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Statistical analysis of mammographic features and its classification using support vector machine

机译:支持向量机对乳腺X线摄影特征的统计分析及其分类

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摘要

This study aims at designing a support vector machine (SVM)-based classifier for breast cancer detection with higher degree of accuracy. It introduces a best possible training scheme of the features extracted from the mammogram, by first selecting the kernel function and then choosing a suitable training-test partition. Prior to classification, detailed statistical analysis viz.. test of significance, density estimation have been performed for identifying discriminating power of the features in between malignant and benign classes. A comparative study has been performed in respect to diagnostic measures viz., confusion matrix, sensitivity and specificity. Here we have considered two data sets from UCI machine learning database having nine and ten dimensional feature spaces for classification. Furthermore, the overall classification accuracy obtained by using the proposed classification strategy is 99.385% for dataset-I and 93.726% for dataset-II, respectively.
机译:这项研究旨在设计一种基于支持向量机(SVM)的分类器,以更高的准确度检测乳腺癌。通过首先选择内核函数,然后选择合适的训练测试分区,它介绍了从乳房X线照片提取的特征的最佳可能训练方案。在分类之前,已经进行了详细的统计分析,即显着性检验,密度估计,以识别恶性和良性类别之间特征的区分能力。已经就诊断措施进行了比较研究,即混淆矩阵,敏感性和特异性。在这里,我们考虑了来自UCI机器学习数据库的两个数据集,这些数据集具有九个和十个维特征空间用于分类。此外,使用建议的分类策略获得的总体分类精度对于数据集I分别为99.385%和对于数据集II为93.726%。

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