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Feature subset selection using separability index matrix

机译:使用可分离性指标矩阵的特征子集选择

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摘要

Effective Feature Subset Selection (FSS) is an important step when designing engineering systems that classify complex data in real time. The electromyographic (EMG) signal-based walking assistance system is a typical system that requires an efficient computational architecture for classification. The performance of such a system depends largely on a criterion function that assesses the quality of selected feature subsets. However, many well-known conventional criterion functions use less relevant features for classification or they have a high computational cost. Here, we propose a new criterion function that provides more effective FSS. The proposed criterion function, known as a separability index matrix (SIM), provides features pertinent to the classification task and a very low computational cost. This new function produces to a simple feature selection algorithm when combined with the forward search paradigm. We performed extensive experimental comparisons in terms of classification accuracy and computational costs to confirm that the proposed algorithm outperformed other filter-type feature selection methods that are based on various distance measures, including inter-intra, Euclidean, Mahalanobis, and Bhattacharyya distances. We then applied the proposed method to a gait phase recognition problem in our EMG signal-based walking assistance system. We demonstrated that the proposed method performed competitively when compared with other wrapper-type feature selection methods in terms of class-separability and recognition rate.
机译:在设计实时对复杂数据进行分类的工程系统时,有效特征子集选择(FSS)是重要的一步。基于肌电图(EMG)信号的步行辅助系统是一种典型的系统,需要有效的计算体系进行分类。这种系统的性能很大程度上取决于评估所选特征子集质量的标准功能。但是,许多众所周知的常规标准函数使用较少的相关特征进行分类,或者它们具有较高的计算成本。在这里,我们提出了一个新的准则函数,它提供了更有效的FSS。所提出的标准函数称为可分离性指标矩阵(SIM),具有与分类任务相关的功能,并且计算成本非常低。当与正向搜索范例结合使用时,此新功能将生成一种简单的特征选择算法。我们在分类准确性和计算成本方面进行了广泛的实验比较,以确认所提出的算法优于基于各种距离量度(包括帧内,欧几里得,马哈拉诺比斯和Bhattacharyya距离)的其他过滤器类型特征选择方法。然后,我们将提出的方法应用于基于EMG信号的步行辅助系统中的步态相位识别问题。我们证明,与其他包装类型特征选择方法相比,该方法在分类可分离性和识别率方面具有竞争优势。

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