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首页> 外文期刊>Open Access Library Journal >Parkinson’s Disease Diagnosis: Detecting the Effect of Attributes Selection and Discretization of Parkinson’s Disease Dataset on the Performance of Classifier Algorithms
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Parkinson’s Disease Diagnosis: Detecting the Effect of Attributes Selection and Discretization of Parkinson’s Disease Dataset on the Performance of Classifier Algorithms

机译:帕金森的疾病诊断:检测帕金森氏病数据集的属性选择和离序化对分类器算法的性能的影响

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摘要

Precise detection of PD is important in its early stages. Precise result can be achieved through data mining, classification techniques such as Naive Bayes, support vector machine (SVM), multilayer perceptron neural network (MLP) and decision tree. In this paper, four types of classifiers based on Naive Bayes, SVM, MLP neural network, and decision tree (j48) are used to classify the PD dataset and the performances of these classifiers are examined when they are implemented upon the actual PD dataset, discretized PD dataset, and selected set of attributes from PD dataset. The dataset used in this study comprises a range of voice signals from 31 people: 23 with PD and 8 healthy people. The result shows that Naive Bayes and decision tree (j48) yield better accuracy when performed upon the discretized PD dataset with cross-validation test mode without applying any attributes selection algorithms. SVM gives high accuracy of 70% for training and 30% for the test when implemented on a discretized PD dataset and a splitting dataset. The MLP neural network gives the highest accuracy when used to classify actual PD dataset without discretization, attribute selection, or changing test mode.
机译:PD的精确检测在其早期阶段非常重要。精确的结果可以通过数据挖掘,分类技术,如天真贝叶斯,支持向量机(SVM),多层的Perceptron神经网络(MLP)和决策树等。在本文中,用于基于Naive Bayes,SVM,MLP神经网络和决策树(J48)的四种类型的分类器来分类PD数据集,并且当它们在实际PD数据集上实现时,检查这些分类器的性能,离散的PD数据集,以及从PD数据集中选定的属性集。本研究中使用的数据集包括来自31个人的一系列语音信号:23个PD和8人。结果表明,当在具有交叉验证测试模式的离散PD数据集时执行时,天真贝叶斯和决策树(J48)产生更好的精度而不应用任何属性选择算法。 SVM在离散化PD数据集和分割数据集上实现时,SVM为训练提供高精度为70%,对于测试,测试有30%。 MLP神经网络用于在没有离散化,属性选择或更改测试模式的情况下对实际PD数据集进行分类时,提供最高的精度。

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