A hardware architecture for filtering irreducible testors

V. Rodriguez, José F. Martínez, J. A. Carrasco-Ochoa, M. Lazo-Cortés, R. Cumplido, C. F. Uribe
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引用次数: 2

Abstract

Feature selection in pattern recognition is a problem whose space complexity grows exponentially regarding the number of attributes in a dataset. There are several hardware implementations of algorithms for overcoming this complexity. These hardware architectures relay on a software component for filtering irreducible features subsets, which is a computationally complex task. In this paper, a new hardware module for the filtering process is presented. The main advantage of this new architecture is that no additional time is required for hardware execution whilst the software component is no longer needed. Experimental results show that the runtime magnitude order for software is the same as for hardware in some cases. The proposed architecture is algorithm independent and may lead to smaller hardware realizations than previous architectures.
一种用于过滤不可约测试的硬件架构
模式识别中的特征选择是一个空间复杂度随数据集中属性数量呈指数增长的问题。有几种算法的硬件实现可以克服这种复杂性。这些硬件架构依赖于软件组件来过滤不可约特征子集,这是一项计算复杂的任务。本文提出了一种新的滤波硬件模块。这种新架构的主要优点是不需要额外的时间来执行硬件,同时不再需要软件组件。实验结果表明,在某些情况下,软件的运行数量级与硬件的运行数量级相同。所提出的体系结构是算法独立的,可能导致比以前的体系结构更小的硬件实现。
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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