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Dilation bootstrap

机译:膨胀引导

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摘要

We propose a methodology for combining several sources of model and data incompleteness and partial identification, which we call Composition Theorem. We apply this methodology to the construction of confidence regions with partially identified models of general form. The region is obtained by inverting a test of internal consistency of the econometric structure. We develop a dilation bootstrap methodology to deal with sampling uncertainty without reference to the hypothesized economic structure. It requires bootstrapping the quantile process for univariate data and a novel generalization of the latter to higher dimensions. Once the dilation is chosen to control the confidence level, the unknown true distribution of the observed data can be replaced by the known empirical distribution and confidence regions can then be obtained as in Galichon and Henry (2011) and Beresteanu et al. (2011). (C) 2013 Elsevier B.V. All rights reserved.
机译:我们提出了一种将模型和数据不完整以及部分识别的多种来源相结合的方法,我们称其为定理。我们将此方法应用于具有部分识别的一般形式模型的置信区域的构建。通过倒转计量经济结构内部一致性的测试来获得该区域。我们开发了一种膨胀自举方法来处理采样不确定性,而无需参考假设的经济结构。对于单变量数据,它需要引导分位数过程,并将其新颖地推广到更高维度。一旦选择了扩张来控制置信水平,就可以用已知的经验分布代替观测数据的未知真实分布,然后可以像Galichon和Henry(2011)以及Beresteanu等人那样获得置信区域。 (2011)。 (C)2013 Elsevier B.V.保留所有权利。

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