Novateur Publications, Prof. M. S. Patil, Kulkarni Sanika
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引用次数: 1
Abstract
A machine learning method for predicting health insurance rates is presented in this article. With healthcare expenditures becoming more complex, it is critical for insurance companies and policyholders to accurately estimate insurance prices. Utilizing a dataset that included medical history, demographic data, and other pertinent variables, a variety of machine learning techniques, such as ensemble methods and regression, were used to create prediction models. R-Squared and mean absolute error were two measures used to assess these models' performance. According to the developed models' results, insurance premiums can be predicted with accuracy, offering useful information for insurance counteragents. This approach has the potential to optimize pricing strategies, enhance risk assessment, and improve decision-making in the healthcare insurance sector. Machine Learning-Based Prediction of Medical Insurance Premiums Make predictions about health insurance companies based on personal traits. A dataset of policyholder attributes (such as age, gender, BMI, number of children, smoking behaviors, and geography) was gathered and preprocessed .Divide the data into sets for testing and training. Create and train a model for an artificial neural network with TensorFlow and Karas. R-squared metrics and mean R-squared error were used to assess the performance of the model. created a high R-Squared predictive model that was accurate. determined the main determinants of insurance rates. Machine learning has shown promise in estimating healthcare costs. This experiment demonstrates how well machine learning predicts medical insurance rates. Insurance companies may offer more individualized insurance plans, expedite the underwriting process, and help customers make well-informed decisions about their healthcare coverage by creating these predictive models. The created model can help policyholders make educated judgments and insurance companies establish proper prices. In the long run, our research helps the insurance industry enhance data-driven techniques, which benefits insurers as well as insured individuals in general.
本文介绍了一种预测医疗保险费率的机器学习方法。随着医疗支出变得越来越复杂,保险公司和投保人准确估算保险价格至关重要。利用包含病史、人口统计学数据和其他相关变量的数据集,我们采用了多种机器学习技术(如集合方法和回归)来创建预测模型。R 平方和平均绝对误差是用来评估这些模型性能的两个指标。根据所开发模型的结果,可以准确预测保险费,为保险代理商提供有用的信息。这种方法具有优化定价策略、加强风险评估和改善医疗保险领域决策的潜力。基于机器学习的医疗保险保费预测 根据个人特征对医疗保险公司进行预测。收集并预处理投保人属性数据集(如年龄、性别、体重指数、子女数量、吸烟行为和地理位置)。使用 TensorFlow 和 Karas 创建并训练人工神经网络模型。使用 R 平方指标和平均 R 平方误差来评估模型的性能。创建了一个准确的高 R 平方预测模型,确定了保险费率的主要决定因素。机器学习在估算医疗成本方面大有可为。本实验展示了机器学习对医疗保险费率的预测能力。通过创建这些预测模型,保险公司可以提供更加个性化的保险计划,加快承保流程,并帮助客户在充分了解情况后做出医疗保险决定。创建的模型可以帮助投保人做出明智的判断,并帮助保险公司确定适当的价格。从长远来看,我们的研究有助于保险业提高数据驱动技术,这对保险公司和投保人都有好处。