Cauchy distribution Guide, Meaning , Facts, Information and Description
The Cauchy distribution is a probability distribution with probability density function
When U and V are two independent normally distributed random variables with expected value 0 and variance 1, then the ratio U/V has the standard Cauchy distribution.
If X1, ..., Xn are independent random variables, each with a standard Cauchy distribution, then the sample mean (X1 + ... + Xn)/n has the same standard Cauchy distribution. This example serves to show that the hypothesis of finite variance in the central limit theorem cannot be dropped (although it can be replaced with other, in some cases weaker, assumptions). To see that this is true, compute the characteristic function
The Cauchy distribution is an infinitely divisible probability distribution.
The Cauchy distribution is the Student's t-distribution with just one degree of freedom.
The Cauchy distribution is sometimes called the Lorentz distribution, because it is based on the Lorentzian function.
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2 Why the second moment of the Cauchy distribution is infinite 3 External links |
If a probability distribution has a density function f(x) then the mean or expected value is
Why the mean of the Cauchy distribution is undefined
Is this the same thing as
If both the positive and negative terms in (2) are finite, then (1) is the same as (2). If either the positive term or the negative term is finite, then (1) is the same as (2) (and is infinite, with either a positive or a negative sign). But in the case of the Cauchy distribution, both are infinite. This means (2) is undefined, and then:
Without a defined mean, it is impossible to consider the variance or standard deviation of a standard Cauchy distribution. But the second moment about zero can be considered. It turns out to be infinite:
This is an Article on Cauchy distribution. Page Contains Information, Facts Details or Explanation Guide About Cauchy distribution Why the second moment of the Cauchy distribution is infinite
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