Federated Matrix Factorization: Algorithm Design and Application to Data Clustering

IF 4.6 2区 工程技术 Q1 ENGINEERING, ELECTRICAL & ELECTRONIC IEEE Transactions on Signal Processing Pub Date : 2022-02-14 DOI:10.1109/TSP.2022.3151505
Shuai Wang;Tsung-Hui Chang
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引用次数: 11

Abstract

Recent demands on data privacy have called for federated learning (FL) as a new distributed learning paradigm in massive and heterogeneous networks. Although many FL algorithms have been proposed, few of them have considered the matrix factorization (MF) model, which is known to have a vast number of signal processing and machine learning applications. Since the MF problem involves two blocks of variables and the variables are usually subject to constraints related to specific solution structure, it requires new FL algorithm designs to achieve communication-efficient MF in heterogeneous data networks. In this paper, we address the challenge by proposing two new federated MF (FedMF) algorithms, namely, FedMAvg and FedMGS, based on the model averaging and gradient sharing principles, respectively. Both FedMAvg and FedMGS adopt multiple steps of local updates per communication round to speed up convergence, and allow only a randomly sampled subset of clients to communicate with the server for reducing the communication cost. Convergence properties for the two algorithms are thoroughly analyzed, which delineate the impacts of heterogeneous data distribution, local update number, and partial client communication on the algorithm performance, and guide the design of proposed algorithms. By focusing on a data clustering task, extensive experiment results are presented to examine the practical performance of proposed algorithms, as well as demonstrating their efficacy over the existing distributed clustering algorithms.
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联邦矩阵分解:算法设计及其在数据聚类中的应用
最近对数据隐私的要求要求将联合学习(FL)作为一种新的分布式学习范式,用于大规模和异构网络中。尽管已经提出了许多FL算法,但其中很少有人考虑矩阵分解(MF)模型,已知该模型具有大量的信号处理和机器学习应用。由于MF问题涉及两个变量块,并且这些变量通常受到与特定解结构相关的约束,因此需要新的FL算法设计来在异构数据网络中实现通信高效的MF。在本文中,我们分别基于模型平均和梯度共享原理,提出了两种新的联邦MF(FedMF)算法,即FedMAvg和FedMGS,以应对这一挑战。FedMAvg和FedMGS每轮通信都采用多步本地更新来加快收敛速度,并且只允许随机采样的客户端子集与服务器通信,以降低通信成本。深入分析了这两种算法的收敛性,描述了异构数据分布、局部更新次数和部分客户端通信对算法性能的影响,并指导了算法的设计。通过关注数据聚类任务,给出了大量的实验结果来检验所提出的算法的实际性能,并证明了它们相对于现有分布式聚类算法的有效性。
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来源期刊
IEEE Transactions on Signal Processing
IEEE Transactions on Signal Processing 工程技术-工程:电子与电气
CiteScore
11.20
自引率
9.30%
发文量
310
审稿时长
3.0 months
期刊介绍: The IEEE Transactions on Signal Processing covers novel theory, algorithms, performance analyses and applications of techniques for the processing, understanding, learning, retrieval, mining, and extraction of information from signals. The term “signal” includes, among others, audio, video, speech, image, communication, geophysical, sonar, radar, medical and musical signals. Examples of topics of interest include, but are not limited to, information processing and the theory and application of filtering, coding, transmitting, estimating, detecting, analyzing, recognizing, synthesizing, recording, and reproducing signals.
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