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首页> 外文期刊>Knowledge-Based Systems >Feature selection with limited bit depth mutual information for portable embedded systems
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Feature selection with limited bit depth mutual information for portable embedded systems

机译:具有用于便携式嵌入式系统的有限比特深度相互信息的功能选择

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摘要

Since wearable computing systems have grown in importance in the last years, there is an increased interest in implementing machine learning algorithms with reduced precision parameters/computations. Not only learning, also feature selection, most of the times a mandatory preprocessing step in machine learning, is often constrained by the available computational resources. This work considers mutual information - one of the most common measures of dependence used in feature selection algorithms - with a limited number of bits. In order to test the procedure designed, we have implemented it in several well-known feature selection algorithms. Experimental results over several synthetic and real datasets demonstrate that low bit representations are sufficient to achieve performances close to that of double precision parameters and thus open the door for the use of feature selection in embedded platforms that minimize the energy consumption and carbon emissions. (C) 2020 Elsevier B.V. All rights reserved.
机译:由于可穿戴计算系统在过去几年中增长,因此对实现计算机学习算法的兴趣增加了,具有降低的精度参数/计算。不仅学习,还有特征选择,大部分时间都是机器学习中强制预处理步骤,通常受到可用的计算资源的限制。这项工作考虑了相互信息 - 特征选择算法中使用的最常见措施之一 - 具有有限数量的比特。为了测试设计的程序,我们在几个众所周知的特征选择算法中实现了它。在若干合成和真实数据集上的实验结果表明,低位表示足以实现接近双精度参数的性能,从而打开用于在最小化能量消耗和碳排放的嵌入式平台中使用特征选择的门。 (c)2020 Elsevier B.v.保留所有权利。

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