Abstract
This paper gives a class of minimum $L_2$-distance estimators of the autoregression parameter in the first-order autoregression model when the errors have an unknown symmetric distribution. Within the class an asymptotically efficient estimator is exhibited. The asymptotic efficiency of this estimator relative to the least-squares estimator is the same as that of a certain signed rank estimator relative to the sample mean in the one sample location model. The paper also discusses goodness-of-fit tests for testing for symmetry and for a specified error distribution.
Citation
Hira L. Koul. "Minimum Distance Estimation and Goodness-of-Fit Tests in First-Order Autoregression." Ann. Statist. 14 (3) 1194 - 1213, September, 1986. https://doi.org/10.1214/aos/1176350059
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