Applying Particle Swarm Optimization-Base Decision Tree Classifier for Mental Illnesses

E. Salehi
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Abstract

Background : Data mining techniques such as clustering and classification are used to explore patient's data and extract a predictive model. Medical data set are often classified by a large number of irrelevant disease measurements(features). Feature selection is one of the most common tasks which reduces the computational cost by removing insignificant features. Method : This paper presents a graph-based Louvain algorithm for mental illness dataset clustering and a particle swarm optimization combined with a decision tree as the classifier to select the small number of an informative feature from the thousands of features were collected from health centers consist of 1060 people in two groups of 550 patients and 510 healthy. Result: The results show that "aggression" Finding the greatest impact on the diagnosis of mental disorders has been observed in the number of 65. After that, the features such as "prisoner in the family" and "hard labor" with 63 observations had a greater impact on the disease also the third ranking "illiterate" and "elation and euphoria" had 61 and 58 observations. Conclusions: The classification accuracy shows that the proposed method is capable of producing good results with fewer features than the original datasets. Keywords: Mental illness, Graph clustering, Particle swarm optimization, ID3 DOI : 10.7176/JIEA/9-7-03 Publication date: December 31 st 2019
基于粒子群优化的决策树分类器在精神疾病中的应用
背景:采用聚类和分类等数据挖掘技术对患者数据进行挖掘并提取预测模型。医学数据集通常由大量不相关的疾病测量(特征)来分类。特征选择是最常见的任务之一,它通过去除无关紧要的特征来减少计算成本。方法:本文提出了一种基于图的Louvain算法用于精神疾病数据聚类,并结合决策树的粒子群优化作为分类器,从健康中心收集的数千个特征中选择少量信息特征,这些特征由550名患者和510名健康者组成。结果:结果显示,“攻击性”对精神障碍诊断影响最大的有65人。其次,“家庭囚犯”和“苦役”等特征对疾病的影响更大,观察值为63,排名第三的“文盲”和“兴高采烈”的观察值分别为61和58。结论:分类精度表明,本文提出的方法能够在较少特征的情况下产生较好的分类结果。关键词:精神疾病,图聚类,粒子群优化,ID3 DOI: 10.7176/JIEA/9-7-03出版日期:2019年12月31日
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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