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M-Statistics : Optimal Statistical Inference for a Small Sample



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Autore: Demidenko Eugene Visualizza persona
Titolo: M-Statistics : Optimal Statistical Inference for a Small Sample Visualizza cluster
Pubblicazione: Newark : , : John Wiley & Sons, Incorporated, , 2023
©2023
Edizione: 1st ed.
Descrizione fisica: 1 online resource (243 pages)
Disciplina: 519.5/4
Soggetto topico: Mathematical statistics
Nota di contenuto: Cover -- Title Page -- Copyright -- Contents -- Preface -- Chapter 1 Limitations of classic statistics and motivation -- 1.1 Limitations of classic statistics -- 1.1.1 Mean -- 1.1.2 Unbiasedness -- 1.1.3 Limitations of equal‐tail statistical inference -- 1.2 The rationale for a new statistical theory -- 1.3 Motivating example: normal variance -- 1.3.1 Confidence interval for the normal variance -- 1.3.2 Hypothesis testing for the variance -- 1.3.3 MC and MO estimators of the variance -- 1.3.4 Sample size determination for variance -- 1.4 Neyman‐Pearson lemma and its extensions -- 1.4.1 Introduction -- 1.4.2 Two lemmas -- References -- Chapter 2 Maximum concentration statistics -- 2.1 Assumptions -- 2.2 Short confidence interval and MC estimator -- 2.3 Density level test -- 2.4 Efficiency and the sufficient statistic -- 2.5 Parameter is positive or belongs to a finite interval -- 2.5.1 Parameter is positive -- 2.5.2 Parameter belongs to a finite interval -- References -- Chapter 3 Mode statistics -- 3.1 Unbiased test -- 3.2 Unbiased CI and MO estimator -- 3.3 Cumulative information and the sufficient statistic -- References -- Chapter 4 P‐value and duality -- 4.1 P‐value for the double‐sided hypothesis -- 4.1.1 General definition -- 4.1.2 P‐value for normal variance -- 4.2 The overall powerful test -- 4.3 Duality: converting the CI into a hypothesis test -- 4.4 Bypassing assumptions -- 4.5 Overview -- References -- Chapter 5 M‐statistics for major statistical parameters -- 5.1 Exact statistical inference for standard deviation -- 5.1.1 MC‐statistics -- 5.1.2 MC‐statistics on the log scale -- 5.1.3 MO‐statistics -- 5.1.4 Computation of the p‐value -- 5.2 Pareto distribution -- 5.2.1 Confidence intervals -- 5.2.2 Hypothesis testing -- 5.3 Coefficient of variation for lognormal distribution -- 5.4 Statistical testing for two variances.
5.4.1 Computation of the p‐value -- 5.4.2 Optimal sample size -- 5.5 Inference for two‐sample exponential distribution -- 5.5.1 Unbiased statistical test -- 5.5.2 Confidence intervals -- 5.5.3 The MC estimator of ν -- 5.6 Effect size and coefficient of variation -- 5.6.1 Effect size -- 5.6.2 Coefficient of variation -- 5.6.3 Double‐sided hypothesis tests -- 5.6.4 Multivariate ES -- 5.7 Binomial probability -- 5.7.1 The MCL estimator -- 5.7.2 The MCL2 estimator -- 5.7.3 The MCL2 estimator of pn -- 5.7.4 Confidence interval on the double‐log scale -- 5.7.5 Equal‐tail and unbiased tests -- 5.8 Poisson rate -- 5.8.1 Two‐sided short CI on the log scale -- 5.8.2 Two‐sided tests and p‐value -- 5.8.3 The MCL estimator of the rate parameter -- 5.9 Meta‐analysis model -- 5.9.1 CI and MCL estimator -- 5.10 M‐statistics for the correlation coefficient -- 5.10.1 MC and MO estimators -- 5.10.2 Equal‐tail and unbiased tests -- 5.10.3 Power function and p‐value -- 5.10.4 Confidence intervals -- 5.11 The square multiple correlation coefficient -- 5.11.1 Unbiased statistical test -- 5.11.2 Computation of p‐value -- 5.11.3 Confidence intervals -- 5.11.4 The two‐sided CI on the log scale -- 5.11.5 The MCL estimator -- 5.12 Coefficient of determination for linear model -- 5.12.1 CoD and multiple correlation coefficient -- 5.12.2 Unbiased test -- 5.12.3 The MCL estimator for CoD -- References -- Chapter 6 Multidimensional parameter -- 6.1 Density level test -- 6.2 Unbiased test -- 6.3 Confidence region dual to the DL test -- 6.4 Unbiased confidence region -- 6.5 Simultaneous inference for normal mean and standard deviation -- 6.5.1 Statistical test -- 6.5.2 Confidence region -- 6.6 Exact confidence inference for parameters of the beta distribution -- 6.6.1 Statistical tests -- 6.6.2 Confidence regions -- 6.7 Two‐sample binomial probability -- 6.7.1 Hypothesis testing.
6.7.2 Confidence region -- 6.8 Exact and profile statistical inference for nonlinear regression -- 6.8.1 Statistical inference for the whole parameter -- 6.8.2 Statistical inference for an individual parameter of interest via profiling -- References -- Index -- EULA.
Sommario/riassunto: "M-statistics: A New Statistical Perspective introduces a new approach for statistical interference, redesigning the fundamentals of statistics and improving on the classical methods we already use. The author discusses the development of new criteria for efficient estimation and delves into how two methods for statistical intereference are combined under one umbrella to create 'M statistics.' This book develops novel confidence intervals and statistical tests for statistical parameters including effect size, binomial probability, and Poisson rate, ensuring unbiased tests are developed alongside this. Suitable for professionals and students alike, this theoretical book explains how new approaches work for statistical applications and is accompanied with a GitHub repository hosting the R code for every new methodology presented."--
Titolo autorizzato: M-Statistics  Visualizza cluster
ISBN: 1-119-89182-5
1-119-89180-9
1-119-89181-7
Formato: Materiale a stampa
Livello bibliografico Monografia
Lingua di pubblicazione: Inglese
Record Nr.: 9910830302503321
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