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Limited information estimation and testing of discretized multivariate normal structural models

机译:离散多元正态结构模型的有限信息估计和测试

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Discretized multivariate normal structural models are often estimated using multistage estimation procedures. The asymptotic properties of parameter estimates, standard errors, and tests of structural restrictions on thresholds and polychoric correlations are well known. It was not clear how to assess the overall discrepancy between the contingency table and the model for these estimators. It is shown that the overall discrepancy can be decomposed into a distributional discrepancy and a structural discrepancy. A test of the overall model specification is proposed, as well as a test of the distributional specification (i.e., discretized multivariate normality). Also, the small sample performance of overall, distributional, and structural tests, as well as of parameter estimates and standard errors is investigated under conditions of correct model specification and also under mild structural and/or distributional misspecification. It is found that relatively small samples are needed for parameter estimates, standard errors, and structural tests. Larger samples are needed for the distributional and overall tests. Furthermore, parameter estimates, standard errors, and structural tests are surprisingly robust to distributional misspecification.
机译:离散多元正常结构模型通常使用多阶段估计程序来估计。参数估计的渐近性质,标准误差以及对阈值和多色相关性的结构限制的测试是众所周知的。目前尚不清楚如何评估这些估算器的权变表与模型之间的总体差异。结果表明,总体差异可以分解为分布差异和结构差异。提出了对整个模型规范的检验,以及对分布规范的检验(即离散多元正态性)。同样,在正确的模型规格以及轻微的结构和/或分布错误指定条件下,研究了总体,分布和结构测试的小样本性能,以及参数估计和标准误差。已经发现,参数估计,标准误差和结构测试需要相对较小的样本。分布和总体测试需要更大的样本。此外,参数估计,标准误差和结构测试对于分布不正确的情况出奇地强大。

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