LSTM-TrajGAN: A Deep Learning Approach to Trajectory Privacy Protection

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Authors Jinmeng Rao, Song Gao, Yuhao Kang, Qunying Huang arXiv ID 2006.10521 Category cs.LG: Machine Learning Cross-listed cs.AI, cs.CR Citations 137 Venue International Conference Geographic Information Science Last Checked 4 months ago
Abstract
The prevalence of location-based services contributes to the explosive growth of individual-level trajectory data and raises public concerns about privacy issues. In this research, we propose a novel LSTM-TrajGAN approach, which is an end-to-end deep learning model to generate privacy-preserving synthetic trajectory data for data sharing and publication. We design a loss metric function TrajLoss to measure the trajectory similarity losses for model training and optimization. The model is evaluated on the trajectory-user-linking task on a real-world semantic trajectory dataset. Compared with other common geomasking methods, our model can better prevent users from being re-identified, and it also preserves essential spatial, temporal, and thematic characteristics of the real trajectory data. The model better balances the effectiveness of trajectory privacy protection and the utility for spatial and temporal analyses, which offers new insights into the GeoAI-powered privacy protection.
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