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NEW LM TESTS FOR UNIT ROOTS IN SEASONAL AR PROCESSES  

Oh, Yu-Jin (Business School, Korea University)
So, Beong-Soo (Department of Statistics, Ewha Womans University)
Publication Information
Journal of the Korean Statistical Society / v.36, no.4, 2007 , pp. 447-456 More about this Journal
Abstract
On the basis of marginal likelihood of the residual vector which is free of nuisance mean parameters, we propose new Lagrange Multiplier seasonal unit root tests in seasonal autoregressive process. The limiting null distribution of the tests is the standardized ${\chi}^2-distribution$. A Monte-Carlo simulation shows the new tests are more powerful than the tests based on the ordinary least squares (OLS) estimator, especially for large number of seasons and short time spans.
Keywords
${\chi}^2-distribution$; marginal likelihood; nuisance mean parameters; seasonal unit root tests;
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