Survey of Federated Learning Models for Spatial-Temporal Mobility
Applications
- URL: http://arxiv.org/abs/2305.05257v4
- Date: Thu, 8 Feb 2024 16:09:20 GMT
- Title: Survey of Federated Learning Models for Spatial-Temporal Mobility
Applications
- Authors: Yacine Belal and Sonia Ben Mokhtar, Hamed Haddadi, Jaron Wang and Afra
Mashhadi
- Abstract summary: Federated learning (FL) can serve as an ideal candidate for training spatial temporal models.
There are unique challenges involved with transitioning existing spatial temporal models to decentralized learning.
- Score: 9.896508514316812
- License: http://creativecommons.org/licenses/by-sa/4.0/
- Abstract: Federated learning involves training statistical models over edge devices
such as mobile phones such that the training data is kept local. Federated
Learning (FL) can serve as an ideal candidate for training spatial temporal
models that rely on heterogeneous and potentially massive numbers of
participants while preserving the privacy of highly sensitive location data.
However, there are unique challenges involved with transitioning existing
spatial temporal models to decentralized learning. In this survey paper, we
review the existing literature that has proposed FL-based models for predicting
human mobility, traffic prediction, community detection, location-based
recommendation systems, and other spatial-temporal tasks. We describe the
metrics and datasets these works have been using and create a baseline of these
approaches in comparison to the centralized settings. Finally, we discuss the
challenges of applying spatial-temporal models in a decentralized setting and
by highlighting the gaps in the literature we provide a road map and
opportunities for the research community.
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