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Nonparametric comparison of regression functions
Authors:Ramidha Srihera
Institution:
  • a Thammasat University, Rangsit Center, Department of Mathematics and Statistics, Faculty of Science and Technology, Pathum Thani 12121, Thailand
  • b Mathematical Institute, University of Giessen, Arndtstr. 2, D-35392 Giessen, Germany
  • Abstract:In this work, we provide a new methodology for comparing regression functions m1 and m2 from two samples. Since apart from smoothness no other (parametric) assumptions are required, our approach is based on a comparison of nonparametric estimators View the MathML source and View the MathML source of m1 and m2, respectively. The test statistics View the MathML source incorporate weighted differences of View the MathML source and View the MathML source computed at selected points. Since the design variables may come from different distributions, a crucial question is where to compare the two estimators. As our main results we obtain the limit distribution of View the MathML source (properly standardized) under the null hypothesis H0:m1=m2 and under local and global alternatives. We are also able to choose the weight function so as to maximize the power. Furthermore, the tests are asymptotically distribution free under H0 and both shift and scale invariant. Several such View the MathML source’s may then be combined to get Maximin tests when the dimension of the local alternative is finite. In a simulation study we found out that our tests achieve the nominal level and already have excellent power for small to moderate sample sizes.
    Keywords:60G10  62G08
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