Meta-analysis | Statistical hypothesis testing | Effect size

Effect size

In statistics, an effect size is a value measuring the strength of the relationship between two variables in a population, or a sample-based estimate of that quantity. It can refer to the value of a statistic calculated from a sample of data, the value of a parameter for a hypothetical population, or to the equation that operationalizes how statistics or parameters lead to the effect size value. Examples of effect sizes include the correlation between two variables, the regression coefficient in a regression, the mean difference, or the risk of a particular event (such as a heart attack) happening. Effect sizes complement statistical hypothesis testing, and play an important role in power analyses, sample size planning, and in meta-analyses. The cluster of data-analysis methods concerning effect sizes is referred to as estimation statistics. Effect size is an essential component when evaluating the strength of a statistical claim, and it is the first item (magnitude) in the MAGIC criteria. The standard deviation of the effect size is of critical importance, since it indicates how much uncertainty is included in the measurement. A standard deviation that is too large will make the measurement nearly meaningless. In meta-analysis, where the purpose is to combine multiple effect sizes, the uncertainty in the effect size is used to weigh effect sizes, so that large studies are considered more important than small studies. The uncertainty in the effect size is calculated differently for each type of effect size, but generally only requires knowing the study's sample size (N), or the number of observations (n) in each group. Reporting effect sizes or estimates thereof (effect estimate [EE], estimate of effect) is considered good practice when presenting empirical research findings in many fields. The reporting of effect sizes facilitates the interpretation of the importance of a research result, in contrast to its statistical significance. Effect sizes are particularly prominent in social science and in medical research (where size of treatment effect is important). Effect sizes may be measured in relative or absolute terms. In relative effect sizes, two groups are directly compared with each other, as in odds ratios and relative risks. For absolute effect sizes, a larger absolute value always indicates a stronger effect. Many types of measurements can be expressed as either absolute or relative, and these can be used together because they convey different information. A prominent task force in the psychology research community made the following recommendation: Always present effect sizes for primary outcomes...If the units of measurement are meaningful on a practical level (e.g., number of cigarettes smoked per day), then we usually prefer an unstandardized measure (regression coefficient or mean difference) to a standardized measure (r or d). (Wikipedia).

Effect size
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Cohen’s d Effect Size for t Tests (10-7)

An effect size is “a standardized measure of the size of an effect”. Unlike p values, effect sizes can be objectively compared to determine whether a treatment had any practical usefulness. Cohen’s d is the most commonly used measure of effect size for t tests. This video makes three point

From playlist Statistical Significance vs. Effect Size

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Independent-samples T-tests 2: Effect Size

In this video, I demonstrate how to calculate the effect size for independent-samples t-tests and interpret the results. Three effect sizes are discussed: 1. Cohen's d: two groups have similar SDs and the same size. 2. Glass's delta: if each group has a different SD. 3. Hedges' g: differ

From playlist Independent Samples t-Test

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How to calculate Samples Size Proportions

Introduction on how to calculate samples sizes from proportions. Describes the relationship of sample size and proportion. Like us on: http://www.facebook.com/PartyMoreStudyLess

From playlist Sample Size

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EFFECT Size for Correlation: Coefficient of Determination (7-3)

The Correlation Coefficient is also an Effect Size. An r value can be squared to calculate an effect size. The r-squared is the Coefficient of Determination, expressing the proportion of variance in the dependent variable (Y) explained by variance in the independent variable (X). The rever

From playlist Correlation And Regression in Statistics (WK 07 - QBA 237)

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Scale Factor

This video shows how to use scale to determine the dimensions of a proportional model. http://mathispower4u.yolasite.com/

From playlist Unit Scale and Scale Factor

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Cohen's d: Small, Medium, Large Effect Sizes

This video explains and provides an example of how to determine Cohen's d.

From playlist Hypothesis Test with Two Samples

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Fixed Effects and Random Effects

Brief overview in plain English of the differences between the types of effects. Problems with each model and how to overcome them.

From playlist Experimental Design

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Paired-Sample t-test 2: Effect size

In this video, I demonstrate how to calculate the effect size for paired-sample t-tests and interpret the results. Three effect sizes are discussed: 1. Cohen's d: two groups have similar SDs and the same size. 2. Glass's delta: if each group has a different SD. 3. Hedges' g: different an

From playlist Paired-Samples t-Test

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Foundational Correlation – Effect Size for Correlation (13-6)

Calculating the effect size for correlation is much easier than calculating the effect size for a T test for an ANOVA. The squared value of correlation coefficient (r2) is called the Coefficient of determination. It is the proportion of variance in the dependent variable (Y) explained by v

From playlist WK13 Correlation - Online Statistics for the Flipped Classroom

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Why Should we REPORT Effect Size for Hypothesis Tests (16-10)

Significance tells us that the effect was likely not due to chance. Effect size is a standardized measure of how large the effect was. Cohen’s d is the most commonly used measure of effect size for t tests. There are three statistical reasons to report an effect size: if generalization is

From playlist Assumptions, Significance, & Effect Size Wrap-Up (WK 16 - QBA 237)

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Reporting an Effect Size in Hypothesis Testing: An Introduction (Week 16C)

The effect size is a standardized measure of the size of an effect; the difference between means. Dr. Daniel uses a business example to show how a statistically significant study and a non-significant study both actually show the same findings. Reporting the effect size clarifies what sign

From playlist Basic Business Statistics (QBA 237 - Missouri State University)

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Jamovi 1.2/1.6 Tutorial: jPower Power Analysis Module [t-tests ONLY!] (Episode 24)

In this Jamovi tutorial, I go through the jPower module/package inside jamovi. This module is an additional one that can be added to the base program. It is designed to educate jamovi users on how to perform a power analysis, including explanatory text along with several graphs to visualiz

From playlist Jamovi Tutorials

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Finite population size (2), effective population size.

This video shows how a variety of additional factors (e.g., separate sexes, fluctuating population sizes) can cause the population to lose genetic diversity at a rate similar to that of a H-W equilibrium population with a different size, usually a much smaller size which is termed "the eff

From playlist TAMU: Bio 312 - Evolution | CosmoLearning Biology

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Ses 6 | MIT Abdul Latif Jameel Poverty Action Lab Executive Training

Session 6: Sample Size and Power Calculations Speaker: Ester Duflo See the complete course at: http://ocw.mit.edu/jpal License: Creative Commons BY-NC-SA More information at http://ocw.mit.edu/terms More courses at http://ocw.mit.edu

From playlist MIT Abdul Latif Jameel Poverty Action Lab Executive Training

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The Secret Trick to Calculate Cohen’s d in SPSS – It Can Be Done (11-9)

Cohen’s d is the most widely reported measure of effect size for t tests. Although SPSS does not calculate Cohen’s d directly, there are two ways to get it. First, you can enter your SPSS output into a downloadable calculator that will give you the effect size. Second, (at 8:30) you can us

From playlist WK11 Independent Sample t Tests and Paired t Tests - Online Statistics for the Flipped Classroom

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Webinar: How does effect size matter in education?

Bethanie Tucker address how strategies with a larger effect size matters when educating students.

From playlist Free Webinar Series

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The Population-Genetic Environment (Lecture 1)by Michael Lynch

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From playlist Fifth Bangalore School on Population Genetics and Evolution (ONLINE) 2022

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How to determine the scale factor for the dilation of two triangles

👉 Learn about dilations. Dilation is the transformation of a shape by a scale factor to produce an image that is similar to the original shape but is different in size from the original shape. A dilation that creates a larger image is called an enlargement or a stretch while a dilation tha

From playlist Transformations

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R - Chapter 8: Confidence Intervals, Effect Size, & Power - Lecture Part 2

Lecturer: Dr. Erin M. Buchanan Missouri State University Spring 2016 This video covers effect size and confidence intervals for a z-test in hypothesis testing. The lecture is from the eighth chapter in the Nolan and Heinzen Statistics for the Behavioral Sciences. Note: This video was r

From playlist PSY 200 (R) Undergraduate Statistics with Dr. B

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Mann–Whitney U test | Multivariate analysis of variance | Quantile | Absolute value | P-value | Average treatment effect | Regression analysis | Randomized controlled trial | Statistics | Noncentral t-distribution | Partial least squares path modeling | Iverson bracket | Estimator | Z-factor | Noncentral chi-squared distribution | Parameter | F-test | Bias of an estimator | Binary data | Abelson's paradox | Gamma function | Sampling error | Standard deviation | Statistical hypothesis testing | Chi-squared test | Mahalanobis distance | MAGIC criteria | Coefficient of determination | Expected value | Meta-analysis | Correlation | Odds ratio | Phi coefficient | Publication bias | Relative risk | Sampling (statistics) | Explained variation | Test statistic | Cohort study | Estimation statistics | Statistical significance