| Literature DB >> 33194448 |
Aaron Caldwell1,2, Andrew D Vigotsky3.
Abstract
Recent discussions in the sport and exercise science community have focused on the appropriate use and reporting of effect sizes. Sport and exercise scientists often analyze repeated-measures data, from which mean differences are reported. To aid the interpretation of these data, standardized mean differences (SMD) are commonly reported as a description of effect size. In this manuscript, we hope to alleviate some confusion. First, we provide a philosophical framework for conceptualizing SMDs; that is, by dichotomizing them into two groups: magnitude-based and signal-to-noise SMDs. Second, we describe the statistical properties of SMDs and their implications. Finally, we provide high-level recommendations for how sport and exercise scientists can thoughtfully report raw effect sizes, SMDs, or other effect sizes for their own studies. This conceptual framework provides sport and exercise scientists with the background necessary to make and justify their choice of an SMD. ©2020 Caldwell and Vigotsky.Entities:
Keywords: Appiled statistics; Exercise science; Sport science; Standardized effect size; Standardized mean difference
Year: 2020 PMID: 33194448 PMCID: PMC7646309 DOI: 10.7717/peerj.10314
Source DB: PubMed Journal: PeerJ ISSN: 2167-8359 Impact factor: 2.984
Types of Standardized Mean Differences for pre-post designs.
| Magnitude-based | Glass’s Δpre, Cohen’s |
| Signal-to-noise | Cohen’s |
Figure 1Standardized mean differences for a range of pre-post correlations and pre-intervention standard deviations. Standardized mean differences (SMD) were calculated for a pre-post design study with 20 participants to depict the different properties of the different SMDs. We calculated SMDs for a range of pre-post correlations (r) and pre-intervention standard deviations (σpre), each with a mean change score of 1. Magnitude-based SMDs have similar estimates across the range of pre-post correlations and largely only vary as a function of σpre, whereas signal-to-noise SMDs are a function of both σpre and r. Note, d blows up as r → 1, and all SMDs blow up as σpre → 0. The standard error of each estimator increases as σpre → 0. Importantly, Δpre has lower or similar standard errors as r → 1, whereas d has greater standard errors as r → 1. Additional simulations, including those of other SMDs, can be found at 10.17605/OSF.IO/FC5XW.