# Empirical Rule Tutorial

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## What is Empirical rule in statistics?

The empirical rule states that for a normal distribution of a continuous random variable, nearly all of the data will fall within three standard deviations of the mean. The empirical rule can be broken down into three parts: 68% of data falls within the first standard deviation from the mean. 95% fall within two standard deviations. 99.7% fall within three standard deviations.### Why we use Empirical rule in statistics?

The Empirical rule is often in statistics for Forecasting, especially when obtaining the actual data is difficult or Impossible. The rule can give you a rough estimate of what your data collection might look like if you were able to survey the entire population. This rule applies generally to a continuous random variable X, following the shape of a normal distribution, or bell-curve, with a mean and a standard deviation. The rule doesn’t apply to distributions that are not normal### How to use Empirical rule?

When applying the Empirical Rule to a data set the following conditions are true: Approximately**68%**of the data falls within one standard deviation of the mean (or between the mean – one time the standard deviation, and the mean + 1 times the standard deviation). In mathematical notation, this is represent as μ ± 1σ

**pr(μ−σ≤x≤μ+σ) = 68.27**Approximately

**95%**of the data falls within two standard deviations of the mean (or between the mean – 2 times the standard deviation, and the mean + 2 times the standard deviation). The mathematical notation for this is: μ ± 2σ

**pr(μ−2σ≤x≤μ+2σ) = 68.27 %**Approximately

**7%**of the data falls within three standard deviations of the mean (or between the mean – three times the standard deviation and the mean + three times the standard deviation). The following notation is to represent this fact: μ ± 3σ

**pr(μ−3σ≤x≤μ+3σ) = 99.73 %**