The multivariate Normal distribution, [1], is extended due to the Logarithmic Sobolev Inequalities (LSI), [2], and can act as a family of distributions based on a “shape” parameter. This shape parameter creates along with parameters of position, , and dispersion, , the family of distributions with probability density function, [3]
(1)
with
(2)
(3)
For a typical plot is Figure 1
Consider the , see [6], with position (mean) , positive scale parameter , extra shape parameter and pdf coming from (1)–(3) and given by, see Figure 2,
(4)
Figure 1: The pdf of the standardized ϕγ(x) for γ = 2 (Normal), γ = 3
(fat-tailed) with p = 2.
with
(5)
Let then
(6)
When , then
Moreover, [6],
(7)
and
(8)
The Laplace transform can be obtained, [4],
Figure 2: The pdf of the standardized φ₍γ₎(x) for γ = 2 (Normal), γ = −0.1 (near to Dirac), γ = 1.05 (near to Uniform) and γ = 30 (near to Laplace), with p = 1.
(9)
[5], [7]
References
[1] Theodore W. Anderson. An Introduction to Multivariate Statistical Analysis. Wiley-Interscience, 3rd edition, July 2003.
[2] Leonard Gross. Logarithmic Sobolev inequalities. Amer. J. Math., 97(4):1061–1083, 1975.
[3] Christos P. Kitsos and Nikolaos K. Tavoularis. Logarithmic Sobolev Inequalities for Information measures. IEEE Trans. Inform. Theory, 55(6):2554–2561, June 2009.
[4] Christos P. Kitsos and Ioannis S. Stamatiou. Laplace transformation for the γ-order generalized Normal . Far East Journal of Theoretical Statistics, 68(1):1–21, 2024.
[6] Christos P. Kitsos and Thomas L. Toulias. On the family of the γ-ordered normal distributions. Far East Journal of Theoretical Statistics, 35(2):95–114, January 2011.
[7] Samuel Karlin and Howard M. Taylor. A First Course in Stochastic Processes. Academic Press, New York, 2nd edition, March 1975.