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MODEL SELECTION AND AVERAGING OF HEALTH COSTS IN EPISODE TREATMENT GROUPS

机译:流行病治疗组健康费用的模型选择和平均

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摘要

Episode Treatment Groups (ETGs) classify related services into medically relevant and distinct units describing an episode of care. Proper model selection for those ETG-based costs is essential to adequately price and manage health insurance risks. The optimal claim cost model (or model probabilities) can vary depending on the disease. We compare four potential models (lognormal, gamma, log-skew-t and Lomax) using four different model selection methods (AIC and BIC weights, Random Forest feature classification and Bayesian model averaging) on 320 ETGs. Using the data from a major health insurer, which consists of more than 33 million observations from 9 million claimants, we compare the various methods on both speed and precision, and also examine the wide range of selected models for the different ETGs. Several case studies are provided for illustration. It is found that Random Forest feature selection is computationally efficient and sufficiently accurate, hence being preferred in this large data set. When feasible (on smaller data sets), Bayesian model averaging is preferred because of the posterior model probabilities.
机译:情节治疗组(ETG)将相关服务分为医疗相关和描述护理情节的不同单位。对于这些基于ETG的费用,正确选择模型对于充分定价和管理健康保险风险至关重要。最佳索赔成本模型(或模型概率)可以根据疾病而有所不同。我们在320个ETG上使用四种不同的模型选择方法(AIC和BIC权重,随机森林特征分类和贝叶斯模型平均)比较了四个潜在模型(对数正态,伽马,对数歪斜和Lomax)。使用来自一家主要医疗保险公司的数据,该数据包括900万索赔人的3,300万份观察结果,我们比较了速度和精度方面的各种方法,还检查了各种不同ETG的选定模型。提供了一些案例研究以进行说明。发现随机森林特征选择在计算上是有效的并且足够准确,因此在这种大数据集中是优选的。在可行的情况下(在较小的数据集上),由于后验模型概率,首选贝叶斯模型平均。

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