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首页> 外文期刊>Journal of Econometrics >Identification, estimation and testing of conditionally heteroskedastic factor models
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Identification, estimation and testing of conditionally heteroskedastic factor models

机译:条件异方差因素模型的识别,估计和测试

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摘要

We investigate the effects of dynamic heteroskedasticity on statistical factor analysis. We show that identification problems are alleviated when variation in factor variances is accounted for. Our results apply to dynamic APT models and other structural models. We also find that traditional ML estimation of unconditional variance parameters remains consistent if the factor loadings are identified from the unconditional distribution, but their standard errors must be robustified. We develop a simplepreliminary LM test for ARCH effects in the common factors, and discuss two-step consistent estimation of the conditional variance parameters. Finally, we conduct a detailed simulation exercise.
机译:我们调查动态异方差对统计因素分析的影响。我们表明,当考虑因素方差的变化时,识别问题得到缓解。我们的结果适用于动态APT模型和其他结构模型。我们还发现,如果从无条件分布中识别出因子负荷,则传统的无条件方差参数的ML估计将保持一致,但必须将其标准误差加以修正。我们针对公因子中的ARCH效应开发了一个简单的LM检验,并讨论了条件方差参数的两步一致估计。最后,我们进行详细的模拟练习。

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