Jump to content

Log-t distribution

From Wikipedia, the free encyclopedia
This is an old revision of this page, as edited by Rlendog (talk | contribs) at 15:41, 5 April 2022 (Characterization: add ref). The present address (URL) is a permanent link to this revision, which may differ significantly from the current revision.
Log-t or Log-Student t
Parameters (real), location parameter
(real), scale parameter
(real), degrees of freedom (shape) parameter
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 of the log-t distribution 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][2]

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.[3]

The log-t distribution also has applications in hydrology and in analyzing data on cancer remission.[1][4]

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. ^ Bookstaber, Richard M.; McDonald, James B. (July 2007). "A General Distribution for Describing Security Price Returns". The Journal of Business. 60 (3). University of Chicago Press: 401–424. Retrieved 2022-04-05.
  3. ^ 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)
  4. ^ 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)