Effect Size (Cohen’s f²) Calculator
Calculate the effect size for hierarchical regression using:
* Enter the baseline model
Step 1: Enter Model Parameters
e.g., 0.20
e.g., 0.35 (should be greater than baseline
Effect Size (Cohen’s f²) Calculator for Hierarchical Multiple Regression
Welcome to our Effect Size (Cohen’s f²) Calculator for Hierarchical Multiple Regression! This tool helps you compute the incremental effect size (Cohen’s f²) when additional predictors are added to a regression model. By quantifying the change in explained variance, you can assess the practical significance of new predictors.
Table of Contents
What is Cohen’s f²?
Cohen’s f² is a measure of effect size used in multiple regression to assess the impact of a set of predictors. In hierarchical regression, it quantifies the incremental variance explained by adding new predictors to an existing model.
- Incremental R²: The change in the coefficient of determination when additional predictors are included.
- Cohen’s f²: Calculated as the ratio of the incremental R² to the unexplained variance of the full model.
Calculation Formula
The formula for Cohen’s f² in hierarchical multiple regression is:
Where:
: The coefficient of determination for the full model with all predictors. : The coefficient of determination for the reduced model without the additional predictors.
Key Concepts
- Hierarchical Regression: A method where predictors are added in steps to evaluate their incremental contribution.
- Coefficient of Determination (R²): The proportion of variance in the dependent variable explained by the predictors.
- Incremental Variance: The additional variance explained by the new predictors.
- Effect Size: A standardized measure indicating the magnitude of an effect, with Cohen’s f² categorizing small, medium, and large effects.
Step-by-Step Calculation Process
-
Gather Model Data:
Obtain the
values for both the reduced model (without the additional predictors) and the full model (with the additional predictors). -
Compute Incremental R²:
Calculate the difference:
. -
Apply the Formula:
Substitute the values into the formula:
-
Interpret the Result:
The computed
value indicates the effect size of the additional predictors. Conventionally, values of 0.02, 0.15, and 0.35 represent small, medium, and large effects, respectively.
Practical Examples
Example: Calculating Cohen’s f²
Scenario: A reduced model yields
-
Calculate Incremental R²:
-
Apply the Formula:
-
Interpretation:
An
value of approximately 0.33 indicates a medium-to-large effect size, suggesting that the additional predictors have a substantial impact on the model.
Interpreting the Results
The calculator outputs Cohen’s
- Small Effect:
- Medium Effect:
- Large Effect:
or greater
Applications
This calculator is particularly useful for:
- Hierarchical Regression: Assessing the impact of adding new predictors.
- Social Sciences & Psychology: Evaluating incremental predictive validity.
- Economics & Business: Measuring the effect size of additional variables in forecasting models.
- Educational Research: Quantifying the influence of new factors in academic performance models.
Advantages
- User-Friendly: Intuitive interface for entering
values. - Quick Computation: Instantly calculates Cohen’s
to help you assess effect size. - Educational: Enhances understanding of incremental effect sizes in regression analysis.
- Practical: Supports data-driven decision-making in model building and evaluation.
Conclusion
Our Effect Size (Cohen’s f²) Calculator for Hierarchical Multiple Regression is an essential tool for evaluating the incremental impact of additional predictors in your regression model. By computing Cohen’s