Enriched Optimization Algorithm for Effective Skin Disease Prediction Using Soft Computing Techniques

R. S. Kumar, R. Dhanagopal, S. S. Kumar
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Abstract

In recent years, a usual worldwide problem is a skin disease—the diagnostics of infection and skin disease prediction based on the data mining techniques. The precise and cost-effective treatments obtain a technologybased data mining system that can consider making the right decision. Depends on data, there are 34 UCI datasets have in the skin disease prediction. All of the datasets are not much important when predicting the skin disease problem. In this study, the essential datasets to be analyzed because they only give the best accuracy in skin disease prediction. For an outstanding selection of allocation, to propose a novel feature selection approaches, Enriched Fruitfly Optimization Algorithm (EFOA), and Ensemble Classifiers that are helps for an early stage of skin disease prediction. A hybrid technique through the three essential hybrid feature selection approaches such as Chi-Square method, Information Gain method, and Principal Component Analysis (PCA) methods that are combined for better feature selection results. Based on the skin disease dataset, the resultant feature selection approach generated the reduced data subset. Then, the Enriched Fruitfly Optimization Algorithm (EFOA) offers the optimization of reduced data subset. Here, the accuracy estimation is the vital factor to optimize the effective and best prediction of skin disease affected regions. Afterward, the classification performs to classify the EFOA based optimized result by using the six different classification methods. Where, the classification helps to analyze the optimized results, which offers the better classification procedure. To predict the base learner’s performance, to utilize the Naive Bayesian, K-Nearest Neighbour, Decision Tree, Support Vector Machine, Random Forest, and Multilayer Perceptron (MLP) to classify the optimized result. Then, the ensemble techniques used to analyze the classifier’s results through the 3 different methods like Bagging, Boosting, Stacking, added on the base learners to improve the proposed work. Based on the performance, the base learners’ performance is larger than the input dataset. The base learner’s parameters are essential to calculate the accuracy of skin disease prediction performance. The performance of the proposed method will take and compare to each base learner, and the performance shows the accurate skin disease prediction improvement with other existing methods.
基于软计算技术的皮肤病有效预测富集优化算法
近年来,一个世界性的常见问题是皮肤病——基于数据挖掘技术的感染诊断和皮肤病预测。精确而经济的处理方法使数据挖掘系统能够考虑做出正确的决策。根据数据的不同,有34个UCI数据集在皮肤病预测中有应用。在预测皮肤病问题时,所有的数据集都不是很重要。在本研究中,需要分析的基本数据集,因为它们只在皮肤病预测中给出最好的准确性。针对突出的特征选择分配,提出了一种新的特征选择方法——丰富果蝇优化算法(EFOA)和集成分类器,有助于皮肤病的早期预测。通过卡方法、信息增益法和主成分分析(PCA)三种基本的混合特征选择方法相结合,以获得更好的特征选择结果的混合技术。基于皮肤病数据集,所得到的特征选择方法生成了约简的数据子集。然后,利用丰富果蝇优化算法(EFOA)对简化后的数据子集进行优化。在这里,准确性估计是优化有效和最佳预测皮肤病影响区域的关键因素。然后,使用六种不同的分类方法对基于EFOA的优化结果进行分类。其中,分类有助于分析优化后的结果,从而提供更好的分类过程。为了预测基础学习器的性能,利用朴素贝叶斯、k近邻、决策树、支持向量机、随机森林和多层感知器(MLP)对优化结果进行分类。然后,通过Bagging、Boosting、Stacking 3种不同的方法对分类器的结果进行分析,并在基础学习器上添加集成技术来改进所提出的工作。从性能上看,基础学习器的性能要优于输入数据集。基础学习器的参数是计算皮肤病预测精度的关键。该方法的性能将与每个基础学习器进行比较,性能显示出与其他现有方法相比,该方法对皮肤病的预测精度有所提高。
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