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Transformations for Testing the Fit of the Inverse-Gaussian Distribution

机译:用于测试逆高斯分布的拟合的转变

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Use of the MVUE for the inverse-Gaussian distribution has been recently proposed by Nguyen and Dinh [Nguyen, T. T., Dinh, K. T. (2003). Exact EDF goodnes-of-fit tests for inverse Gaussian distributions. Comm. Statist. (Simulation and Computation) 32(2):505-516] where a sequential application based on Rosenblatt's transformation [Rosenblatt, M. (1952). Remarks on a multivariate transformation. Ann. Math. Statist. 23:470-472] led the authors to solve the composite goodness-of-fit problem by solving the surrogate simple goodness-of-fit problem, of testing uniformity of the independent transformed variables. In this note, we observe first that the proposal is not new since it was proposed in a rather general setting in O'Reilly and Quesenberry [O'Reilly, F., Quesenberry, C. P. (1973). The conditional probability integral transformation and applications to obtain composite chi-square goodness-of-fit tests. Ann. Statist. I:74-83]. It is shown on the other hand that the results in the paper of Nguyen and Dinh (2003) are incorrect in their Sec. 4, specially the Monte Carlo figures reported. Power simulations are provided here comparing these corrected results with two previously reported goodness-of-fit tests for the inverse-Gaussian; the modified Kolmogorov-Smirnov test in Edgeman et al. [Edgeman, R. L., Scott, R. C., Pavur, R. J. (1988). A modified Kolmogorov-Smirnov test for inverse Gaussian distribution with unknown parameters. Comm. Statist. 17(B): 1203-1212] and the A~2 based method in O'Reilly and Rueda [O'Reilly, F., Rueda, R. (1992). Goodness of fit for the inverse Gaussian distribution. T Can. J. Statist. 20(4):387-397]. The results show clearly that there is a large loss of power in the method explored in Nguyen and Dinh (2003) due to an implicit exogenous randomization.
机译:Nguyen和Dinh [Nguyen,T.T.,Dinh,K.T.(2003),最近提出了使用MVUE进行反向高斯分布的逆高斯分布。精确的EDF良好的逆高斯分布式测试。 Comm。统计数据。 (仿真和计算)32(2):505-516]其中基于Rosenblatt的转换的顺序应用[Rosenblatt,M。(1952)。关于多变量转型的备注。安。数学。统计数据。 23:470-472]通过解决独立变化的变量的均匀性来解决代理简单的拟合问题来解决作者以解决复合的拟合问题。在本说明中,我们首先观察到该提案并不是新的,因为它是在O'Reilly和Quesenberry的一个相当普通的环境中提出的[O'Reilly,F.,Quesenberry,C. P.(1973)。条件概率整体变换和应用,以获得复合奇方的拟合性测试。安。统计数据。我:74-83]。另一方面显示了Nguyen和Dinh(2003)纸张中的结果在其秒内不正确。 4,特别是蒙特卡罗报道。这里提供功率模拟,将这些校正的结果与两个先前报告的逆高斯的恰当的良好测试进行比较; Edgeman等人的改进的Kolmogorov-Smirnov测试。 [Edgeman,R. L.,Scott,R.C.,Pavur,R. J.(1988)。具有未知参数的逆高斯分布的修改后的Kolmogorov-Smirnov测试。 Comm。统计数据。 17(b):1203-1212]和O'Reilly和Rueda的A〜2方法[o'reilly,F.,Rueda,R.(1992)。适合逆高斯分布的善良。可以。 J.统计数据。 20(4):387-397]。结果表明,由于隐含的外源随机化,在Nguyen和Dinh(2003)中的方法中存在大量的电力。

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