Calculating Effect-Sizes



Similar documents
Effect-Size Indices for Dichotomized Outcomes in Meta-Analysis

Module 4 - Multiple Logistic Regression

Overview Classes Logistic regression (5) 19-3 Building and applying logistic regression (6) 26-3 Generalizations of logistic regression (7)

Effect Size Calculation for experimental & quasiexperimental

Understanding and Quantifying EFFECT SIZES

Linda K. Muthén Bengt Muthén. Copyright 2008 Muthén & Muthén Table Of Contents

Analysing Questionnaires using Minitab (for SPSS queries contact -)

Data analysis process

Data Analysis, Research Study Design and the IRB

11. Analysis of Case-control Studies Logistic Regression

DATA ANALYSIS. QEM Network HBCU-UP Fundamentals of Education Research Workshop Gerunda B. Hughes, Ph.D. Howard University

Developing Risk Adjustment Techniques Using the System for Assessing Health Care Quality in the

Chapter Eight: Quantitative Methods

SAMPLE SIZE TABLES FOR LOGISTIC REGRESSION

1/27/2013. PSY 512: Advanced Statistics for Psychological and Behavioral Research 2

MULTIPLE REGRESSION AND ISSUES IN REGRESSION ANALYSIS

LOGIT AND PROBIT ANALYSIS

Auxiliary Variables in Mixture Modeling: 3-Step Approaches Using Mplus

When to Use a Particular Statistical Test

Descriptive Statistics

CHAPTER 12 EXAMPLES: MONTE CARLO SIMULATION STUDIES

Logit Models for Binary Data

STATISTICA Formula Guide: Logistic Regression. Table of Contents

EXCEL Analysis TookPak [Statistical Analysis] 1. First of all, check to make sure that the Analysis ToolPak is installed. Here is how you do it:

ANALYSING LIKERT SCALE/TYPE DATA, ORDINAL LOGISTIC REGRESSION EXAMPLE IN R.

Online Appendix Assessing the Incidence and Efficiency of a Prominent Place Based Policy

Binary Logistic Regression

Statistical Analysis Using SPSS for Windows Getting Started (Ver. 2014/11/6) The numbers of figures in the SPSS_screenshot.pptx are shown in red.

Windows-Based Meta-Analysis Software. Package. Version 2.0

Introduction to Statistical Computing in Microsoft Excel By Hector D. Flores; and Dr. J.A. Dobelman

Additional sources Compilation of sources:

Simple Linear Regression Inference

Univariate Regression

Using An Ordered Logistic Regression Model with SAS Vartanian: SW 541

Example: Credit card default, we may be more interested in predicting the probabilty of a default than classifying individuals as default or not.

Analyzing Intervention Effects: Multilevel & Other Approaches. Simplest Intervention Design. Better Design: Have Pretest

IBM SPSS Missing Values 22

Ordinal Regression. Chapter

The CRM for ordinal and multivariate outcomes. Elizabeth Garrett-Mayer, PhD Emily Van Meter

SPSS ADVANCED ANALYSIS WENDIANN SETHI SPRING 2011

How To Predict Success In An Executive Education Program

Study Guide for the Final Exam

Statistical Models in R

individualdifferences

Improving the Performance of Data Mining Models with Data Preparation Using SAS Enterprise Miner Ricardo Galante, SAS Institute Brasil, São Paulo, SP

Simple Random Sampling

Basic Statistical and Modeling Procedures Using SAS

Tips for surviving the analysis of survival data. Philip Twumasi-Ankrah, PhD

Does Financial Sophistication Matter in Retirement Preparedness of U.S Households? Evidence from the 2010 Survey of Consumer Finances


Section Format Day Begin End Building Rm# Instructor. 001 Lecture Tue 6:45 PM 8:40 PM Silver 401 Ballerini

II. DISTRIBUTIONS distribution normal distribution. standard scores

Data Analysis in SPSS. February 21, If you wish to cite the contents of this document, the APA reference for them would be

Data Preparation and Statistical Displays

Chapter Seven. Multiple regression An introduction to multiple regression Performing a multiple regression on SPSS

LOGISTIC REGRESSION ANALYSIS

Integrating Financial Statement Modeling and Sales Forecasting

RARITAN VALLEY COMMUNITY COLLEGE ACADEMIC COURSE OUTLINE MATH 111H STATISTICS II HONORS

Using MS Excel to Analyze Data: A Tutorial

Calculating VaR. Capital Market Risk Advisors CMRA

Introduction to Regression and Data Analysis

On the Practice of Dichotomization of Quantitative Variables

MORTGAGE LENDER PROTECTION UNDER INSURANCE ARRANGEMENTS Irina Genriha Latvian University, Tel ,

Quantitative Methods for Finance

Description. Textbook. Grading. Objective

Sample Size Planning, Calculation, and Justification

QUANTITATIVE METHODS BIOLOGY FINAL HONOUR SCHOOL NON-PARAMETRIC TESTS

EARLY VS. LATE ENROLLERS: DOES ENROLLMENT PROCRASTINATION AFFECT ACADEMIC SUCCESS?

Why Don t Lenders Renegotiate More Home Mortgages? Redefaults, Self-Cures and Securitization ONLINE APPENDIX

Multivariate Logistic Regression

CHAPTER 3 EXAMPLES: REGRESSION AND PATH ANALYSIS

UNDERSTANDING ANALYSIS OF COVARIANCE (ANCOVA)

Lee A. Becker. < Effect Size (ES) 2000 Lee A. Becker

Statistics Graduate Courses

Crash Course on Basic Statistics

Logistic (RLOGIST) Example #7

Directions for using SPSS

Introduction to Quantitative Methods

Two Correlated Proportions (McNemar Test)

Calculating the Probability of Returning a Loan with Binary Probability Models

SPSS Notes (SPSS version 15.0)

Logistic Regression.

Mathematics within the Psychology Curriculum

A Hybrid Modeling Platform to meet Basel II Requirements in Banking Jeffery Morrision, SunTrust Bank, Inc.

Business Statistics. Successful completion of Introductory and/or Intermediate Algebra courses is recommended before taking Business Statistics.

Missing data in randomized controlled trials (RCTs) can

Chicago Booth BUSINESS STATISTICS Final Exam Fall 2011

Accurately and Efficiently Measuring Individual Account Credit Risk On Existing Portfolios

Measures of Central Tendency and Variability: Summarizing your Data for Others

GMAC. Predicting Graduate Program Success for Undergraduate and Intended Graduate Accounting and Business-Related Concentrations

Online Appendices to the Corporate Propensity to Save

Transcription:

Calculating Effect-Sizes David B. Wilson, PhD George Mason University August 2011 The Heart and Soul of Meta-analysis: The Effect Size Meta-analysis shifts focus from statistical significance to the direction and magnitude of effect Key to this is the effect size It is the dependent variable of meta-analysis Encodes research findings on a numerical scale Different types of effect sizes for different research situations Each type may have multiple methods of computation 1

Overview Main types of Effect Sizes Logic of the Standardized Mean Difference Methods of Computing the Standardized Mean Difference Logic of the Odds-ratio and Risk-ratio Methods of Computing the Odds-ratio Adjustments, such as for baseline differences Issues related to the variance estimate Most Common Effect Size Indexes Standardized mean difference (d or g) Group contrast (e.g., treatment versus control) Inherently continuous outcome construct Odds-ratio and Risk-ratio (OR and RR) Group contrast (e.g., treatment versus control) Inherently dichotomous (binary) outcome construct Correlation coefficient (r ) Two inherently continuous constructs 2

Necessary Characteristics of Effect Sizes Numerical values produced must be comparable across studies Must be able to compute its standard error Must not be a direct function of sample size The Standardized Mean Difference Compares the means of two groups Standardized this difference 3

Visual Example of d-type Effect Size Small Sample Size Bias Adjustment d is slightly upwardly bias when based on small samples. This can be fixed with the adjustment below: It is common practice to apply this adjustment whenever using d. 4

Standard Error and Variance of d The standard error (and variance) of d is mostly a function of sample size: Methods of Computing d Lots of methods of computing d Goal is to reproduce what you would get with means, standard deviations, and sample sizes Some methods are straightforward 5

Computing d from a t-test Formula for d: Formula for t: Therefore: Computing d from a p-value from a t-test An exact p-value from a t-test can be convert into a t-value, assuming you have the degrees-of-freedom Then proceed as above 6

Computing d from dichotomous outcomes Some studies may report outcome dichotomously d can be estimated from these data Several methods Logit Cox Logit Probit Arcsine Logit method of computing d Logistic distribution similar to the normal distribution Logged odds-ratios conform to the logistic distribution Standard deviation of the logistic distribution is Thus, we can rescale a logged OR into d Monte Carlo simulations suggest that this performs fairly well; some advantages to the Cox logit method (divide by 1.65) 7

More complicated estimates of d Can think of d as having two parts Numerator: mean difference Denominator: pooled standard deviation Trick is to get reasonable estimates of each Often have one but not the other Estimates of numerator of d Covariate adjusted means Difference in gain score means Unstandardized regression coefficient for treatment dummy 8

Estimates of denominator of d Gain score standard deviation Overall standard deviation for the outcome Standard error One-way ANOVA Be care: don't just use any standard deviation laying around See Online Effect Size Calculator On CEBCP Website: http://gunston.gmu.edu/cebcp/effectsizecalculator/index.html On Campbell Website: http://www.campbellcollaboration.org/resources/effect_size_input.php 9

Logic of the Odds-Ratio and Risk-Ratio Odds-ratio is the ratio of odds An odds is the probability of failure over the probability of success Risk-ratio is the ratio of risks A risk is simply the probability of failure An odds-ratio or risk-ratio of 1 indicates no difference between the groups Odds-ratio more difficult to interpret than risk-ratios Risk ratios are sensitive to base event rate; odds-ratios are not Logic of the Odds-Ratio and Risk-Ratio Odds-ratios and risk-ratios contrast two groups on dichotomous outcome I.e., a 2 by 2 frequency table where a, b, c, and d, are cell frequencies 10

Computing the Odds-Ratio and Risk-Ratio Odds-ratio is computed as: Risk-ratio is computed as Computing the Odds-Ratio and Risk-Ratio The odds-ratio can also be computed from the proportion successful in each group (p). Odds-ratio is computed as: 11

Computing the Standard Error and Variance of the Odds-Ratio and Risk Ratio Standard error of the logged Odds-ratio: Standard error of the logged Risk-ratio: Variance: Computing the Odds-Ratio from Other Data Only so many was you can report binary data Makes computing odds-ratios and risk ratios relatively easy Generally have Full two-by-two table Percent of events (successes/failures) in each group Proportion of events (successes/failures) in each group Actual odds-ratio or risk-ratio Convert d-type effect size Chi-square 12

Computing the Odds-Ratio from a χ 2 Odds-ratio can be computed from a χ 2 if you have the overall event rate for the sample (total number of successes or failures) and the sample size in each group Computations reproduce the two-by-two table See online calculator or Lipsey/Wilson Practical Metaanalysis Appendix B Adjustments to Effect Size Hunter and Schmidt - Psychometric meta-analysis Measurement unreliability, invalidity Range restriction Artificial dichotomization Hunter and Schmidt adjustments generally not done in a Campbell or Cochrane review Pre-test of outcome For quasi-experimental designs, may remove some bias Must still use post-test standard deviation in denominator Adds additional error (variance estimate should be bigger) Sensitivity analysis recommended 13

Issues Related to Variance Estimate Method of computing effect size may affect variance estimate For example d computed from dichotomous data numerator of d is adjusted for baseline or other covariates Study data may involve clusters Possible solution: rescale standard error from correct model provided in study (if available) where z is either a z or t test associate with the treatment effect from a complex statistical model. Questions? 14

P.O. Box 7004 St. Olavs plass 0130 Oslo, Norway E-mail: info@c2admin.org http://www.campbellcollaboration.org 15