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首页> 外文期刊>Journal of Econometrics >Extended Neyman smooth goodness-of-fit tests, applied to competing heavy-tailed distributions
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Extended Neyman smooth goodness-of-fit tests, applied to competing heavy-tailed distributions

机译:扩展的Neyman光滑拟合优度测试,适用于竞争性的重尾分布

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摘要

A simplified version of the Neyman (1937) "Smooth" goodness-of-fit test is extended to account for the presence of estimated model parameters, thereby removing overfitting bias. Using a Lagrange Multiplier approach rather than the Likelihood Ratio statistic proposed by Neyman greatly simplifies the calculations. Polynomials, splines, and the step function of Pearson's test are compared as alternative perturbations to the theoretical uniform distribution. The extended tests have negligible size distortion and more power than standard tests. The tests are applied to competing symmetric leptokurtic distributions with US stock return data. These are generally rejected, primarily because of the presence of skewness
机译:Neyman(1937)的“平滑”拟合优度检验的简化版本被扩展为考虑到估计的模型参数的存在,从而消除了过拟合偏差。使用拉格朗日乘数法而不是内曼提出的似然比统计量极大地简化了计算。将多项式,样条曲线和Pearson检验的阶跃函数作为理论平均分布的替代扰动进行比较。与标准测试相比,扩展测试的尺寸失真可以忽略不计,并且功率更高。该测试适用于具有美国股票收益数据的竞争性对称七聚体分布。这些通常被拒绝,主要是因为存在偏斜

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