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      Optimal designs for comparing regression models with correlated observations

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          Abstract

          We consider the problem of efficient statistical inference for comparing two regression curves estimated from two samples of dependent measurements. Based on a representation of the best pair of linear unbiased estimators in continuous time models as a stochastic integral, an efficient pair of linear unbiased estimators with corresponding optimal designs for finite sample size is constructed. This pair minimises the width of the confidence band for the difference between the estimated curves. We thus extend results readily available in the literature to the case of correlated observations and provide an easily implementable and efficient solution. The advantages of using such pairs of estimators with corresponding optimal designs for the comparison of regression models are illustrated via numerical examples.

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          Author and article information

          Journal
          2016-01-25
          2016-01-28
          Article
          1601.06722
          d80a5370-abb2-4457-aa19-23372e20d6fe

          http://arxiv.org/licenses/nonexclusive-distrib/1.0/

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          Keywords and Phrases: linear regression, correlated observations, comparing regression curves, confidence band, optimal design AMS Subject classification: 62K05
          stat.ME

          Methodology
          Methodology

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