个性化联合学习的基准

Koji Matsuda;Yuya Sasaki;Chuan Xiao;Makoto Onizuka
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引用次数: 0

摘要

联盟学习是一种分布式机器学习方法,它允许单个服务器与多个客户端协作构建机器学习模型,而无需共享数据集。由于各客户端的数据分布可能不同,因此数据异构是联合学习中的一个挑战性问题。为了解决这个问题,人们提出了许多联合学习方法,为客户建立个性化模型,称为个性化联合学习。然而,目前还没有研究全面考察个性化联合学习方法在数据集和客户端设置等各种实验环境下的性能。因此,本文旨在对现有个性化联合学习方法在各种环境下的性能进行基准测试。我们首先调查了现有研究中的实验设置。然后,我们通过综合实验对现有方法的性能进行基准测试,以揭示这些方法在计算机视觉和自然语言处理任务中的特性。我们的实验研究表明:(i) 大量数据的异质性往往会带来高精度的预测;(ii) 微调后的标准联合学习方法(如 FedAvg)往往优于个性化联合学习方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Benchmark for Personalized Federated Learning
Federated learning is a distributed machine learning approach that allows a single server to collaboratively build machine learning models with multiple clients without sharing datasets. Since data distributions may differ across clients, data heterogeneity is a challenging issue in federated learning. To address this issue, numerous federated learning methods have been proposed to build personalized models for clients, referred to as personalized federated learning. Nevertheless, no studies comprehensively investigate the performance of personalized federated learning methods in various experimental settings such as datasets and client settings. Therefore, in this article, we aim to benchmark the performance of existing personalized federated learning methods in various settings. We first survey the experimental settings in existing studies. We then benchmark the performance of existing methods through comprehensive experiments to reveal their characteristics in computer vision and natural language processing tasks which are the most popular tasks based on our survey. Our experimental study shows that (i) large data heterogeneity often leads to highly accurate predictions and (ii) standard federated learning methods (e.g. FedAvg) with fine-tuning often outperform personalized federated learning methods.
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CiteScore
12.60
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