资源受限无线网络中联合学习的代理选择框架

Maria Raftopoulou;José Mairton B. da Silva;Remco Litjens;H. Vincent Poor;Piet van Mieghem
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摘要

联盟学习是一种训练机器学习模型的有效方法,无需将代理的潜在敏感数据汇集到中央服务器。然而,有限的通信带宽、代理的硬件以及潜在的特定应用延迟要求,都会影响在每一轮通信中,有多少代理以及哪些代理可以参与学习过程。在本文中,我们提出了一种选择度量方法,用于描述每个代理在学习过程中的重要性及其无线通信信道的资源效率。利用这一重要性度量,我们提出了一个通用的代理选择优化问题,该问题可适用于具有延迟或资源导向限制的不同环境。考虑到具有延迟限制的无线环境示例,代理选择问题简化为 0/1 Knapsack 问题,我们用全多项式近似法解决了这个问题。然后,我们通过对欧洲交通标志的对象分类任务进行大量模拟,评估了不同场景下的代理选择策略。结果表明,同时考虑学习和通道因素的代理选择策略在可实现的全局模型准确度和/或达到目标准确度水平所需的时间方面都有优势。然而,在代理的数据样本数量有限或对延迟要求非常严格的情况下,纯粹基于学习的代理选择策略在学习过程的早期或晚期阶段更有优势。
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Agent Selection Framework for Federated Learning in Resource-Constrained Wireless Networks
Federated learning is an effective method to train a machine learning model without requiring to aggregate the potentially sensitive data of agents in a central server. However, the limited communication bandwidth, the hardware of the agents and a potential application-specific latency requirement impact how many and which agents can participate in the learning process at each communication round. In this paper, we propose a selection metric characterizing each agent’s importance with respect to both the learning process and the resource efficiency of its wireless communication channel. Leveraging this importance metric, we formulate a general agent selection optimization problem, which can be adapted to different environments with latency or resource-oriented constraints. Considering an example wireless environment with latency constraints, the agent selection problem reduces to the 0/1 Knapsack problem, which we solve with a fully polynomial approximation. We then evaluate the agent selection policy in different scenarios, using extensive simulations for an example task of object classification of European traffic signs. The results indicate that agent selection policies which consider both learning and channel aspects provide benefits in terms of the attainable global model accuracy and/or the time needed to achieve a targeted accuracy level. However, in scenarios where agents have a limited number of data samples or where the latency requirement is very stringent, a pure learning-based agent selection policy is shown to be more beneficial during the early or late stages of the learning process.
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