Electrical-Electronics Department, Firat University, Engineering Faculty, Elazig, Turkey.
J Med Syst. 2012 Apr;36(2):941-9. doi: 10.1007/s10916-010-9558-0. Epub 2010 Jul 13.
In biomedical studies, accuracy of classification algorithms used in disease diagnosis systems is certainly an important task and the accuracy of system is strictly related to extraction of discriminatory features from data. In this paper, we propose a new multi-class feature selection method based on Rotation Forest meta-learner algorithm. The feature selection performance of this newly proposed ensemble approach is tested on Erythemato-Squamous diseases dataset. The discrimination ability of selected features is evaluated by the use of several machine learning algorithms. In order to evaluate the performance of Rotation Forest Ensemble Feature Selection approach quantitatively, we also used various and widely utilized ensemble algorithms to compare effectiveness of resultant features. The new multi-class or ensemble feature selection algorithm exhibited promising results in eliminating redundant attributes. The Rotation Forest selection based features demonstrated accuracies between 98% and 99% in various classifiers and this is a quite high performance for Erythemato-Squamous Diseases diagnosis.
在生物医学研究中,用于疾病诊断系统的分类算法的准确性无疑是一项重要任务,而系统的准确性与从数据中提取判别特征严格相关。在本文中,我们提出了一种新的基于旋转森林元学习器算法的多类特征选择方法。该新提出的集成方法的特征选择性能在红斑鳞屑性疾病数据集上进行了测试。通过使用几种机器学习算法来评估所选特征的判别能力。为了定量评估旋转森林集成特征选择方法的性能,我们还使用了各种广泛使用的集成算法来比较所得特征的有效性。新的多类或集成特征选择算法在消除冗余属性方面表现出了有前景的结果。基于旋转森林选择的特征在各种分类器中表现出 98%到 99%的准确率,这对于红斑鳞屑性疾病的诊断来说是相当高的性能。