Title of article :
Inference in regression models with many regressors
Author/Authors :
Anatolyev، نويسنده , , Stanislav، نويسنده ,
Issue Information :
دوفصلنامه با شماره پیاپی سال 2012
Abstract :
We investigate the behavior of various standard and modified F , likelihood ratio ( L R ), and Lagrange multiplier ( L M ) tests in linear homoskedastic regressions, adapting an alternative asymptotic framework in which the number of regressors and possibly restrictions grows proportionately to the sample size. When the restrictions are not numerous, the rescaled classical test statistics are asymptotically chi-squared, irrespective of whether there are many or few regressors. However, when the restrictions are numerous, standard asymptotic versions of classical tests are invalid. We propose and analyze asymptotically valid versions of the classical tests, including those that are robust to the numerosity of regressors and restrictions. The local power of all asymptotically valid tests under consideration turns out to be equal. The “exact” F test that appeals to critical values of the F distribution is also asymptotically valid and robust to the numerosity of regressors and restrictions.
Keywords :
Alternative asymptotic theory , Linear regression , Test size , F test , Test power , Wald test , Lagrange multiplier test , Likelihood ratio test
Journal title :
Journal of Econometrics
Journal title :
Journal of Econometrics