fixedNAP.onet_n: Fixed-design one-sample t-tests with NAP and a pre-fixed...

Description Usage Arguments Value Author(s) References Examples

View source: R/NAPfunctions.R

Description

In two-sided fixed design one-sample t-tests with normal moment prior assumed on the standardized effect size μ/σ under the alternative and a prefixed sample size, this function calculates the expected weights of evidence (that is, expected log(Bayes Factor)) of the test at a varied range of standardized effect sizes.

Usage

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fixedNAP.onet_n(es = c(0, 0.2, 0.3, 0.5), n.fixed = 20, 
                tau.NAP = 0.3/sqrt(2), 
                nReplicate = 50000, nCore)

Arguments

es

Numeric vector. Standardized effect sizes μ/σ where the expected weights of evidence is desired. Default: c(0, 0.2, 0.3, 0.5).

n.fixed

Positive integer. Prefixed sample size. Default: 20.

tau.NAP

Positive numeric. Parameter in the moment prior. Default: 0.3/√2. This places the prior modes of the standardized effect size μ/σ at 0.3 and -0.3.

nReplicate

Positve integer. Number of replicated studies based on which the expected weights of evidence is calculated. Default: 50,000.

nCore

Positive integer. Default: One less than the total number of available cores.

Value

A list with two components named summary and BF.

$summary is a data frame with columns effect.size containing the values in es and avg.logBF containing the expected weight of evidence values at those values.

$BF is a matrix of dimension length(es) by nReplicate. Each row contains the Bayes factor values at the corresponding standardized effec size in nReplicate replicated studies.

Author(s)

Sandipan Pramanik and Valen E. Johnson

References

Pramanik, S. and Johnson, V. (2022). Efficient Alternatives for Bayesian Hypothesis Tests in Psychology. Psychological Methods. Just accepted.

Johnson, V. and Rossell, R. (2010). On the use of non-local prior densities in Bayesian hypothesis tests. Journal of the Royal Statistical Society: Series B, 72:143-170. [Article]

Examples

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out = fixedNAP.onet_n(n.fixed = 20, es = c(0, 0.3), nCore = 1)

NAP documentation built on Jan. 6, 2022, 5:07 p.m.