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Log-t distribution

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Log-t or Log-Student t
Probability density function
Log-Cauchy density function for values of '"`UNIQ--postMath-00000001-QINU`"'
Cumulative distribution function
Log-Cauchy cumulative distribution function for values of '"`UNIQ--postMath-00000002-QINU`"'
Parameters (real)
(real)
(real)
Support
PDF
Mean infinite
Variance infinite
Skewness does not exist
Excess kurtosis does not exist
MGF does not exist

In probability theory, a log-t distribution or log-Student t distribution is a probability distribution of a random variable whose logarithm is distributed in accordance with a Student's t-distribution. If X is a random variable with a Student's t-distribution, then Y = exp(X) has a log-t distribution; likewise, if Y has a log-1distribution, then X = log(Y) has a Student's t-distribution.[1]

Characterization

The log-t distribution has the probability density function:

,

where is the location parameter of the underlying (non-standardized) Student's t-distribution, is the scale parameter of the underlying (non-standardized) Student's t-distribution, and is the number of degrees of freedom of the underlying Student's t-distribution.[1] If and then the underlying distribution is the standardized Student's t-distribution.

If then the distribution is a log-Cauchy distribution.[1] As approaches infinity, the distribution approaches a log-normal distribution.[1] Although the log-normal distribution has finite moments, for any finite degrees of freedom, the mean and variance and all higher moments are infinite or do not exist.[1]

The log-t distribution is a special case of the generalized beta distribution of the second kind.[1]

Applications

The log-t distribution has applications in finance. For example, the distribution of stock market returns often shows fatter tails than a normal distribution, and thus tends to fit a Student's t-distribution better than a normal distribution. While the Black-Scholes model based on the log-normal distribution is often used to price stock options, option pricing formulas based on the log-t distribution can be a preferable alternative if the returns have fat tails.[2]

The log-t distribution also has applications in hydrology and in analyzing data on cancer remission.[1][3]

Multivariate log-t distribution

Analagous to the log-normal distribution, multivariate forms of the log-t distribution exist. In this case, the location parameter is replaced by a vector μ, the scale parameter is replaced by a matrix Σ.[1]

References

  1. ^ a b c d e f g h Olosunde, Akinlolu & Olofintuade, Sylvester (January 2022). "Some Inferential Problems from Log Student's T-distribution and its Multivariate Extension". Revista Colombiana de Estadística - Applied Statistics. 45 (1): 209–229. doi:10.15446/rce.v45n1.90672. Retrieved 2022-04-01.{{cite journal}}: CS1 maint: multiple names: authors list (link)
  2. ^ Cassidy, Daniel T.; Hamp, Michael J.; Ouyed, Rachid (2010). "Pricing European Options with a Log Student's t-Distribution: a Gosset Formula" (PDF). doi:10.48550/arXiv.0906.4092. Retrieved 2022-04-01. {{cite journal}}: Cite journal requires |journal= (help)
  3. ^ Viglione, A. (2010). "On the sampling distribution of the coefficient of L-variation for hydrological applications" (PDF). Hydrology and Earth System Sciences Discussions. 7: 5467–5496. doi:10.5194/hessd-7-5467-2010. Retrieved 2022-04-01.{{cite journal}}: CS1 maint: unflagged free DOI (link)