Skip to main content

Breadcrumb

Home arrow_forward_ios Information on IES-Funded Research arrow_forward_ios Bayesian Analysis of Academic Outco ...
Home arrow_forward_ios ... arrow_forward_ios Bayesian Analysis of Academic Outco ...
Information on IES-Funded Research
Grant Closed

Bayesian Analysis of Academic Outcomes from Single-Case Experimental Designs

NCER
Program: Statistical and Research Methodology in Education
Program topic(s): Core
Award amount: $899,769
Principal investigator: Ethan Van Norman
Awardee:
Lehigh University
Year: 2019
Award period: 5 years (07/01/2019 - 06/30/2024)
Project type:
Methodological Innovation
Award number: R305D190023

Purpose

Single-Case Experiment Designs (SCEDs) are a flexible methodology in which applied education researchers and practitioners can evaluate the effectiveness of academic interventions with students that have severe learning needs. Replication of functional relations within and across participants, and across studies is necessary to establish evidence-based practices using SCEDs. However, research regarding how outcomes from SCEDs should be summarized within and across studies to identify evidence-based practices is ongoing. The purpose of the project was to explore the relative value of Bayesian based SCED effect sizes used in conjunction with academic outcomes. The researchers compared the performance of Bayesian based metrics with traditional frequentist approaches. The project also intended to yield tools (i.e., applications) for researchers and practitioners estimate effect sizes that leverages optimal Bayesian methods.

Project Activities

The team will develop and evaluate the performance of a Bayesian framework to estimate two types of SCED ESs: a multilevel between subjects metric and a generalized least squares metric developed. Both effect sizes are theoretically comparable to effect sizes used in between-group research but have demonstrated questionable technical properties when estimated within a frequentist framework in the presence of complex data patterns. They will use a combination of extant analysis and Monte Carlo simulation to develop and evaluate the Bayesian estimator. During the first stage of the project they will conduct a systematic literature review to identify and extract data from published and unpublished SCED studies that evaluated academic interventions. All extracted data will be made publicly available. They will then conduct descriptive and inferential analyses for each academic skill area to identify common conditions observed in SCED studies (e.g., number of participants, typical treatment effects, etc.) to inform subsequent simulations. During the second stage of the project researchers will conduct simulations to generate hypothetical SCED data and will use that data to compare the performance of SCED ESs estimated using frequentist approaches, Bayesian analysis using uniformed priors, and Bayesian analysis using informed priors. During the third stage the team will develop the Bayesian effect size calculator website and pilot its use with applied education researchers. Based upon quantitative and qualitative feedback we collect from those researchers, we will refine the website prior to its formal launch.

People and institutions involved

IES program contact(s)

Charles Laurin

Education Research Analyst
NCER

Project contributors

David Klingbeil

Co-principal investigator

James Pustejovsky

Co-principal investigator

Products and publications

Project website:

BAAOSCED site at Lehigh University

Publications:

Chen, M. Pustejovsky, J. E., Klingbeil, D. A., & Van Norman, E. R. (2023). Between-case  standardized mean differences: Flexible methods for single-case designs. Journal of School Psychology, 98, 16-38. https://doi.org/10.1016/j.jsp.2023.02.002  ERIC ID Number: ED661849

Van Norman, E. R., Boorse, J*., & Klingbeil, D. A. (2023). The relationship between visual depictions of rate of improvement and quantitative effect sizes in academic single-case experimental design studies. Journal of Behavioral Education. https://doi.org/10.1007/s10864-022-09500-6 ERIC ID Number: ED661857

Van Norman, E. R., Klingbeil, D. A., Boorse, J.*, & Sturgell, A. K.*(2023). A summary of relevant demographic characteristics of multiple-baseline designs targeting academic skills. Remedial and Special Education. https://doi.org/10.1177/07419325231203343 ERIC ID Number: ED661850

Zink, H., Van Norman, E. R., & Klingbeil, D. A. (2024). Multiple baseline and multiple probe design studies targeting academic skills: Trends over time in effect sizes. Psychology in the Schools, 61, 1458-1473. https://doi.org/10.1002/pits.23120 ERIC ID Number: ED661862

Available data:

https://osf.io/gd8s7/

Additional project information

Additional Online Resources and Information: 

  • R/Stan  implementation of Bayesian Single Case Effect Sizes 
  • Single Case Effect Size Calculator

Questions about this project?

To answer additional questions about this project or provide feedback, please contact the program officer.

 

Tags

Data and AssessmentsDisabilities

Share

Icon to link to Facebook social media siteIcon to link to X social media siteIcon to link to LinkedIn social media siteIcon to copy link value

Questions about this project?

To answer additional questions about this project or provide feedback, please contact the program officer.

 

You may also like

Zoomed in IES logo
Workshop/Training

Data Science Methods for Digital Learning Platform...

August 18, 2025
Read More
Zoomed in IES logo
Workshop/Training

Meta-Analysis Training Institute (MATI)

July 28, 2025
Read More
Zoomed in Yellow IES Logo
Workshop/Training

Bayesian Longitudinal Data Modeling in Education S...

July 21, 2025
Read More
icon-dot-govicon-https icon-quote