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The Most Difference in Means: A Statistic for the Strength of Null and Near-Zero Results

Authors :
Corliss, Bruce A.
Brown, Taylor R.
Zhang, Tingting
Janes, Kevin A.
Shakeri, Heman
Bourne, Philip E.
Publication Year :
2022

Abstract

Statistical insignificance does not suggest the absence of effect, yet scientists must often use null results as evidence of negligible (near-zero) effect size to falsify scientific hypotheses. Doing so must assess a result's null strength, defined as the evidence for a negligible effect size. Such an assessment would differentiate strong null results that suggest a negligible effect size from weak null results that suggest a broad range of potential effect sizes. We propose the most difference in means ($\delta_M$) as a two-sample statistic that can both quantify null strength and perform a hypothesis test for negligible effect size. To facilitate consensus when interpreting results, our statistic allows scientists to conclude that a result has negligible effect size using different thresholds with no recalculation required. To assist with selecting a threshold, $\delta_M$ can also compare null strength between related results. Both $\delta_M$ and the relative form of $\delta_M$ outperform other candidate statistics in comparing null strength. We compile broadly related results and use the relative $\delta_M$ to compare null strength across different treatments, measurement methods, and experiment models. Reporting the relative $\delta_M$ may provide a technical solution to the file drawer problem by encouraging the publication of null and near-zero results.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2201.01239
Document Type :
Working Paper