一种基于群体的对称不确定性特征选择方法

R. Abitha, S. Vennila
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引用次数: 5

摘要

自闭症谱系障碍(ASD)是一种复杂的神经系统疾病,对不同技能和才能的发展产生终生影响。最近,由于饮食习惯、环境变化等原因,ASD在许多成人和儿童中广泛传播。数据挖掘方法被有效地用于识别儿童和成人ASD的完美特征。特征选择(FS)技术对于处理不同维度的数据集是必要的,这些数据集可能包含高、小、中维度的特征。本文对几种滤波特征选择技术进行了比较研究,以减小ASD儿童数据集的大小。利用SU、IG、CS等特征选择方法和PSO、GA、ACO等优化技术,提出了一种基于SU和PSO的基于群的对称不确定性特征选择(SSU-FS)方法。为了评估基于群的对称不确定性特征选择方法(SSU-FS),使用了Naïve贝叶斯和人工神经网络等分类技术。
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A Swarm Based Symmetrical Uncertainty Feature Selection Method for Autism Spectrum Disorders
Autism Spectrum Disorder (ASD) is emerging as a difficult neurological disorder that have a lifetime impact on the development of different skills and talents. Recently, ASD is widely spread among many adults and children because of their food habits, changes in an environment, etc. Data Mining methods are effectively used to identify the perfect features of ASD among children and adults. Feature selection (FS) techniques are necessary for dealing with different dimensional datasets that may incorporate features in the high, little and, medium dimensions. In this paper, a comparative study of several filter feature selection techniques is utilized to diminish the size of the ASD Children dataset. Feature selection methods like SU, IG, CS and optimization technique like PSO, GA and ACO have utilized and proposed a swarm based Symmetrical Uncertainty feature selection (SSU-FS) method based on SU and PSO. For evaluating the Swarm based Symmetrical Uncertainty feature selection method (SSU-FS), classification techniques like Naïve Bayes and ANN have used.
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