Abstract

At present, the prevalence of diabetes is increasing because the human body cannot metabolize the glucose level. Accurate prediction of diabetes patients is an important research area. Many researchers have proposed techniques to predict this disease through data mining and machine learning methods. In prediction, feature selection is a key concept in preprocessing. Thus, the features that are relevant to the disease are used for prediction. This condition improves the prediction accuracy. Selecting the right features in the whole feature set is a complicated process, and many researchers are concentrating on it to produce a predictive model with high accuracy. In this work, a wrapper-based feature selection method called recursive feature elimination is combined with ridge regression (L2) to form a hybrid L2 regulated feature selection algorithm for overcoming the overfitting problem of data set. Overfitting is a major problem in feature selection, where the new data are unfit to the model because the training data are small. Ridge regression is mainly used to overcome the overfitting problem. The features are selected by using the proposed feature selection method, and random forest classifier is used to classify the data on the basis of the selected features. This work uses the Pima Indians Diabetes data set, and the evaluated results are compared with the existing algorithms to prove the accuracy of the proposed algorithm. The accuracy of the proposed algorithm in predicting diabetes is 100%, and its area under the curve is 97%. The proposed algorithm outperforms existing algorithms.

Highlights

  • Supervised learning methods can be divided into classification and regression problems

  • This paper introduces feature selection based on genetic algorithm (GA) to detect and diagnose biological issues

  • The Pima Indians Diabetes (PIDD) data set is used in the experiment, the result with a high accuracy of 98% is obtained, and random forest is used as a classifier with 19 features

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Summary

Introduction

Supervised learning methods can be divided into classification and regression problems. A continuous problem can be predicted by using regression method. A data set is collection of information with samples and parameters. Ridge regression can be efficiently used to obtain the. CMC, 2022, vol., no.1 best solution if we have fewer samples with more number of parameters. Understanding the bias and variance in machine learning context is important. Bias refers to a condition where a model plots the inline nearby samples. Variance refers to the differences between fitted data sets. Ridge regression refers to a process where the sum of squares is introduced in linear regression. Some feature-based models are trained by using machine learning algorithms [1]. The accuracy of feature selection for new data is extremely low. The main problems in new data are underfitting and overfitting

Problem Formulation
Literature Review
Proposed Hybrid L2-RFE Methodology
L2 Regulated RFE
Proposed Hybrid Algorithm
Proposed Workflow on Feature Selection
Random Forest Classifier
Algorithm 2-RF
Experimental Results
Conclusions
Full Text
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