回归树识别相关交互作用:能否改善风险调整的预测性能?

Regression Trees Identify Relevant Interactions: Can This Improve the Predictive Performance of Risk Adjustment?

Health Economics · 2015
被引 33
人大 A-

中文导读

研究用回归树系统搜索变量间的交互作用,将其加入传统风险调整公式,发现对预测性能的提升微乎其微,表明忽略多数交互作用不会显著损失准确性。

Abstract

Abstract Risk equalization formulas have been refined since their introduction about two decades ago. Because of the complexity and the abundance of possible interactions between the variables used, hardly any interactions are considered. A regression tree is used to systematically search for interactions, a methodologically new approach in risk equalization. Analyses are based on a data set of nearly 2.9 million individuals from a major German social health insurer. A two‐step approach is applied: In the first step a regression tree is built on the basis of the learning data set. Terminal nodes characterized by more than one morbidity‐group‐split represent interaction effects of different morbidity groups. In the second step the ‘traditional’ weighted least squares regression equation is expanded by adding interaction terms for all interactions detected by the tree, and regression coefficients are recalculated. The resulting risk adjustment formula shows an improvement in the adjusted R 2 from 25.43% to 25.81% on the evaluation data set. Predictive ratios are calculated for subgroups affected by the interactions. The R 2 improvement detected is only marginal. According to the sample level performance measures used, not involving a considerable number of morbidity interactions forms no relevant loss in accuracy. Copyright © 2015 John Wiley & Sons, Ltd.

回归树交互效应风险调整预测性能