A Comparison of Alternative Models for the Demand for Medical Care |
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Authors: | Naihua Duan Willard G. Manning Carl N. Morris Joseph P. Newhouse |
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Affiliation: | 1. Economics Department , The Rand Corporation , 1700 Main Street, Santa Monica , CA , 90406;2. Department of Statistics , University of Texas , Austin , TX , 78712 |
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Abstract: | We have tested alternative models of the demand for medical care using experimental data. The estimated response of demand to insurance plan is sensitive to the model used. We therefore use a split-sample analysis and find that a model that more closely approximates distributional assumptions and uses a nonparametric retransformation factor performs better in terms of mean squared forecast error. Simpler models are inferior either because they are not robust to outliers (e.g., ANOVA, ANOCOVA), or because they are inconsistent when strong distributional assumptions are violated (e.g., a two-parameter Box-Cox transformation). |
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Keywords: | Health insurance Cost sharing Transformation Forecast Smearing estimate Intrafamily correlation Cross validation Mean forecast squared error |
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