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模型置信集 (MCS)×Diebold-Mariano Test×逐步回归×
领域计量经济学计量经济学统计学
方法族Hypothesis testHypothesis testRegression model
起源年份201119951960
提出者Hansen, Lunde & NasonFrancis Diebold & Roberto MarianoM. A. Efroymson
类型Sequential hypothesis testing procedure for model comparisonNon-parametric forecast comparison testAutomated variable selection
开创性文献Hansen, P. R., Lunde, A., & Nason, J. M. (2011). The model confidence set. Econometrica, 79(2), 453–497. DOI ↗Diebold, F. X., & Mariano, R. S. (1995). Comparing predictive accuracy. Journal of Business & Economic Statistics, 13(3), 253–263. DOI ↗Efroymson, M. A. (1960). Multiple regression analysis. In A. Ralston & H. S. Wilf (Eds.), Mathematical Methods for Digital Computers (pp. 191–203). Wiley. link ↗
别名MCS Procedure, Superior Set of Models, Model Selection Confidence Set, Model Güven KümesiDM Test, Test of Equal Forecast Accuracy, Diebold-Mariano Forecast Comparison Test, Tahmin Doğruluğu Eşitliği Testistepwise selection, forward stepwise regression, backward stepwise regression, forward-backward selection
相关335
摘要The Model Confidence Set (MCS) is a sequential hypothesis-testing procedure introduced by Hansen, Lunde, and Nason (2011) that identifies the smallest collection of forecasting or predictive models statistically indistinguishable from the best-performing model at a given confidence level. Instead of selecting a single winner, MCS returns a set of superior models, making it especially valuable in econometric forecast comparisons where the true best model is unknown.The Diebold-Mariano (DM) test, introduced by Diebold and Mariano in 1995, is a widely used non-parametric procedure for formally comparing the predictive accuracy of two competing forecasting models. It evaluates whether the difference in forecast errors between two models is statistically significant, without requiring nested models or specific distributional assumptions about the forecasts, making it broadly applicable across economics, finance, and time-series analysis.Stepwise regression is an automated variable selection procedure for multiple linear regression that adds or removes predictor variables one at a time according to a statistical criterion, typically the F-statistic or a p-value threshold. The forward-selection algorithm was formally described by Efroymson (1960) and the bidirectional variant was popularised by Draper and Smith in their landmark 1966 text Applied Regression Analysis. Despite widespread historical use, the method is now widely critiqued, making its documentation essential in any canonical methods library.
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ScholarGate方法对比: Model Confidence Set · Diebold-Mariano Test · Stepwise Regression. 于 2026-06-19 检索自 https://scholargate.app/zh/compare