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M Tests with a New Normalization Matrix

机译:使用新的归一化矩阵进行M检验

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This paper proposes a new family of M tests building on the work of Kuan and Lee (2006) and Kiefer et al. (2000). The idea is to replace the asymptotic covariance matrix in conventional M tests with an alternative normalization matrix, constructed using moment functions estimated from (K + 1) recursive subsamples. The new tests are simple to implement. They automatically account for the effect of parameter estimation and allow for conditional heteroskedasticity and serial correlation of general forms. They converge to central F distributions under the fixed-K asymptotics and to chi-square distributions if K is allowed to approach infinity. We illustrate their applications using three simulation examples: (1) specification testing for conditional heteroskedastic models, (2) non-nested testing with serially correlated errors, and (3) testing for serial correlation with unknown heteroskedasticity. The results show that the new tests exhibit good size properties with power often comparable to the conventional M tests while being substantially higher than that of Kuan and Lee (2006).
机译:本文基于Kuan and Lee(2006)和Kiefer等人的工作,提出了一个新的M检验族。 (2000)。想法是用替代归一化矩阵替换常规M检验中的渐近协方差矩阵,该归一化矩阵使用从(K +1)个递归子样本估计的矩函数构造。新测试易于实现。它们自动考虑参数估计的效果,并允许条件异方差性和一般形式的序列相关性。它们收敛到固定K渐近下的中心F分布,如果允许K接近无穷大则收敛到卡方分布。我们使用三个仿真示例来说明它们的应用:(1)对条件异方差模型的规范测试,(2)具有序列相关错误的非嵌套测试,以及(3)具有未知异方差的序列相关性测试。结果表明,新测试具有良好的尺寸性能,其功率通常可与传统的M测试相媲美,但远高于Kuan和Lee(2006)。

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