PFSL: Personalized & Fair Split Learning with Data & Label Privacy for thin clients

Manas Wadhwa, Gagan Raj Gupta, Ashutosh Sahu, Rahul Saini, Vidhi Mittal
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引用次数: 1

Abstract

The traditional framework of federated learning (FL) requires each client to re-train their models in every iteration, making it infeasible for resource-constrained mobile devices to train deep-learning (DL) models. Split learning (SL) provides an alternative by using a centralized server to offload the computation of activations and gradients for a subset of the model but suffers from problems of slow convergence and lower accuracy. In this paper, we implement PFSL, a new framework of distributed split learning where a large number of thin clients perform transfer learning in parallel, starting with a pre-trained DL model without sharing their data or labels with a central server. We implement a lightweight step of personalization of client models to provide high performance for their respective data distributions. Furthermore, we evaluate performance fairness amongst clients under a work fairness constraint for various scenarios of non-i.i.d. data distributions and unequal sample sizes. Our accuracy far exceeds that of current SL algorithms and is very close to that of centralized learning on several real-life benchmarks. It has a very low computation cost compared to FL variants and promises to deliver the full benefits of DL to extremely thin, resource-constrained clients.
PFSL:个性化和公平的分割学习与数据和标签隐私瘦客户端
传统的联邦学习(FL)框架要求每个客户端在每次迭代中重新训练他们的模型,这使得资源受限的移动设备无法训练深度学习(DL)模型。分割学习(SL)提供了另一种选择,它使用集中式服务器来卸载模型子集的激活和梯度计算,但存在收敛缓慢和准确性较低的问题。在本文中,我们实现了PFSL,这是一种分布式分裂学习的新框架,其中大量瘦客户端并行执行迁移学习,从预训练的DL模型开始,而不与中央服务器共享其数据或标签。我们实现了客户机模型个性化的轻量级步骤,以便为它们各自的数据分布提供高性能。此外,我们在工作公平约束下评估了不同情境下客户的绩效公平性。数据分布和不相等的样本量。我们的准确性远远超过了当前的SL算法,并且在几个现实生活基准上非常接近集中式学习。与FL变体相比,它具有非常低的计算成本,并承诺将DL的全部优势提供给非常瘦、资源受限的客户端。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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