Statistical Significance Revisited
Statistical significance measures the reliability of a result obtained from a random experiment. We investigate the number of repetitions needed for a statistical result to have a certain significance. In the first step, we consider binomially distributed variables in the example of medication testi...
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doaj-b74cd61421634a1b9f411b16212742692021-04-25T23:01:20ZengMDPI AGMathematics2227-73902021-04-01995895810.3390/math9090958Statistical Significance RevisitedMaike Tormählen0Galiya Klinkova1Michael Grabinski2Department of Information Management, Neu-Ulm University, Wileystr. 1, 89231 Neu-Ulm, GermanyDepartment of Business and Economics, Neu-Ulm University, Wileystr. 1, 89231 Neu-Ulm, GermanyDepartment of Business and Economics, Neu-Ulm University, Wileystr. 1, 89231 Neu-Ulm, GermanyStatistical significance measures the reliability of a result obtained from a random experiment. We investigate the number of repetitions needed for a statistical result to have a certain significance. In the first step, we consider binomially distributed variables in the example of medication testing with fixed placebo efficacy, asking how many experiments are needed in order to achieve a significance of 95%. In the next step, we take the probability distribution of the placebo efficacy into account, which to the best of our knowledge has not been done so far. Depending on the specifics, we show that in order to obtain identical significance, it may be necessary to perform twice as many experiments than in a setting where the placebo distribution is neglected. We proceed by considering more general probability distributions and close with comments on some erroneous assumptions on probability distributions which lead, for instance, to a trivial explanation of the fat tail.https://www.mdpi.com/2227-7390/9/9/958statistical significanceconfidencemedication testscentral limit theoremfat tail |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Maike Tormählen Galiya Klinkova Michael Grabinski |
spellingShingle |
Maike Tormählen Galiya Klinkova Michael Grabinski Statistical Significance Revisited Mathematics statistical significance confidence medication tests central limit theorem fat tail |
author_facet |
Maike Tormählen Galiya Klinkova Michael Grabinski |
author_sort |
Maike Tormählen |
title |
Statistical Significance Revisited |
title_short |
Statistical Significance Revisited |
title_full |
Statistical Significance Revisited |
title_fullStr |
Statistical Significance Revisited |
title_full_unstemmed |
Statistical Significance Revisited |
title_sort |
statistical significance revisited |
publisher |
MDPI AG |
series |
Mathematics |
issn |
2227-7390 |
publishDate |
2021-04-01 |
description |
Statistical significance measures the reliability of a result obtained from a random experiment. We investigate the number of repetitions needed for a statistical result to have a certain significance. In the first step, we consider binomially distributed variables in the example of medication testing with fixed placebo efficacy, asking how many experiments are needed in order to achieve a significance of 95%. In the next step, we take the probability distribution of the placebo efficacy into account, which to the best of our knowledge has not been done so far. Depending on the specifics, we show that in order to obtain identical significance, it may be necessary to perform twice as many experiments than in a setting where the placebo distribution is neglected. We proceed by considering more general probability distributions and close with comments on some erroneous assumptions on probability distributions which lead, for instance, to a trivial explanation of the fat tail. |
topic |
statistical significance confidence medication tests central limit theorem fat tail |
url |
https://www.mdpi.com/2227-7390/9/9/958 |
work_keys_str_mv |
AT maiketormahlen statisticalsignificancerevisited AT galiyaklinkova statisticalsignificancerevisited AT michaelgrabinski statisticalsignificancerevisited |
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1721509276785049600 |