红斑鳞状疾病分类的机器学习算法性能分析

S. Singh, Amit Sinha, S. Yadav
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引用次数: 1

摘要

如今,红斑鳞状疾病是最常见和最危险的皮肤病之一,全世界的人们都在遭受这种疾病的折磨。这是一门很受欢迎的皮肤学课程。本文将各种机器学习分类器用于红斑鳞状疾病(ESDs)分类,并对其性能进行了比较和分析。特征对分类器的准确率起着重要的作用,为此,随机森林分类器被用作特征选择算法。将这些特征进行比较,并从34个特征中选择最佳的15个特征进行分类。训练了有监督的机器学习模型,并比较了它们的准确率、f1分数和分类所需的时间。逻辑回归、支持向量机和k近邻分类器达到99%的准确率。集成学习方法(如AdaBoost、随机森林、light GBM、XGBoost和额外的树分类器)所花费的时间相对较高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Performance Analysis of Machine Learning Algorithms for Erythemato-Squamous Diseases Classification
Now a days Erythemato-squamous diseases is one of the most common and dangerous skin disease peoples across worldwide are suffering from disease. This is a popular class of dermatology. In this paper various machine learning classifiers has been used for Erythemato-squamous diseases (ESDs) classification and their performance has been compared and analyzed. Features plays an important role in accuracy of classifiers, for this purpose a random forest classifier has been used as feature selection algorithm. These features are compared and best 15 features are selected among available 34 features for classification. Supervised machine learning models are trained and their accuracy, f1-score and time taken for classification has been compared. Logistic regression, support vector machine and K-Nearest neighbor classifier achieves 99% accuracy. Time taken by ensemble learning approaches such as AdaBoost, random forest, light GBM, XGBoost, and extra trees classifiers are relatively higher.
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