An efficient feature selection paradigm using PCA-CFS-Shapley values ensemble applied to small medical data sets

S. Sasikala, S. Appavu alias Balamurugan, S. Geetha
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引用次数: 4

Abstract

The precise diagnosis of patient profiles into categories, such as presence or absence of a particular disease along with its level of severity, remains to be a crucial challenge in biomedical field. This process is realized by the performance of the classifier by using a supervised training set with labeled samples. Then based on the result obtained, the classifier is allowed to predict the labels of new samples. Due to presence of irrelevant features it is difficult for standard classifiers from obtaining good detection rates. Hence it is important to select the features which are more relevant and by with good classifiers could be constructed to obtain a good accuracy and efficiency. This study is aimed to classify the medical profiles, and is realized by feature extraction (FE), feature ranking (FR) and dimension reduction methods (Shapley Values Analysis) as a hybrid procedure to improve the classification efficiency and accuracy. To appraise the success of the proposed method, experiments were conducted across 6 different medical data sets using J48 decision tree classifier. The experimental results showed that using the PCA-CFS-Shapley Values analysis procedure improves the classification efficiency and accuracy compared with individual usage.
一种基于PCA-CFS-Shapley值集成的高效特征选择范式,应用于小型医疗数据集
将患者的情况精确地分类,例如是否存在某种特定疾病及其严重程度,仍然是生物医学领域的一个关键挑战。该过程通过使用带有标记样本的监督训练集来实现分类器的性能。然后根据得到的结果,让分类器预测新样本的标签。由于不相关特征的存在,标准分类器很难获得良好的检测率。因此,重要的是选择更相关的特征,并通过构建好的分类器来获得良好的准确率和效率。本研究以医学档案分类为目标,通过特征提取(FE)、特征排序(FR)和降维方法(Shapley Values Analysis)作为混合过程来实现分类效率和准确率。为了评估该方法的有效性,使用J48决策树分类器在6个不同的医疗数据集上进行了实验。实验结果表明,PCA-CFS-Shapley值分析方法与单独使用相比,提高了分类效率和准确率。
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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