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Performance Evaluation of Regression Models in Predicting the Cost of Medical Insurance

Authors :
Cenita, Jonelle Angelo S.
Asuncion, Paul Richie F.
Victoriano, Jayson M.
Source :
International Journal of Computing Sciences Research (ISSN print: 2546-0552; ISSN online: 2546-115X) Vol. 7, pp. 2052-2065
Publication Year :
2023

Abstract

The study aimed to evaluate the regression models' performance in predicting the cost of medical insurance. The Three (3) Regression Models in Machine Learning namely Linear Regression, Gradient Boosting, and Support Vector Machine were used. The performance will be evaluated using the metrics RMSE (Root Mean Square), r2 (R Square), and K-Fold Cross-validation. The study also sought to pinpoint the feature that would be most important in predicting the cost of medical insurance.The study is anchored on the knowledge discovery in databases (KDD) process. (KDD) process refers to the overall process of discovering useful knowledge from data. It show the performance evaluation results reveal that among the three (3) Regression models, Gradient boosting received the highest r2 (R Square) 0.892 and the lowest RMSE (Root Mean Square) 1336.594. Furthermore, the 10-Fold Cross-validation weighted mean findings are not significantly different from the r2 (R Square) results of the three (3) regression models. In addition, Exploratory Data Analysis (EDA) using a box plot of descriptive statistics observed that in the charges and smoker features the median of one group lies outside of the box of the other group, so there is a difference between the two groups. It concludes that Gradient boosting appears to perform better among the three (3) regression models. K-Fold Cross-Validation concluded that the three (3) regression models are good. Moreover, Exploratory Data Analysis (EDA) using a box plot of descriptive statistics ceases that the highest charges are due to the smoker feature.<br />Comment: 14 pages, IRCCETE 2023, Ilocos Norte Philippines

Details

Database :
arXiv
Journal :
International Journal of Computing Sciences Research (ISSN print: 2546-0552; ISSN online: 2546-115X) Vol. 7, pp. 2052-2065
Publication Type :
Report
Accession number :
edsarx.2304.12605
Document Type :
Working Paper
Full Text :
https://doi.org/10.25147/ijcsr.2017.001.1.146