利用回归树探索复杂风险均衡模型中交互项的预测能力

Exploring the predictive power of interaction terms in a sophisticated risk equalization model using regression trees

Health Economics · 2017
被引 13
人大 A-

中文导读

利用回归树方法,在荷兰2014年风险均衡模型中识别交互项,发现其能改善整体和部分人群的费用预测,但可能恶化其他人群的预测,且需额外标准决定实际应用。

Abstract

This study explores the predictive power of interaction terms between the risk adjusters in the Dutch risk equalization (RE) model of 2014. Due to the sophistication of this RE-model and the complexity of the associations in the dataset (N = ~16.7 million), there are theoretically more than a million interaction terms. We used regression tree modelling, which has been applied rarely within the field of RE, to identify interaction terms that statistically significantly explain variation in observed expenses that is not already explained by the risk adjusters in this RE-model. The interaction terms identified were used as additional risk adjusters in the RE-model. We found evidence that interaction terms can improve the prediction of expenses overall and for specific groups in the population. However, the prediction of expenses for some other selective groups may deteriorate. Thus, interactions can reduce financial incentives for risk selection for some groups but may increase them for others. Furthermore, because regression trees are not robust, additional criteria are needed to decide which interaction terms should be used in practice. These criteria could be the right incentive structure for risk selection and efficiency or the opinion of medical experts.

风险均等化模型交互项回归树预测能力