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Journal ArticleDOI

Effect size estimates: Current use, calculations, and interpretation.

TLDR
A straightforward guide to understanding, selecting, calculating, and interpreting effect sizes for many types of data and to methods for calculating effect size confidence intervals and power analysis is provided.
Abstract
The Publication Manual of the American Psychological Association (American Psychological Association, 2001, American Psychological Association, 2010) calls for the reporting of effect sizes and their confidence intervals. Estimates of effect size are useful for determining the practical or theoretical importance of an effect, the relative contributions of factors, and the power of an analysis. We surveyed articles published in 2009 and 2010 in the Journal of Experimental Psychology: General, noting the statistical analyses reported and the associated reporting of effect size estimates. Effect sizes were reported for fewer than half of the analyses; no article reported a confidence interval for an effect size. The most often reported analysis was analysis of variance, and almost half of these reports were not accompanied by effect sizes. Partial η2 was the most commonly reported effect size estimate for analysis of variance. For t tests, 2/3 of the articles did not report an associated effect size estimate; Cohen's d was the most often reported. We provide a straightforward guide to understanding, selecting, calculating, and interpreting effect sizes for many types of data and to methods for calculating effect size confidence intervals and power analysis.

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Journal ArticleDOI

Using large, publicly available datasets to study adolescent development: Opportunities and challenges

TL;DR: The opportunities and challenges associated with large, longitudinal phenotypically rich data sets available for reuse, provide an overview of particularly valuable resources available to the field, and recommend best practices to improve the rigor and transparency of analyses conducted on large, secondary data sets.
Journal ArticleDOI

Reward shifts in forced-choice and free-choice autoshaping with rats.

TL;DR: The results of five experiments with rats suggest that autoshaping in rats may induce response invigoration in forced-choice situations, but response suppression in free- choice situations.
Journal ArticleDOI

Validation of the Participation Measure–3 Domains, 4 Dimensions (PM-3D4D)

TL;DR: Findings of this study support the construct validity of the PM-3D4D, providing evidence for using the PM's participation performance and helping practitioners identify intervention priorities to improve patients' participation outcomes.
Journal ArticleDOI

Habitual pelvic posture and time spent sitting: Measurement test–retest reliability for the LUMOback device and preliminary evidence for slouched posture in individuals with low back pain:

TL;DR: In this article, the LUMOback device was used to monitor the pelvic position during actual daily life, and it has been shown that wearable devices can provide the possiblity to monitor pelvic position.
Journal ArticleDOI

A single bout of resistance training improves state body image in male weight-trainers.

TL;DR: In this paper, a controlled crossover study, 42 experienced weight trainers received (a) a session of resistance training, (b) a sessions of aerobic exercise (cycling), and (c) asession of magazine reading, and after 24 hours their body image states were assessed before and immediately after each condition.
References
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Book

Statistical Power Analysis for the Behavioral Sciences

TL;DR: The concepts of power analysis are discussed in this paper, where Chi-square Tests for Goodness of Fit and Contingency Tables, t-Test for Means, and Sign Test are used.
Book

Using multivariate statistics

TL;DR: In this Section: 1. Multivariate Statistics: Why? and 2. A Guide to Statistical Techniques: Using the Book Research Questions and Associated Techniques.
Book

Nonparametric statistics for the behavioral sciences

Sidney Siegel
TL;DR: This is the revision of the classic text in the field, adding two new chapters and thoroughly updating all others as discussed by the authors, and the original structure is retained, and the book continues to serve as a combined text/reference.
Book

Applied multiple regression/correlation analysis for the behavioral sciences

TL;DR: In this article, the Mathematical Basis for Multiple Regression/Correlation and Identification of the Inverse Matrix Elements is presented. But it does not address the problem of missing data.
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