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Implementation of a goodness-of-fit test through Khmaladze martingale transformation
被引:0
|作者:
Jiwoong Kim
机构:
[1] Ajou University Medical Center,Clinical Trial Center
来源:
关键词:
Asymptotically-distribution-free;
Integration-in-advance strategy;
Location-scale family;
Normality test;
D O I:
暂无
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学科分类号:
摘要:
Khmaladze martingale transformation provides an asymptotically-distribution-free method for a goodness-of-fit test. With its usage not being restricted to testing for normality, it can also be selected to test for a location-scale family of distributions such as logistic and Cauchy distributions. Despite its merits, the Khmaladze martingale transformation, however, could not have enjoyed deserved celebrity since it is computationally expensive; it entails the complex and time-consuming computations, including optimization, integration of a fractional function, matrix inversion, etc. To overcome these computational challenges, this paper proposes a fast algorithm which provides a solution to the Khmaladze martingale transformation method. To that end, the proposed algorithm is equipped with a novel strategy, named integration-in-advance, which rigorously exploits the structure of the Khmaladze martingale transformation.
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页码:1993 / 2017
页数:24
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