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ReplicationSuccess (version 1.3.3)

effectSizeSignificance: Computes the minimum relative effect size to achieve significance of the replication study

Description

The minimum relative effect size (replication to original) to achieve significance of the replication study is computed based on the result of the original study and the corresponding variance ratio.

Usage

effectSizeSignificance(
  zo,
  c = 1,
  level = 0.025,
  alternative = c("one.sided", "two.sided")
)

Value

The minimum relative effect size to achieve significance in the replication study.

Arguments

zo

Numeric vector of z-values from original studies.

c

Numeric vector of variance ratios of the original and replication effect estimates. This is usually the ratio of the sample size of the replication study to the sample size of the original study.

level

Significance level. Default is 0.025.

alternative

Specifies if the significance level is "one.sided" (default) or "two.sided". If the significance level is one-sided, then effect size calculations are based on a one-sided assessment of significance in the direction of the original effect estimate.

Author

Charlotte Micheloud, Samuel Pawel, Florian Gerber

Details

effectSizeSignificance is the vectorized version of the internal function .effectSizeSignificance_. Vectorize is used to vectorize the function.

References

Held, L., Micheloud, C., Pawel, S. (2022). The assessment of replication success based on relative effect size. The Annals of Applied Statistics. 16:706-720. tools:::Rd_expr_doi("10.1214/21-AOAS1502")

See Also

effectSizeReplicationSuccess

Examples

Run this code
po <- c(0.001, 0.002, 0.01, 0.02, 0.025)
zo <- p2z(po, alternative = "one.sided")

effectSizeSignificance(zo = zo, c = 1, level = 0.025,
                       alternative = "one.sided")

effectSizeSignificance(zo = zo, c = 1, level = 0.05,
                       alternative = "two.sided")

effectSizeSignificance(zo = zo, c = 50, level = 0.025,
                       alternative = "one.sided")

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