@inbook{6dbe8483bff241e3a13d358a9d89f52c,
title = "Evolutionary Edge association and auction in hierarchical federated learning",
abstract = "To reduce node failures and device dropouts, the Hierarchical Federated Learning (HFL) framework has been proposed whereby cluster heads are designated to support the data owners through intermediate model aggregation. This decentralized learning approach reduces the reliance on a central controller, e.g., the model owner. However, the issues of resource allocation and incentive design are not well-studied in the HFL framework. In this chapter, we consider a two-level resource allocation and incentive mechanism design problem. In the lower level, the cluster heads offer rewards in exchange for the data owners{\textquoteright} participation, and the data owners are free to choose which cluster to join. Specifically, we apply the evolutionary game theory to model the dynamics of the cluster selection process. In the upper level, each cluster head can choose to serve a model owner, whereas the model owners have to compete among each other for the services of the cluster heads. As such, we propose a deep learning based auction mechanism to derive the valuation of each cluster head{\textquoteright}s services. The performance evaluation shows the uniqueness and stability of our proposed evolutionary game, as well as the revenue maximizing properties of the deep learning based auction.",
keywords = "Auction, Communication efficiency, Edge intelligence, Evolutionary game, Federated learning, Resource allocation",
author = "Lim, \{Wei Yang Bryan\} and Ng, \{Jer Shyuan\} and Zehui Xiong and Dusit Niyato and Chunyan Miao",
year = "2022",
month = may,
day = "30",
doi = "10.1007/978-3-031-07838-5\_4",
language = "English",
series = "Wireless Networks (United Kingdom)",
publisher = "Springer Nature",
pages = "117--145",
booktitle = "Federated learning over wireless Edge networks",
address = "Germany",
}