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Shrinkage of Variance for Minimum Distance Based Tests

机译:基于最小距离的测试的方差收缩

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This paper promotes information theoretic inference in the context of minimum distance estimation. Various score test statistics differ only through the embedded estimator of the variance of estimating functions. We resort to implied probabilities provided by the constrained maximization of generalized entropy to get a more accurate variance estimator under the null. We document, both by theoretical higher order expansions and by Monte-Carlo evidence, that our improved score tests have better finite-sample size properties. The competitiveness of our non-simulation based method with respect to bootstrap is confirmed in the example of inference on covariance structures previously studied by Horowitz (1998).
机译:本文在最小距离估计的背景下促进了信息理论推论。各种分数测试统计量仅通过嵌入的估算函数方差估算器有所不同。我们求助于广义熵的约束最大化所提供的隐含概率,以在零值以下获得更准确的方差估计量。我们通过理论上的高阶展开和蒙特卡洛证据证明,我们改进的分数测试具有更好的有限样本大小属性。 Horowitz(1998)先前对协方差结构进行推论的例子证实了我们基于非模拟的方法对自举的竞争力。

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