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首页> 外文期刊>Applied biochemistry and biotechnology, Part A. enzyme engineering and biotechnology >Prediction of Skin Disease with Three Different Feature Selection Techniques Using Stacking Ensemble Method
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Prediction of Skin Disease with Three Different Feature Selection Techniques Using Stacking Ensemble Method

机译:采用堆叠合并方法预测三种不同特征选择技术的皮肤病

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摘要

Skin disease is the most common problem between people. Due to pollution and deployment of ozone layer, harmful UV rays of sun burn the skin and develop various types of skin diseases. Nowadays, machine learning and deep learning algorithms are generally used for diagnosis for various kinds of diseases. In this study, we have applied three feature extraction techniques univariate feature selection, feature importance, and correlation matrix with heat map to find the optimum data subset of erythemato-squamous disease. Four classification techniques Gaussian Naive Bayesian (NB), decision tree (DT), support vector machine (SVM), and random forest are used for measuring the performance of model. Stacking ensemble technique is then applied to enhance the prediction performance of the model. The proposed method used for measuring the performance of the model. It is finding that the optimal subset of the erythemato-squamous disease is performed well in the case of correlation and heat map feature selection techniques. The mean value, slandered deviation, root mean square error, kappa statistical error, and area under receiver operating characteristics and accuracy are calculated for demonstrating the effectiveness of the proposed model. The feature selection techniques applied with staking ensemble technique gives the better result as compared to individual machine learning techniques. The obtained results show that the performance of proposed model is higher than previous results obtained by researchers.
机译:皮肤病是人之间最常见的问题。由于臭氧层的污染和部署,阳光有害的紫外线烧伤皮肤,养成各种类型的皮肤病。如今,机器学习和深度学习算法通常用于各种疾病的诊断。在本研究中,我们应用了三种特征提取技术单变量特征选择,特征重要性和相关矩阵,具有热图,以找到红斑鳞状疾病的最佳数据子集。四种分类技术高斯天真贝叶斯(NB),决策树(DT),支持向量机(SVM)和随机林用于测量模型的性能。然后应用堆叠集合技术以增强模型的预测性能。用于测量模型性能的所提出的方法。认为,在相关性和热图特征选择技术的情况下,在相关性和热图特征选择技术的情况下表现出红细胞鳞状疾病的最佳子集。计算接收器操作特性和准确度下的平均值,裂缝偏差,根均方误差,κ统计误差和面积,用于展示所提出的模型的有效性。与单独的机器学习技术相比,采用铆接合奏技术应用的特征选择技术具有更好的结果。所获得的结果表明,所提出的模型的性能高于研究人员获得的先前结果。

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