Logistic Regression Power Calculator

This advanced calculator determines the statistical power for logistic regression models. Statistical power is the probability that your test will detect an effect when there is one. Use this tool to plan your study, determine required sample sizes, or calculate achieved power.

Calculator Inputs

Enter your study parameters below. All fields are required for accurate power calculation.

Enter the year your model applies to
Total number of observations in your study
Probability of the event occurring (between 0.01 and 0.99)
Total predictors in your logistic regression model
Expected odds ratio for your primary predictor (must be >1)
Significance level
Variance in the primary predictor explained by other predictors (0–0.95)

Results

Your logistic regression power analysis results appear below.

Statistical Power

Probability of detecting the effect (80%+ is recommended).

Required Sample Size (for 80% power)

Minimum N needed to achieve 80% power with your parameters.

Adjusted Effect Size (f²)

Cohen’s f² after adjustment for other predictors.

Power Curve

Statistical Power Guidelines

Statistical power is crucial for valid research conclusions. Below are international standards for power interpretation:

  • Adequate Power: 0.80 or higher (80% chance to detect true effect)
  • High Power: 0.90 or higher (often used in clinical trials)
  • Low Power: Below 0.80 (increased risk of Type II error)
  • Insufficient: Below 0.50 (high risk of missing true effects)
Power LevelInterpretationRecommended Use
0.90 – 1.00Excellent powerClinical trials, regulatory studies
0.80 – 0.89Adequate powerMost research studies, publication standard
0.70 – 0.79Moderate powerExploratory research, pilot studies
Below 0.70Low powerPreliminary analysis only

Use the Least Squares Linear Regression Calculator for precise linear analysis, or explore the full Regression Calculator category to access all regression tools in one place.