The preliminary test estimator (or predictor) is studied in the context of linear normal regression models. The estimator (or predictor) obtained after the preliminary test is known to be inadmissible with respect to squared error loss under certain assumptions. Nevertheless, it is still widely used in practical application of regression analysis, particularly in econometrics. The object of the present paper is to tabulate the optimal significance points in the preliminary test for practical use. The optimality is based on the minimax regret principle. It is shown that if, as is usual, we take the significance point equal to the 5 per cent point or 10 per cent point, the risk is extremely large for some parameter value. The optimal significance point of the preliminary t test decreases slightly as the degrees of freedom increase,but it is nearly constant; i.e., it lies between 1.370 to 1.380 if d.f. is greater than 6.
MLA
Sawa, Takamitsu, and Takeshi Hiromatsu. “Minimax Regret Significance Points for a Preliminary Test in Regression Analysis.” Econometrica, vol. 41, .no 6, Econometric Society, 1973, pp. 1093-1101, https://www.jstor.org/stable/1914038
Chicago
Sawa, Takamitsu, and Takeshi Hiromatsu. “Minimax Regret Significance Points for a Preliminary Test in Regression Analysis.” Econometrica, 41, .no 6, (Econometric Society: 1973), 1093-1101. https://www.jstor.org/stable/1914038
APA
Sawa, T., & Hiromatsu, T. (1973). Minimax Regret Significance Points for a Preliminary Test in Regression Analysis. Econometrica, 41(6), 1093-1101. https://www.jstor.org/stable/1914038
The Executive Committee of the Econometric Society has approved an increase in the submission fees for papers in Econometrica. Starting January 1, 2025, the fee for new submissions to Econometrica will be US$125 for regular members and US$50 for student members.
By clicking the "Accept" button or continuing to browse our site, you agree to first-party and session-only cookies being stored on your device. Cookies are used to optimize your experience and anonymously analyze website performance and traffic.