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EXACT PROPERTIES OF THE CONDITIONAL LIKELIHOOD RATIO TEST IN AN IV REGRESSION MODEL

机译:IV回归模型中条件似然比试验的精确性质

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For a simplified structural equation/TV regression model with one right-side endogenous variable, we derive the exact conditional distribution function of Moreira's (2003) conditional likelihood ratio (CLR) test statistic. This is used to obtain the critical value function needed to implement the CLR test, and reasonably comprehensive graphical versions of this function are provided for practical use. The analogous functions are also obtained for the case of testing more than one right-side endogenous coefficient, but in this case for a similar test motivated by, but not generally the same as, the likelihood ratio test. Next, the exact power functions of the CLR test, the Anderson-Rubin test, and the Lagrange multiplier test suggested by Kleiber-gen (2002) are derived and studied. The CLR test is shown to clearly conditionally dominate the other two tests for virtually all parameter configurations, but no test considered is either inadmissable or uniformly superior to the other two. The unconditional distribution function of the likelihood ratio test statistic is also derived using the same argument. This shows that both exactly, and under Staiger/Stock weak-instrument asymptotics, the test based on the usual asymptotic critical value is always oversized and can be very seriously so when the number of instruments is large.
机译:对于具有一个右侧内生变量的简化结构方程/ TV回归模型,我们推导了Moreira(2003)条件似然比(CLR)检验统计量的精确条件分布函数。这用于获取实现CLR测试所需的临界值函数,并且为实际使用提供了该函数的合理全面的图形版本。对于测试一个以上的右侧内生系数的情况,也获得了类似的函数,但是在这种情况下,对于由似然比测试(但与之不大体相同)激励的类似测试,也获得了类似的功能。接下来,推导并研究了Kleiber-gen(2002)建议的CLR测试,Anderson-Rubin测试和Lagrange乘数测试的精确幂函数。结果表明,对于几乎所有参数配置,CLR测试显然都在条件上主导了其他两个测试,但是没有一个测试被认为是不允许或统一优于其他两个的。似然比检验统计量的无条件分布函数也使用相同的参数得出。这表明,无论是精确的还是在Staiger / Stock弱仪器渐近技术下,基于通常的渐近临界值的测试总是过大且可能非常认真,因此当仪器数量很大时。

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