ECOMMERCE & MARKETING – CONVERION RATE OPTIMIATION (CRO) CALCULATOR Minimum Detectable Effect A precise tool.
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What is the Minimum Detectable Effect & How does it work?

The Minimum Detectable Effect (MDE) is a statistical concept used in A/B testing to determine the smallest effect size that can be detected with a given level of confidence. It helps ensure that changes made to a website or marketing strategy are not only statistically significant but also practically meaningful.

The MDE is influenced by several factors including the sample size, the significance level (alpha), and the power of the test (1 – beta). A larger sample size generally leads to a smaller MDE, making it easier to detect even small effects.

MDE = frac{Z_{alpha/2} + Z_{beta}}{n} times sigma
Z_{alpha/2} = critical value for the chosen significance level, Z_{beta} = critical value for the desired power, n = sample size, sigma = standard deviation of the metric being measured.
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Frequently Asked Questions
What is Minimum Detectable Effect (MDE)?
Minimum Detectable Effect is the smallest effect size that can be detected in an A/B test with a given level of confidence.
How does sample size affect MDE?
A larger sample size generally leads to a smaller Minimum Detectable Effect, making it easier to detect smaller differences between variations.
What is the significance of the significance level (alpha) in MDE calculations?
The significance level (alpha) determines the probability of rejecting the null hypothesis when it is true. A lower alpha means a higher confidence level but requires a larger sample size to detect an effect.
How does power (1 – beta) impact MDE?
Power (1 – beta) represents the probability of correctly detecting an effect if there is one. Higher power reduces the Minimum Detectable Effect, but it also requires a larger sample size.
Can you explain how to interpret the results from this calculator?
The calculator provides the Minimum Detectable Effect based on your input parameters. This value helps determine if changes in your marketing strategy or website are statistically significant and practically meaningful.
What factors should I consider when setting my MDE for an A/B test?
Consider the business impact, sample size, significance level (alpha), power of the test, and the expected effect size when setting your Minimum Detectable Effect.
How does MDE relate to statistical significance in A/B testing?
MDE helps ensure that any detected differences between variations are statistically significant. It sets a threshold for what is considered a meaningful change, reducing the risk of false positives.

Results are for informational purposes only and do not constitute professional advice.