一种新的混沌鸡群特征选择算法

Khaled Ahmed, A. Hassanien, S. Bhattacharyya
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引用次数: 27

摘要

特征选择是数据挖掘中的一项重要任务,其目的是在保持分类性能的同时降低数据集的维数。鸡群优化算法(CSO)以其高效、有效的特点在特征选择中得到了广泛的应用。然而,由于特征选择是一项具有挑战性的任务,在复杂的搜索空间中,CSO很快就会陷入局部最小问题。本文旨在通过应用logistic和趋于混沌映射来提高CSO的搜索能力,以帮助CSO群更好地探索搜索空间。基于混沌鸡群算法的特征选择算法在5个基准数据集上与4种特征选择算法进行了比较。对几种常用的分类器进行比较,计算出每种分类器对所选特征和降维所对应的灵敏度。在迭代过程中,最佳适应度值显著提高了分类精度。
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A novel chaotic chicken swarm optimization algorithm for feature selection
Feature selection is an important task in data mining, which aims to reduce the dimensionality of the data sets while at least maintaining the classification performance. Chicken swarm optimization algorithm (CSO) has been widely applied to feature selection because of its efficiency and effectiveness. However, since feature selection is a challenging task with a complex search space, CSO quickly gets stuck the local minimum problem. This paper aims to improve the CSO searching ability by applying logistic and tend chaotic maps to assist the CSO swarm in exploring the search space better. The proposed chaotic chicken swarm algorithm (CCSO)-based feature selection algorithm is compared with four feature selection algorithms on five benchmark data sets. A comparison among several types of popular classifiers is done to figure out the sensitivity of each classifier corresponding to the selected features and the dimension reduction. During iterations, the best fitness value shows remarkable improvement of the classification accuracy.
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