Literature DB >> 33660213

Informal versus formal judgment of statistical models: The case of normality assumptions.

Anthony J Bishara1, Jiexiang Li2, Christian Conley3.   

Abstract

Researchers sometimes use informal judgment for statistical model diagnostics and assumption checking. Informal judgment might seem more desirable than formal judgment because of a paradox: Formal hypothesis tests of assumptions appear to become less useful as sample size increases. We suggest that this paradox can be resolved by evaluating both formal and informal statistical judgment via a simplified signal detection framework. In 4 studies, we used this approach to compare informal judgments of normality diagnostic graphs (histograms, Q-Q plots, and P-P plots) to the performance of several formal tests (Shapiro-Wilk test, Kolmogorov-Smirnov test, etc.). Participants judged whether or not graphs of sample data came from a normal population (Experiments 1-2) or whether or not from a population close enough to normal for a parametric test to be more powerful than a nonparametric one (Experiments 3-4). Across all experiments, participants' informal judgments showed lower discriminability than did formal hypothesis tests. This pattern occurred even after participants were given 400 training trials with feedback, a financial incentive, and ecologically valid distribution shapes. The discriminability advantage of formal normality tests led to slightly more powerful follow-up tests (parametric vs. nonparametric). Overall, the framework used here suggests that formal model diagnostics may be more desirable than informal ones.

Entities:  

Keywords:  Judgment and decision-making; Normal; Signal detection theory; Statistical inference

Year:  2021        PMID: 33660213     DOI: 10.3758/s13423-021-01879-z

Source DB:  PubMed          Journal:  Psychon Bull Rev        ISSN: 1069-9384


  24 in total

1.  Evaluating data from behavioral analysis: visual inspection or statistical models?

Authors:  G S. Fisch
Journal:  Behav Processes       Date:  2001-05-03       Impact factor: 1.777

2.  Visual inspection of data revisited: Do the eyes still have it?

Authors:  G S Fisch
Journal:  Behav Anal       Date:  1998

3.  Sample size and the detection of correlation--a signal detection account: comment on Kareev (2000) and Juslin and Olsson (2005).

Authors:  Richard B Anderson; Michael E Doherty; Neil D Berg; Jeff C Friedrich
Journal:  Psychol Rev       Date:  2005-01       Impact factor: 8.934

Review 4.  Variation in scatterplot displays.

Authors:  Michael E Doherty; Richard B Anderson
Journal:  Behav Res Methods       Date:  2009-02

Review 5.  Testing the significance of a correlation with nonnormal data: comparison of Pearson, Spearman, transformation, and resampling approaches.

Authors:  Anthony J Bishara; James B Hittner
Journal:  Psychol Methods       Date:  2012-05-07

6.  The new statistics: why and how.

Authors:  Geoff Cumming
Journal:  Psychol Sci       Date:  2013-11-12

7.  Univariate and multivariate skewness and kurtosis for measuring nonnormality: Prevalence, influence and estimation.

Authors:  Meghan K Cain; Zhiyong Zhang; Ke-Hai Yuan
Journal:  Behav Res Methods       Date:  2017-10

8.  jsPsych: a JavaScript library for creating behavioral experiments in a Web browser.

Authors:  Joshua R de Leeuw
Journal:  Behav Res Methods       Date:  2015-03

9.  The test of significance in psychological research.

Authors:  D Bakan
Journal:  Psychol Bull       Date:  1966-12       Impact factor: 17.737

10.  Confidence intervals permit, but do not guarantee, better inference than statistical significance testing.

Authors:  Melissa Coulson; Michelle Healey; Fiona Fidler; Geoff Cumming
Journal:  Front Psychol       Date:  2010-07-02
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