An Improved Method for the Data Cluster Based Feature Selection and Classification

K. Patidar, Rahul Gour, Anshu Dixit, M. Verma, A. K. Pal
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Abstract

The improved Support Vector Machine (SVM) algorithm and a Random Forest (RF) algorithm technique for the cluster-based feature selection and classification existed and were calculated. It has been calculated going on the Statlog Dataset. Missing values in clinical data is also a major issue faced by researchers. A four-stage missing value prediction model has been developed to handle missing values. The complete process includes Data cleaning, Feature selection, Train Validation, Parameter tuning, Model testing, Evaluating, Final classification, clustering and prediction. Support Vector Machine (SVM) algorithms have been put in for the data classification. It has been put in based on the class labels and more connect the correlations based on the heatmap. Logistic Regression (LR) machine learning algorithm is also used to estimate the association in the middle of a depending on variable and one or more independent variables, other than it is used to formulate a prediction about a categorical variable against a continuous one. Random Forest is a Supervised Machine Learning(ML) Algorithm that is used commonly in Classification and Regression problems. The results illustrate that the proposed system provided improved accuracy with random forest on the Statlog Dataset.
一种改进的数据聚类特征选择与分类方法
改进的支持向量机(SVM)算法和随机森林(RF)算法技术分别用于基于聚类的特征选择和分类。它已经在Statlog数据集上计算过了。临床数据的价值缺失也是研究人员面临的主要问题。提出了一种四阶段缺失值预测模型来处理缺失值。整个过程包括数据清洗、特征选择、训练验证、参数调优、模型测试、评估、最终分类、聚类和预测。采用支持向量机(SVM)算法进行数据分类。它是基于类标签的,更多的是基于热图连接的相关性。逻辑回归(LR)机器学习算法也用于估计依赖变量和一个或多个自变量之间的关联,而不是用于制定关于连续变量的分类变量的预测。随机森林是一种监督机器学习算法,通常用于分类和回归问题。结果表明,该系统在Statlog数据集上提供了更高的随机森林精度。
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