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Generalized p-value

In statistics, a generalized p-value is an extended version of the classical p-value, which except in a limited number of applications, provides only approximate solutions.

Conventional statistical methods do not provide exact solutions to many statistical problems, such as those arising in mixed models and MANOVA, especially when the problem involves a number of nuisance parameters. As a result, practitioners often resort to approximate statistical methods or asymptotic statistical methods that are valid only when the sample size is large. With small samples, such methods often have poor performance.[1] Use of approximate and asymptotic methods may lead to misleading conclusions or may fail to detect truly significant results from experiments.

Tests based on generalized p-values are exact statistical methods in that they are based on exact probability statements. While conventional statistical methods do not provide exact solutions to such problems as testing variance components or ANOVA under unequal variances, exact tests for such problems can be obtained based on generalized p-values.[1][2]

In order to overcome the shortcomings of the classical p-values, Tsui and Weerahandi[2] extended the classical definition so that one can obtain exact solutions for such problems as the Behrens–Fisher problem and testing variance components. This is accomplished by allowing test variables to depend on observable random vectors as well as their observed values, as in the Bayesian treatment of the problem, but without having to treat constant parameters as random variables.

Example edit

To describe the idea of generalized p-values in a simple example, consider a situation of sampling from a normal population with the mean  , and the variance  . Let   and   be the sample mean and the sample variance. Inferences on all unknown parameters can be based on the distributional results

 

and

 

Now suppose we need to test the coefficient of variation,  . While the problem is not trivial with conventional p-values, the task can be easily accomplished based on the generalized test variable

 

where   is the observed value of   and   is the observed value of  . Note that the distribution of   and its observed value are both free of nuisance parameters. Therefore, a test of a hypothesis with a one-sided alternative such as   can be based on the generalized p-value  , a quantity that can be easily evaluated via Monte Carlo simulation or using the non-central t-distribution.

Notes edit

  1. ^ a b Weerahandi (1995)
  2. ^ a b Tsui & Weerahandi (1989)

References edit

  • Gamage J, Mathew T, and Weerahandi S. (2013). Generalized prediction intervals for BLUPs in mixed models, Journal of Multivariate Analysis}, 220, 226-233.
  • Hamada, M., and Weerahandi, S. (2000). Measurement System Assessment via Generalized Inference. Journal of Quality Technology, 32, 241-253.
  • Krishnamoorthy, K. and Tian, L. (2007), “Inferences on the ratio of means of two inverse Gaussian distributions: the generalized variable approach”, Journal of Statistical Planning and Inferences, Volume 138, Issue 7, 1, Pages 2082-2089.
  • Li, X., Wang J., Liang H. (2011). Comparison of several means: a fiducial based approach. Computational Statistics and Data Analysis, 55, 1993-2002.
  • Mathew, T. and Webb, D. W. (2005). Generalized p-values and confidence intervals for variance components: Applications to Army test and evaluation, Technometrics, 47, 312-322.
  • Wu, J. and Hamada, M. S. (2009) Experiments: Planning, Analysis, and Optimization. Wiley, Hoboken, New Jersey.
  • Zhou, L., and Mathew, T. (1994). Some Tests for Variance Components Using Generalized p-Values, Technometrics, 36, 394-421.
  • Tian, L. and Wu, Jianrong (2006) “Inferences on the Common Mean of Several Log-normal Populations: The Generalized Variable Approach”, Biometrical Journal.
  • Tsui, K. and Weerahandi, S. (1989): "Generalized p-values in significance testing of hypotheses in the presence of nuisance parameters". Journal of the American Statistical Association, 84, 602–607
  • Weerahandi, S. (1995) Exact Statistical Methods for Data Analysis Springer-Verlag, New York. ISBN 978-0-387-40621-3

External links edit

  • XPro, Free software package for exact parametric statistics

generalized, value, this, article, includes, list, general, references, lacks, sufficient, corresponding, inline, citations, please, help, improve, this, article, introducing, more, precise, citations, january, 2017, learn, when, remove, this, template, messag. This article includes a list of general references but it lacks sufficient corresponding inline citations Please help to improve this article by introducing more precise citations January 2017 Learn how and when to remove this template message In statistics a generalized p value is an extended version of the classical p value which except in a limited number of applications provides only approximate solutions Conventional statistical methods do not provide exact solutions to many statistical problems such as those arising in mixed models and MANOVA especially when the problem involves a number of nuisance parameters As a result practitioners often resort to approximate statistical methods or asymptotic statistical methods that are valid only when the sample size is large With small samples such methods often have poor performance 1 Use of approximate and asymptotic methods may lead to misleading conclusions or may fail to detect truly significant results from experiments Tests based on generalized p values are exact statistical methods in that they are based on exact probability statements While conventional statistical methods do not provide exact solutions to such problems as testing variance components or ANOVA under unequal variances exact tests for such problems can be obtained based on generalized p values 1 2 In order to overcome the shortcomings of the classical p values Tsui and Weerahandi 2 extended the classical definition so that one can obtain exact solutions for such problems as the Behrens Fisher problem and testing variance components This is accomplished by allowing test variables to depend on observable random vectors as well as their observed values as in the Bayesian treatment of the problem but without having to treat constant parameters as random variables Contents 1 Example 2 Notes 3 References 4 External linksExample editTo describe the idea of generalized p values in a simple example consider a situation of sampling from a normal population with the mean m displaystyle mu nbsp and the variance s2 displaystyle sigma 2 nbsp Let X displaystyle overline X nbsp and S2 displaystyle S 2 nbsp be the sample mean and the sample variance Inferences on all unknown parameters can be based on the distributional results Z n X m s N 0 1 displaystyle Z sqrt n overline X mu sigma sim N 0 1 nbsp and U nS2 s2 xn 12 displaystyle U nS 2 sigma 2 sim chi n 1 2 nbsp Now suppose we need to test the coefficient of variation r m s displaystyle rho mu sigma nbsp While the problem is not trivial with conventional p values the task can be easily accomplished based on the generalized test variable R x Sss X ms x sUn Zn displaystyle R frac overline x S s sigma frac overline X mu sigma frac overline x s frac sqrt U sqrt n frac Z sqrt n nbsp where x displaystyle overline x nbsp is the observed value of X displaystyle overline X nbsp and s displaystyle s nbsp is the observed value of S displaystyle S nbsp Note that the distribution of R displaystyle R nbsp and its observed value are both free of nuisance parameters Therefore a test of a hypothesis with a one sided alternative such as HA r lt r0 displaystyle H A rho lt rho 0 nbsp can be based on the generalized p value p Pr R r0 displaystyle p Pr R geq rho 0 nbsp a quantity that can be easily evaluated via Monte Carlo simulation or using the non central t distribution Notes edit a b Weerahandi 1995 a b Tsui amp Weerahandi 1989 References editGamage J Mathew T and Weerahandi S 2013 Generalized prediction intervals for BLUPs in mixed models Journal of Multivariate Analysis 220 226 233 Hamada M and Weerahandi S 2000 Measurement System Assessment via Generalized Inference Journal of Quality Technology 32 241 253 Krishnamoorthy K and Tian L 2007 Inferences on the ratio of means of two inverse Gaussian distributions the generalized variable approach Journal of Statistical Planning and Inferences Volume 138 Issue 7 1 Pages 2082 2089 Li X Wang J Liang H 2011 Comparison of several means a fiducial based approach Computational Statistics and Data Analysis 55 1993 2002 Mathew T and Webb D W 2005 Generalized p values and confidence intervals for variance components Applications to Army test and evaluation Technometrics 47 312 322 Wu J and Hamada M S 2009 Experiments Planning Analysis and Optimization Wiley Hoboken New Jersey Zhou L and Mathew T 1994 Some Tests for Variance Components Using Generalized p Values Technometrics 36 394 421 Tian L and Wu Jianrong 2006 Inferences on the Common Mean of Several Log normal Populations The Generalized Variable Approach Biometrical Journal Tsui K and Weerahandi S 1989 Generalized p values in significance testing of hypotheses in the presence of nuisance parameters Journal of the American Statistical Association 84 602 607 Weerahandi S 1995 Exact Statistical Methods for Data Analysis Springer Verlag New York ISBN 978 0 387 40621 3External links editXPro Free software package for exact parametric statistics Retrieved from https en wikipedia org w index php title Generalized p value amp oldid 1012658483, wikipedia, wiki, book, books, library,

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