附件

IF 3.6 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
JaeYeon Park, Kichang Lee, Sungmin Lee, Mi Zhang, JeongGil Ko
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引用次数: 0

摘要

这项工作提出了AttFL,这是一个联邦学习框架,旨在不断改进个性化深度神经网络,以有效分析从移动和嵌入式传感应用中生成的时间序列数据。为了更好地表征时间序列数据特征并有效地抽象模型参数,AttFL将一组注意力模块附加到基线深度学习模型中,并交换其特征映射信息,以收集服务器上分布式本地设备的集体知识。服务器使用余弦相似性对具有相似上下文目标的设备进行分组,并重新分配更新的模型参数,以便在每个本地设备上提高推理性能。具体来说,与之前提出的联邦学习框架不同,AttFL专门设计用于各种循环神经网络(RNN)基线模型,使其适用于许多产生时间序列传感数据的移动和嵌入式传感应用。我们评估了AttFL的性能,并使用三种流行的移动/嵌入式传感应用(例如,生理信号分析,人类活动识别和音频处理)与五种最先进的联邦学习框架进行了比较。我们从基于CPU内核的仿真和12节点嵌入式平台测试平台获得的结果表明,AttFL在模型精度和通信/计算开销方面优于所有替代方法,并且足够灵活,可以应用于利用不同基线深度学习模型架构的各种应用场景。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AttFL
This work presents AttFL, a federated learning framework designed to continuously improve a personalized deep neural network for efficiently analyzing time-series data generated from mobile and embedded sensing applications. To better characterize time-series data features and efficiently abstract model parameters, AttFL appends a set of attention modules to the baseline deep learning model and exchanges their feature map information to gather collective knowledge across distributed local devices at the server. The server groups devices with similar contextual goals using cosine similarity, and redistributes updated model parameters for improved inference performance at each local device. Specifically, unlike previously proposed federated learning frameworks, AttFL is designed specifically to perform well for various recurrent neural network (RNN) baseline models, making it suitable for many mobile and embedded sensing applications producing time-series sensing data. We evaluate the performance of AttFL and compare with five state-of-the-art federated learning frameworks using three popular mobile/embedded sensing applications (e.g., physiological signal analysis, human activity recognition, and audio processing). Our results obtained from CPU core-based emulations and a 12-node embedded platform testbed shows that AttFL outperforms all alternative approaches in terms of model accuracy and communication/computational overhead, and is flexible enough to be applied in various application scenarios exploiting different baseline deep learning model architectures.
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来源期刊
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies
Proceedings of the ACM on Interactive, Mobile, Wearable and Ubiquitous Technologies Computer Science-Computer Networks and Communications
CiteScore
9.10
自引率
0.00%
发文量
154
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