Game Theory Based Privacy Preserving Approach for Collaborative Deep Learning in IoT
Deepti Gupta, Smriti Bhatt, Paras Bhatt, Maanak Gupta, and Ali Saman, Tosun

TL;DR
This paper proposes a game theory-based privacy-preserving collaborative deep learning method for IoT devices, enabling secure, fair, and cooperative model training at the edge with real-world smart home validation.
Contribution
It introduces a novel game-theoretic framework and a cluster-based strategy for fair collaboration among IoT devices in privacy-preserving deep learning.
Findings
Achieves privacy preservation in IoT deep learning models.
Demonstrates fair cooperation among devices using a cluster-based approach.
Validates the approach with real-world smart home deployment.
Abstract
The exponential growth of Internet of Things (IoT) has become a transcending force in creating innovative smart devices and connected domains including smart homes, healthcare, transportation and manufacturing. With billions of IoT devices, there is a huge amount of data continuously being generated, transmitted, and stored at various points in the IoT architecture. Deep learning is widely being used in IoT applications to extract useful insights from IoT data. However, IoT users have security and privacy concerns and prefer not to share their personal data with third party applications or stakeholders. In order to address user privacy concerns, Collaborative Deep Learning (CDL) has been largely employed in data-driven applications which enables multiple IoT devices to train their models locally on edge gateways. In this chapter, we first discuss different types of deep learning…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Mobile Crowdsensing and Crowdsourcing · Privacy, Security, and Data Protection
