通过决策树回归提高可解释性:以保险数据集为例

Shuyuan Dong, Dingzhou Fei
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引用次数: 2

摘要

国家卫生保健支出迅速增加是发达国家和发展中国家都面临的问题。本研究基于保险公司的医疗保险数据,探讨医疗保险费用的影响因素。并以影响因素为特征变量,分别建立决策树回归模型和线性回归模型,对医疗保险费用进行预测。主要结论如下:(1)“地域”和“性别”特征对保险成本没有影响,(2)吸烟对保险成本的影响最大。吸烟是身体质量指数(BMI)的一个特征,对保险费用有驱动作用。(3)决策树的回归相关系数约为81%,线性回归相关系数为65%,即决策树的预测结果更为准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improve the interpretability by decision tree regression: exampled by an insurance dataset
Rapidly rising national health care expenditure is a problem for both developed and developing countries. Based on the data of medical insurance of insurance companies, this study explores the influencing factors of medical insurance cost. Furthermore, the influencing factors are used as characteristic variables to establish decision tree regression model and linear regression model, and predict the medical insurance cost. The main conclusions are as follows: (1) The characteristics of “region” and “sex” do not affect the insurance cost.(2) Smoking has the greatest influence on insurance cost. Smoking is a characteristic of body mass index (BMI) and has a driving effect on insurance cost. (3) The regression correlation coefficient of decision tree is about 81%, and the linear regression correlation coefficient is 65%, that is, the prediction result of decision tree is more accurate.
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