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Optimal sufficient dimension reduction for the conditional mean in multivariate regression

机译:多元回归中条件均值的最佳充分降维

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The aim of this article is to develop optimal sufficient dimension reduction methodology for the conditional mean in multivariate regression. The context is roughly the same as that of a related method by Cook & Setodji (2003), but the new method has several advantages. It is asymptotically optimal in the sense described herein and its test statistic for dimension always has a chi-squared distribution asymptotically under the null hypothesis. Additionally, the optimal method allows tests of predictor effects. A comparison of the two methods is provided.
机译:本文的目的是为多元回归中的条件均值开发最佳的充分降维方法。上下文与Cook&Setodji(2003)的相关方法大致相同,但是新方法具有多个优点。在本文所述的意义上,它是渐近最优的,并且在零假设下,其维数检验统计量总是渐近地具有卡方分布。此外,最佳方法还可以测试预测变量的效果。提供了两种方法的比较。

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