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Approximation of power in multivariate analysis

机译:多元分析中的幂近似

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摘要

We consider the calculation of power functions in classical multivariate analysis. In this context, power can be expressed in terms of tail probabilities of certain noncentral distributions. The necessary noncentral distribution theory was developed between the 1940s and 1970s by a number of authors. However, tractable methods for calculating the relevant probabilities have been lacking. In this paper we present simple yet extremely accurate saddlepoint approximations to power functions associated with the following classical test statistics: the likelihood ratio statistic for testing the general linear hypothesis in MANOVA; the likelihood ratio statistic for testing block independence; and Bartlett's modified likelihood ratio statistic for testing equality of covariance matrices.
机译:我们在经典多元分析中考虑幂函数的计算。在这种情况下,可以用某些非中心分布的尾部概率来表示功效。在1940到1970年代之间,许多作者提出了必要的非中心分布理论。但是,缺乏用于计算相关概率的易处理的方法。在本文中,我们提出了与以下经典检验统计量相关的幂函数的简单但极其精确的鞍点近似值:用于检验MANOVA中一般线性假设的似然比统计量;测试块独立性的似然比统计; Bartlett的修正似然比统计量用于检验协方差矩阵的相等性。

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