Variance and Standard Deviation
Sigma \(\sigma\)
Variance. This is the symbol for variance:
\(\sigma^2\)
- To find variance
- Take the first data point and subtract the mean (-10-10)
- Then square it (-10 - 10)^2
- Then do the same thing for every data point in the set and divide by the number of values in the dataset. E.g.
- \(\frac{(-10-10)^2 + (0-10)^2 + (10-10)^2 + (20-10)^2 + (30-10)^2}{5}\)
- \(\frac{400 + 100 + 0 + 100 + 400}{5}\)
- \(\frac{1000}{5}\)
- \(\sigma^2 = 200\)
- Also called “mean of the squared distance from the mean”
Standard deviation measures the spread of data distribution - the typical distance between each data point and the mean. - Standard deviation gives us a better sense of how far away, on average, we are from the mean.
Standard Deviation is just the square root of the variance. Or, square root of sigma squared: \(\sqrt{200}\) - Or, in other words, since variance = sigma squared, then standard deviation is simply sigma.
Graph:
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- 113.023 Statistics - Variance, Standard Deviation to 113.024 Statistics - Judging outliers in a dataset
- 113.023 Statistics - Variance, Standard Deviation to 113.036 Statistics - Expected Value
- 113.022 Statistics - Average, Mean, Mode, Dispersion, Range to 113.023 Statistics - Variance, Standard Deviation
- 113.036 Statistics - Expected Value to 113.023 Statistics - Variance, Standard Deviation
- 116.124 Life Lessons - Temperance for the win to 113.023 Statistics - Variance, Standard Deviation