Comparison Between Machine Learning Regression Modelling to Predict Individual Premium Price

Srava Chrisdes Antoro, Elisabeth Gloria Manurung, essykapna Randalline, Maria Yus Trinity Irsan

Abstract


Machine Learning (ML) applications in healthcare aim to simplify people's lives by swiftly predicting and diagnosing diseases, outpacing the capabilities of most medical experts. A direct connection is established when technology, particularly digital health insurance, is employed to minimize the gap between insurance providers and policyholders. This has significantly transformed the way insurers create health insurance policies and has led to faster service delivery for consumers. Machine learning is utilized by insurance companies to offer clients precise, prompt, and efficient health insurance coverage. In this study, a regression method was trained and assessed to which one gets the bigger accuracy to forecast premium prices. The researchers accurately predicted the premium prices individuals incur based on various factors, such as age, diabetes, blood pressure issues, height, and weight. The experimental outcomes revealed the best method to predict is the KNN method in the data set that was used in the analysis, with an impressive accuracy of 87.73%. In comparison, the Random Forest is 87%, and the Boosting is 87.19% and the authors analyzed the model's performance using key metrics to assess its effectiveness. 


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DOI: http://dx.doi.org/10.33021/jafrm.v2i2.4807

DOI (PDF): http://dx.doi.org/10.33021/jafrm.v2i2.4807.g1712

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