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On asymptotic size distortions in the random coefficients logit model

机译:关于随机系数Logit模型中的渐近大小扭曲

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We show that, in the random coefficients logit model, standard inference procedures can suffer from asymptotic size distortions. The problem arises due to boundary issues and is aggravated by the standard parameterization of the model, in terms of standard deviations. For example, in case of a single random coefficient, the asymptotic size of the nominal 95% confidence interval obtained by inverting the two-sided t-test for the standard deviation equals 83.65%. In seeming contradiction, we also show that standard error estimates for the estimator of the standard deviation can be unreasonably large. This problem is alleviated if the model is reparameterized in terms of variances. Furthermore, a numerical evaluation of a conjectured lower bound suggests that the asymptotic size of the nominal 95% confidence interval obtained by inverting the two-sided t-test for variances (means) is within 0.5 percentage points of the nominal level as long as there are no more than five (four) random coefficients and as long as an optimal weighting matrix is employed. (C) 2019 Elsevier B.V. All rights reserved.
机译:我们表明,在随机系数Logit模型中,标准推理程序可能遭受渐近尺寸失真。在标准偏差方面,由于边界问题而产生的问题是由于边界问题,并且由模型的标准参数化恶化。例如,在单个随机系数的情况下,通过反转标准偏差的双面T检验等于83.65%而获得的标称95%置信区间的渐近尺寸等于83.65%。在看似矛盾中,我们还表明标准差的估计的标准误差估计可能是不合理的大。如果模型在差异方面进行了重新处理,则会减轻此问题。此外,猜测下界的数值评估表明,通过将双面T检验逆转到差异(手段)的双面T检验获得的标称95%置信区间的渐近尺寸在标称水平的0.5个百分点范围内不超过五(四个)随机系数,只要采用最佳加权矩阵。 (c)2019年Elsevier B.V.保留所有权利。

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