Energy-Efficient Adaptive Classifier Design for Mobile Systems

Zafar Takhirov, Joseph Wang, Venkatesh Saligrama, A. Joshi
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引用次数: 13

Abstract

With the continuous increase in the amount of data that needs to be processed by digital mobile systems, energy-efficient computation has become a critical design constraint for mobile systems. In this paper, we propose an adaptive classifier that leverages the wide variability in data complexity to enable energy-efficient data classification operations for mobile systems. Our approach takes advantage of varying classification "hardness" across data to dynamically allocate resources and improve energy efficiency. On average, our adaptive classifier is ≈ 100× more energy efficient but has ≈ 1% higher error rate than a complex radial basis function classifier and is ≈ 10× less energy efficient but has ≈ 40% lower error rate than a simple linear classifier across a wide range of classification data sets.
移动系统节能自适应分类器设计
随着数字移动系统需要处理的数据量的不断增加,节能计算已成为移动系统设计的关键约束。在本文中,我们提出了一种自适应分类器,它利用数据复杂性的广泛可变性来实现移动系统的节能数据分类操作。我们的方法利用不同的数据分类“硬度”来动态分配资源并提高能源效率。在广泛的分类数据集上,我们的自适应分类器平均比复杂的径向基函数分类器节能约100倍,但错误率约1%;比简单的线性分类器节能约10倍,但错误率约40%。
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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