Search

The Online Encyclopedia and Dictionary

 
     
 

Encyclopedia

Dictionary

Quotes

 

Skewness

In probability theory and statistics, skewness is a measure of the asymmetry of the probability distribution of a real-valued random variable. Roughly speaking, a distribution has positive skew (right-skewed) if the higher tail is longer and negative skew (left-skewed) if the lower tail is longer; getting these the wrong way round is a common error.

Skewness, the third standardized moment, is defined as μ3 / σ3, where μ3 is the third moment about the mean and σ is the standard deviation. The skewness of a random variable X is sometimes denoted Skew[X].

For a sample of N values the sample skewness is Σi(xi − μ)3 / Nσ3, where xi is the ith value and μ is the mean.

If Y is the sum of n independent random variables, all with the same distribution as X, then it can be shown that Skew[Y] = Skew[X] / √n.

Given samples from a population, the equation for population skewness above is a biased estimator of the population skewness. An unbiased estimator of skewness is

\mbox{Skew} = \frac{\sqrt{n(n-1)}}{(n-2)} \left(\frac{\sum_{i=1}^n \left( x_i - \bar{x} \right)^3}{n\sigma^3}\right)

where σ is the sample standard deviation and \bar{x} is the sample mean.

Pearson Skewness Coefficients

Karl Pearson suggested two simpler calculations as a measure of skewness:

though there is no guarantee that these will be the same sign as each other or as the ordinary definition of skewness.

See also

External links

The contents of this article are licensed from Wikipedia.org under the GNU Free Documentation License. How to see transparent copy