A New Evolutionary-Incremental Framework for Feature Selection

M. Sigari, Muhammad Reza Pourshahabi, H. Pourreza
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引用次数: 3

Abstract

Feature selection is an NP-hard problem from the viewpoint of algorithm design and it is one of the main open problems in pattern recognition. In this paper, we propose a new evolutionary-incremental framework for feature selection.The proposed framework can be applied on an ordinary evolutionary algorithm (EA) such as genetic algorithm (GA) or invasive weed optimization (IWO). This framework proposes some generic modifications on ordinary EAs to be compatible with the variable length of solutions. In this framework, the solutions related to the primary generations have short length.Then, the length of solutions may be increased through generations gradually. In addition, our evolutionary-incremental framework deploys two new operators called addition and deletion operators which change the length of solutions randomly. For evaluation of the proposed framework, we use that for feature selection in the application of face recognition. In this regard, we applied our feature selection method on a robust face recognition algorithm which is based on the extraction of Gabor coefficients. Experimental results show that our proposed evolutionary-incremental framework can select a few number of features from existing thousands features efficiently. Comparison result of the proposed methods with the previous methods shows that our framework is comprehensive, robust, and well-defined to apply on many EAs for feature selection.
一种新的进化-增量特征选择框架
从算法设计的角度来看,特征选择是一个np困难问题,是模式识别中的主要开放性问题之一。在本文中,我们提出了一种新的进化-增量特征选择框架。该框架可以应用于遗传算法(GA)或入侵杂草优化(IWO)等普通进化算法(EA)。该框架提出了对普通ea的一些通用修改,以兼容解的可变长度。在这个框架中,与初级代相关的解具有较短的长度。然后,解的长度可以通过代逐渐增加。此外,我们的进化增量框架部署了两个新的操作符,称为添加和删除操作符,它们随机改变解的长度。为了评估所提出的框架,我们将其用于人脸识别应用中的特征选择。在这方面,我们将我们的特征选择方法应用于基于Gabor系数提取的鲁棒人脸识别算法。实验结果表明,我们提出的进化增量框架可以有效地从现有的数千个特征中选择少量的特征。与已有方法的比较结果表明,该框架具有较强的鲁棒性和良好的定义,可以应用于多种ea的特征选择。
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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