Chi distribution
In probability theory and statistics, the chi distribution is a continuous probability distribution. It is the distribution of the positive square root of the sum of squares of a set of independent random variables each following a standard normal distribution, or equivalently, the distribution of the Euclidean distance of the random variables from the origin. It is thus related to the chi-squared distribution by describing the distribution of the positive square roots of a variable obeying a chi-squared distribution.
If are independent, normally distributed random variables with mean 0 and standard deviation 1, then the statistic
is distributed according to the chi distribution. Accordingly, dividing by the mean of the chi distribution yields the correction factor in the unbiased estimation of the standard deviation of the normal distribution. The chi distribution has one parameter,, which specifies the number of degrees of freedom.
The most familiar examples are the Rayleigh distribution and the Maxwell–Boltzmann distribution of the molecular speeds in an ideal gas.
Definitions
Probability density function
The probability density function of the chi-distribution iswhere is the gamma function.
Cumulative distribution function
The cumulative distribution function is given by:where is the regularized gamma function.
Generating functions
The moment-generating function is given by:where is Kummer's confluent hypergeometric function. The characteristic function is given by:
Properties
Moments
The raw moments are then given by:where is the gamma function. Thus the first few raw moments are:
where the rightmost expressions are derived using the recurrence relationship for the gamma function:
From these expressions we may derive the following relationships:
Mean:
Variance:
Skewness:
Kurtosis excess:
Entropy
The entropy is given by:where is the polygamma function.
Large n approximation
We find the large n=k+1 approximation of the mean and variance of chi distribution. This has application e.g. in finding the distribution of standard deviation of a sample of normally distributed population, where n is the sample size.The mean is then:
We use the following Gamma function equality:
To write:
Using Stirling's approximation for Gamma function, we get the following expression for the mean:
And thus the variance is:
Related distributions
- If then
- If then
- If then for any
- chi distribution is a special case of the generalized gamma distribution or the Nakagami distribution or the noncentral chi distribution
Name | Statistic |
chi-squared distribution | |
noncentral chi-squared distribution | |
chi distribution | |
noncentral chi distribution |