Enhancing Statistical Inference in Psychological Research via Prospective and Retrospective Design Analysis

In the past two decades, psychological science has experienced an unprecedented replicability crisis, which has uncovered several issues. Among others, the use and misuse of statistical inference plays a key role in this crisis. Indeed, statistical inference is too often viewed as an isolated proced...

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Main Authors: Gianmarco Altoè, Giulia Bertoldo, Claudio Zandonella Callegher, Enrico Toffalini, Antonio Calcagnì, Livio Finos, Massimiliano Pastore
Format: Article
Language:English
Published: Frontiers Media S.A. 2020-01-01
Series:Frontiers in Psychology
Subjects:
Online Access:https://www.frontiersin.org/article/10.3389/fpsyg.2019.02893/full
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spelling doaj-32bc3362c4e94cf9a3e4dcc638502a4c2020-11-25T00:12:54ZengFrontiers Media S.A.Frontiers in Psychology1664-10782020-01-011010.3389/fpsyg.2019.02893499756Enhancing Statistical Inference in Psychological Research via Prospective and Retrospective Design AnalysisGianmarco Altoè0Giulia Bertoldo1Claudio Zandonella Callegher2Enrico Toffalini3Antonio Calcagnì4Livio Finos5Massimiliano Pastore6Department of Developmental Psychology and Socialisation, University of Padova, Padova, ItalyDepartment of Developmental Psychology and Socialisation, University of Padova, Padova, ItalyDepartment of Developmental Psychology and Socialisation, University of Padova, Padova, ItalyDepartment of General Psychology, University of Padova, Padova, ItalyDepartment of Developmental Psychology and Socialisation, University of Padova, Padova, ItalyDepartment of Developmental Psychology and Socialisation, University of Padova, Padova, ItalyDepartment of Developmental Psychology and Socialisation, University of Padova, Padova, ItalyIn the past two decades, psychological science has experienced an unprecedented replicability crisis, which has uncovered several issues. Among others, the use and misuse of statistical inference plays a key role in this crisis. Indeed, statistical inference is too often viewed as an isolated procedure limited to the analysis of data that have already been collected. Instead, statistical reasoning is necessary both at the planning stage and when interpreting the results of a research project. Based on these considerations, we build on and further develop an idea proposed by Gelman and Carlin (2014) termed “prospective and retrospective design analysis.” Rather than focusing only on the statistical significance of a result and on the classical control of type I and type II errors, a comprehensive design analysis involves reasoning about what can be considered a plausible effect size. Furthermore, it introduces two relevant inferential risks: the exaggeration ratio or Type M error (i.e., the predictable average overestimation of an effect that emerges as statistically significant) and the sign error or Type S error (i.e., the risk that a statistically significant effect is estimated in the wrong direction). Another important aspect of design analysis is that it can be usefully carried out both in the planning phase of a study and for the evaluation of studies that have already been conducted, thus increasing researchers' awareness during all phases of a research project. To illustrate the benefits of a design analysis to the widest possible audience, we use a familiar example in psychology where the researcher is interested in analyzing the differences between two independent groups considering Cohen's d as an effect size measure. We examine the case in which the plausible effect size is formalized as a single value, and we propose a method in which uncertainty concerning the magnitude of the effect is formalized via probability distributions. Through several examples and an application to a real case study, we show that, even though a design analysis requires significant effort, it has the potential to contribute to planning more robust and replicable studies. Finally, future developments in the Bayesian framework are discussed.https://www.frontiersin.org/article/10.3389/fpsyg.2019.02893/fullprospective and retrospective design analysisType M and Type S errorseffect sizepowerpsychological researchstatistical inference
collection DOAJ
language English
format Article
sources DOAJ
author Gianmarco Altoè
Giulia Bertoldo
Claudio Zandonella Callegher
Enrico Toffalini
Antonio Calcagnì
Livio Finos
Massimiliano Pastore
spellingShingle Gianmarco Altoè
Giulia Bertoldo
Claudio Zandonella Callegher
Enrico Toffalini
Antonio Calcagnì
Livio Finos
Massimiliano Pastore
Enhancing Statistical Inference in Psychological Research via Prospective and Retrospective Design Analysis
Frontiers in Psychology
prospective and retrospective design analysis
Type M and Type S errors
effect size
power
psychological research
statistical inference
author_facet Gianmarco Altoè
Giulia Bertoldo
Claudio Zandonella Callegher
Enrico Toffalini
Antonio Calcagnì
Livio Finos
Massimiliano Pastore
author_sort Gianmarco Altoè
title Enhancing Statistical Inference in Psychological Research via Prospective and Retrospective Design Analysis
title_short Enhancing Statistical Inference in Psychological Research via Prospective and Retrospective Design Analysis
title_full Enhancing Statistical Inference in Psychological Research via Prospective and Retrospective Design Analysis
title_fullStr Enhancing Statistical Inference in Psychological Research via Prospective and Retrospective Design Analysis
title_full_unstemmed Enhancing Statistical Inference in Psychological Research via Prospective and Retrospective Design Analysis
title_sort enhancing statistical inference in psychological research via prospective and retrospective design analysis
publisher Frontiers Media S.A.
series Frontiers in Psychology
issn 1664-1078
publishDate 2020-01-01
description In the past two decades, psychological science has experienced an unprecedented replicability crisis, which has uncovered several issues. Among others, the use and misuse of statistical inference plays a key role in this crisis. Indeed, statistical inference is too often viewed as an isolated procedure limited to the analysis of data that have already been collected. Instead, statistical reasoning is necessary both at the planning stage and when interpreting the results of a research project. Based on these considerations, we build on and further develop an idea proposed by Gelman and Carlin (2014) termed “prospective and retrospective design analysis.” Rather than focusing only on the statistical significance of a result and on the classical control of type I and type II errors, a comprehensive design analysis involves reasoning about what can be considered a plausible effect size. Furthermore, it introduces two relevant inferential risks: the exaggeration ratio or Type M error (i.e., the predictable average overestimation of an effect that emerges as statistically significant) and the sign error or Type S error (i.e., the risk that a statistically significant effect is estimated in the wrong direction). Another important aspect of design analysis is that it can be usefully carried out both in the planning phase of a study and for the evaluation of studies that have already been conducted, thus increasing researchers' awareness during all phases of a research project. To illustrate the benefits of a design analysis to the widest possible audience, we use a familiar example in psychology where the researcher is interested in analyzing the differences between two independent groups considering Cohen's d as an effect size measure. We examine the case in which the plausible effect size is formalized as a single value, and we propose a method in which uncertainty concerning the magnitude of the effect is formalized via probability distributions. Through several examples and an application to a real case study, we show that, even though a design analysis requires significant effort, it has the potential to contribute to planning more robust and replicable studies. Finally, future developments in the Bayesian framework are discussed.
topic prospective and retrospective design analysis
Type M and Type S errors
effect size
power
psychological research
statistical inference
url https://www.frontiersin.org/article/10.3389/fpsyg.2019.02893/full
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