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(Standard Deviation)
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:: '''Population standard deviation''' (<math>\sigma</math>)
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: '''Population standard deviation''' (<math>\sigma</math>)
 
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<blockquote>
 
<math>\sigma = \sqrt{\frac{\sum_{i=1}^{N}(x_{i} - \mu)^2}{N}}</math>
 
<math>\sigma = \sqrt{\frac{\sum_{i=1}^{N}(x_{i} - \mu)^2}{N}}</math>
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:: '''Sample standard deviation formula'''  (<math>s</math>)
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: '''Sample standard deviation formula'''  (<math>s</math>)
 
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<blockquote>
 
Sometimes our data is only a sample of the whole population. In this case, we can still estimate the Standard deviation; but when we use a sample as an estimate of the whole population, the Standard deviation formula changes to this:
 
Sometimes our data is only a sample of the whole population. In this case, we can still estimate the Standard deviation; but when we use a sample as an estimate of the whole population, the Standard deviation formula changes to this:

Revision as of 20:49, 13 December 2020

Standard Deviation

https://statistics.laerd.com/statistical-guides/measures-of-spread-standard-deviation.php

The standard deviation is a measure of the spread of scores within a set of data. Usually, we are interested in the standard deviation of a population. However, as we are often presented with data from a sample only, we can estimate the population standard deviation from a sample standard deviation. These two standard deviations - sample and population standard deviations - are calculated differently. In statistics, we are usually presented with having to calculate sample standard deviations, and so this is what this article will focus on, although the formula for a population standard deviation will also be shown.



Population standard deviation ()



Sample standard deviation formula ()

Sometimes our data is only a sample of the whole population. In this case, we can still estimate the Standard deviation; but when we use a sample as an estimate of the whole population, the Standard deviation formula changes to this:




  • The Standard Deviation is the square root of the variance.
  • This measure is the most widely used to express deviation from the mean in a variable.
  • The higher the value the more widely distributed are the variable data values around the mean.
  • Assuming the frequency distributions approximately normal, about 68% of all observations are within +/- 1 standard deviation.
  • Approximately 95% of all observations fall within two standard deviations of the mean (if data is normally distributed).