Cooperation and Personalization on a Seesaw: Choice-based FL for Safe Cooperation in Wireless Networks
- URL: http://arxiv.org/abs/2411.04159v1
- Date: Wed, 06 Nov 2024 14:09:47 GMT
- Title: Cooperation and Personalization on a Seesaw: Choice-based FL for Safe Cooperation in Wireless Networks
- Authors: Han Zhang, Medhat Elsayed, Majid Bavand, Raimundas Gaigalas, Yigit Ozcan, Melike Erol-Kantarci,
- Abstract summary: Federated learning (FL) is an innovative distributed artificial intelligence technique.
We first overview benefits and concerns when applying FL to wireless networks.
We discuss the possibility of tuning the cooperation level with a choice-based approach.
- Score: 8.064072834606456
- License:
- Abstract: Federated learning (FL) is an innovative distributed artificial intelligence (AI) technique. It has been used for interdisciplinary studies in different fields such as healthcare, marketing and finance. However the application of FL in wireless networks is still in its infancy. In this work, we first overview benefits and concerns when applying FL to wireless networks. Next, we provide a new perspective on existing personalized FL frameworks by analyzing the relationship between cooperation and personalization in these frameworks. Additionally, we discuss the possibility of tuning the cooperation level with a choice-based approach. Our choice-based FL approach is a flexible and safe FL framework that allows participants to lower the level of cooperation when they feel unsafe or unable to benefit from the cooperation. In this way, the choice-based FL framework aims to address the safety and fairness concerns in FL and protect participants from malicious attacks.
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