Efficient binarizing split learning based deep models for mobile applications

N. D. Pham, Hong Dien Nguyen, Dinh Hoa Dang
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引用次数: 1

Abstract

Split Neural Network is a state-of-the-art distributed machine learning technique to enable on-device deep learning applications without accessing to local data. Recently, Abuadbba et al. carried out the use of split learning to perform privacy-preserving training for 1D CNN models on ECG medical data. However, the proposed method is limited by the processing ability of resource-constrained devices such as mobile devices. In this paper, we attempt to binarize localized neural networks to reduce computation costs and memory usage that is friendly with hardware. Theoretically analysis and evaluation results show that our method exceeds BNN and almost reaches CNN performance, while significantly reducing memory usage and computation costs on devices. Therefore, on the basis of these results, we have come to the conclusion that binarization is a potential technique for implementing deep learning models on mobile devices.
基于移动应用的高效二值化分割学习深度模型
分裂神经网络是一种最先进的分布式机器学习技术,可以在不访问本地数据的情况下实现设备上的深度学习应用。最近,Abuadbba等人利用分割学习对ECG医疗数据上的1D CNN模型进行了隐私保护训练。然而,该方法受到移动设备等资源受限设备处理能力的限制。在本文中,我们尝试二值化局部神经网络,以减少计算成本和内存使用,并且对硬件友好。理论分析和评估结果表明,我们的方法超过了BNN,几乎达到了CNN的性能,同时显著降低了设备上的内存使用和计算成本。因此,在这些结果的基础上,我们得出结论,二值化是在移动设备上实现深度学习模型的潜在技术。
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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