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      Power, precision, and sample size estimation in sport and exercise science research

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          Most cited references18

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          The ASA's Statement onp-Values: Context, Process, and Purpose

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            Bayesian estimation supersedes the t test.

            Bayesian estimation for 2 groups provides complete distributions of credible values for the effect size, group means and their difference, standard deviations and their difference, and the normality of the data. The method handles outliers. The decision rule can accept the null value (unlike traditional t tests) when certainty in the estimate is high (unlike Bayesian model comparison using Bayes factors). The method also yields precise estimates of statistical power for various research goals. The software and programs are free and run on Macintosh, Windows, and Linux platforms. PsycINFO Database Record (c) 2013 APA, all rights reserved.
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              Is Open Access

              How Many Participants Do We Have to Include in Properly Powered Experiments? A Tutorial of Power Analysis with Reference Tables

              Given that an effect size of d = .4 is a good first estimate of the smallest effect size of interest in psychological research, we already need over 50 participants for a simple comparison of two within-participants conditions if we want to run a study with 80% power. This is more than current practice. In addition, as soon as a between-groups variable or an interaction is involved, numbers of 100, 200, and even more participants are needed. As long as we do not accept these facts, we will keep on running underpowered studies with unclear results. Addressing the issue requires a change in the way research is evaluated by supervisors, examiners, reviewers, and editors. The present paper describes reference numbers needed for the designs most often used by psychologists, including single-variable between-groups and repeated-measures designs with two and three levels, two-factor designs involving two repeated-measures variables or one between-groups variable and one repeated-measures variable (split-plot design). The numbers are given for the traditional, frequentist analysis with p 10. These numbers provide researchers with a standard to determine (and justify) the sample size of an upcoming study. The article also describes how researchers can improve the power of their study by including multiple observations per condition per participant.
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                Author and article information

                Journal
                Journal of Sports Sciences
                Journal of Sports Sciences
                Informa UK Limited
                0264-0414
                1466-447X
                June 19 2020
                : 1-3
                Affiliations
                [1 ] Sports Performance
                [2 ] Physical Activity, Health and Exercise
                [3 ] Physiology and Nutrition
                [4 ] Social and Behavioural Sciences
                [5 ] Statistical Advisor
                Article
                10.1080/02640414.2020.1776002
                32558628
                ba65e3f9-e85b-4aea-9a41-0ce571352b2c
                © 2020
                History

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