Diagnosis of Breast Cancer and Diabetes using Hybrid Feature Selection Method

Divya Jain, V. Singh
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引用次数: 15

Abstract

Diagnosis of diseases at an early stage is a crucial task in the medical field. A hybrid machine learning framework is presented for the diagnosis of breast cancer and diabetes using efficient feature selection and classification technique. This research identifies significant risk factors related to both chronic disease datasets by applying different feature selection techniques and hybridization of ReliefF Feature Ranking with Principal Component Analysis (PCA) method. To evaluate the effectiveness of the presented feature selection method, k-nearest neighbor method for classification is used. The hybridization enhances the accuracy of the classifier with the proposed feature selection technique for both chronic disease datasets. The performance of the presented hybrid framework is found to be best in comparison to five other techniques - Correlation Based feature Selection (CBS), Fast Correlation Based Feature Selection (FCBF), Mutual Information Based Feature Selection (MIFS), MODTree Filtering Approach and ReliefF Feature Selection. Moreover, the proposed ReliefF-PCA method eliminates 25% and 33.3% of irrelevant features for diabetes and breast cancer dataset respectively.
应用混合特征选择方法诊断乳腺癌和糖尿病
疾病的早期诊断是医学领域的一项重要任务。提出了一种基于高效特征选择和分类技术的混合机器学习框架,用于诊断乳腺癌和糖尿病。本研究通过采用不同的特征选择技术和ReliefF特征排序与主成分分析(PCA)方法的杂交,确定了两种慢性疾病数据集相关的重要危险因素。为了评估所提出的特征选择方法的有效性,使用k近邻方法进行分类。结合所提出的特征选择技术,杂交提高了两种慢性病数据集分类器的准确性。与其他五种技术——基于相关性的特征选择(CBS)、基于快速相关性的特征选择(FCBF)、基于互信息的特征选择(MIFS)、MODTree滤波方法和ReliefF特征选择相比,所提出的混合框架的性能是最好的。此外,本文提出的relief - pca方法分别消除了糖尿病和乳腺癌数据集的25%和33.3%的不相关特征。
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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