噪声硬件的线性分类

Prakruthi Pradeep, Venkata Sai Chelagamsetty, Avhishek Chatterjee
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引用次数: 0

摘要

由于人们对纳米级边缘设备上的机器学习越来越感兴趣,我们研究了硬件噪声和量化误差对线性分类器推理精度的影响。我们使用公认的硬件噪声和误差模型对合成和真实数据集进行的实验表明,它们对准确性有重大影响。为了减轻这些影响,我们通过结合线性分类、凸分析和度量集中的见解,提出了一种易于实施的策略。对合成数据集和真实数据集的评估表明,我们的简单策略显着提高了性能。最后,我们将简要讨论进一步探索的几个途径。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Linear Classification on Noisy Hardware
Motivated by the growing interest in machine learning on nanoscale edge devices, we study the effect of hardware noise and quantization errors on the accuracy of inference by linear classifiers. Our experiments on synthetic and real data sets using well accepted models for hardware noise and errors show that they have a significant impact on the accuracy. For mitigating those effects, we propose an easily implementable strategy by combining insights from linear classification, convex analysis and concentration of measure. Evaluations on synthetic and real data sets show that our simple strategy improves the performance significantly. We end with a brief discussion on a few avenues for further explorations.
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