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DAG-ACFL: Asynchronous Clustered Federated Learning based on DAG-DLT

Machine Learning 2023-08-28 v1 Artificial Intelligence Distributed, Parallel, and Cluster Computing

Abstract

Federated learning (FL) aims to collaboratively train a global model while ensuring client data privacy. However, FL faces challenges from the non-IID data distribution among clients. Clustered FL (CFL) has emerged as a promising solution, but most existing CFL frameworks adopt synchronous frameworks lacking asynchrony. An asynchronous CFL framework called SDAGFL based on directed acyclic graph distributed ledger techniques (DAG-DLT) was proposed, but its complete decentralization leads to high communication and storage costs. We propose DAG-ACFL, an asynchronous clustered FL framework based on directed acyclic graph distributed ledger techniques (DAG-DLT). We first detail the components of DAG-ACFL. A tip selection algorithm based on the cosine similarity of model parameters is then designed to aggregate models from clients with similar distributions. An adaptive tip selection algorithm leveraging change-point detection dynamically determines the number of selected tips. We evaluate the clustering and training performance of DAG-ACFL on multiple datasets and analyze its communication and storage costs. Experiments show the superiority of DAG-ACFL in asynchronous clustered FL. By combining DAG-DLT with clustered FL, DAG-ACFL realizes robust, decentralized and private model training with efficient performance.

Keywords

Cite

@article{arxiv.2308.13158,
  title  = {DAG-ACFL: Asynchronous Clustered Federated Learning based on DAG-DLT},
  author = {Xiaofeng Xue and Haokun Mao and Qiong Li},
  journal= {arXiv preprint arXiv:2308.13158},
  year   = {2023}
}
R2 v1 2026-06-28T12:03:59.829Z