01046 (2019).

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