fchopin
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Hi All,
Is it possible to express the kurtosis \kappa, or the 4th central moment \mu_4, of a random variable X in terms of its mean \mu = E(X) and variance \sigma^2 = Var(X) only, without having to particularize to any distribution?
I mean, an expression like \kappa = f(\mu, \sigma^2) or \mu_4 = g(\mu, \sigma^2), valid for any distribution, where f(\mu, \sigma^2) and g(\mu, \sigma^2) are functions of the mean \mu and variance \sigma^2.
Thanks in advance!
Chopin
P.S.: Some comments on my attempts.
\kappa is related to \mu_4, and \mu_4 = E(X^4) - 4\mu E(X^3) + 6\mu^2 E(X^2) - 3\mu^4.
The term E(X^2) can be expressed as E(X^2) = \mu^2 + \sigma^2 but I didn't manage to find the way to express E(X^3) and E(X^4) in terms of \mu and \sigma^2.
Is it possible to express the kurtosis \kappa, or the 4th central moment \mu_4, of a random variable X in terms of its mean \mu = E(X) and variance \sigma^2 = Var(X) only, without having to particularize to any distribution?
I mean, an expression like \kappa = f(\mu, \sigma^2) or \mu_4 = g(\mu, \sigma^2), valid for any distribution, where f(\mu, \sigma^2) and g(\mu, \sigma^2) are functions of the mean \mu and variance \sigma^2.
Thanks in advance!
Chopin
P.S.: Some comments on my attempts.
\kappa is related to \mu_4, and \mu_4 = E(X^4) - 4\mu E(X^3) + 6\mu^2 E(X^2) - 3\mu^4.
The term E(X^2) can be expressed as E(X^2) = \mu^2 + \sigma^2 but I didn't manage to find the way to express E(X^3) and E(X^4) in terms of \mu and \sigma^2.
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