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A Review And Comparison Of Medical Expenditures Models: Two Neural Networks Versus Two-part Models

机译:医疗支出模型的回顾与比较:两个神经网络与两部分模型

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This paper compares the two-part model (TPM) that distinguishes between users and non-users of health care, with two neural networks (TNN) that distinguish users by frequency. In the model comparisons using data from the National Health Research Institute (NHRI) in Taiwan, we find strong evidence in favor of the neural networks approach. This paper shows that the individuals in the self-organizing map (SOM) network clusters can be described as several different forms of frequency distributions. The integration model of SOM and back propagation network (BPN) proposed by this paper not only permits policymakers to easily include more risk adjusters besides the demographics in the traditional capitation formula through the adaptation and calculation power of neural networks, but also reduces the incentives for cream skimming by decreasing estimation biases.
机译:本文将区分医疗保健用户和非用户的两部分模型(TPM)与按频率区分用户的两个神经网络(TNN)进行了比较。在使用来自台湾国家卫生研究院(NHRI)的数据进行的模型比较中,我们找到了支持神经网络方法的有力证据。本文表明,自组织映射(SOM)网络群集中的个体可以描述为几种不同形式的频率分布。本文提出的SOM与反向传播网络(BPN)的集成模型不仅允许决策者通过神经网络的自适应和计算能力,在传统的人为公式中轻松地将人口统计信息纳入人口统计之外,而且还减少了对通过减少估计偏差来进行奶油脱脂。

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