Health Insurance Cost Prediction using Machine Learning
Kashish Bhatia, Shabeg Singh Gill, Navneet Kamboj, Manish Kumar, Rajesh Bhatia
Abstract
This paper represents a machine learning-based health insurance prediction system. Recently, many attempts have been made to solve this problem, as after Covid-19 pandemic, health insurance has become one of the most prominent areas of research. We have used the USA's medical cost personal dataset from kaggle, having 1338 entries. Features in the dataset that are used for the prediction of insurance cost include: Age, Gender, BMI, Smoking Habit, number of children etc. We used linear regression and also determined the relation between price and these features. We trained the system using a 70-30 split and achieved an accuracy of 81.3%.
Topics & Concepts
Computer scienceHealth insuranceHabitMachine learningArtificial intelligenceRegressionRegression analysisRelation (database)Actuarial scienceHealth careData miningStatisticsBusinessPsychologyEconomicsMathematicsPsychotherapistEconomic growthMachine Learning in HealthcareArtificial Intelligence in Healthcare