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Goodness of fit tests via exponential series density estimation

机译:通过指数级密度估计进行拟合检验

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摘要

The properties of a new nonparametric goodness of fit test are explored. It is based on a likelihood ratio test, applied via a consistent series density estimator in the exponential family. The focus is on its computational and numerical properties. Specifically it is found that the choice of approximating basis is not crucial and that the choice of model dimension, through data-driven selection criteria, yields a feasible, parsimonious procedure. Numerical experiments show that the new tests have significantly more power than established tests, whether based upon the empirical distribution function, or alternate density estimators.
机译:探索了新的非参数拟合优度检验的性质。它基于似然比检验,并通过指数族中的一致序列密度估计器进行应用。重点在于其计算和数值属性。具体而言,发现近似基数的选择不是至关重要的,并且通过数据驱动的选择标准来选择模型维可以产生可行的,简化的过程。数值实验表明,无论是基于经验分布函数还是基于替代的密度估计器,新的测试都比已建立的测试具有更大的功效。

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