- Logistic distribution
Probability distribution
name =Logistic
type =density
pdf_
cdf_
parameters = location (real)
scale (real)
support =
pdf = {sleft(1+e^{-(x-mu)/s} ight)^2}!
cdf =
mean =
median =
mode =
variance =
skewness =
kurtosis =
entropy =
mgf =
for , Beta function
char =
for
Inprobability theory andstatistics , the logistic distribution is a continuous probability distribution.Itscumulative distribution function is thelogistic function , which appears inlogistic regression andfeedforward neural network s.It resembles thenormal distribution in shape but has heavier tails (higherkurtosis ).Specification
Cumulative distribution function
The logistic distribution receives its name from its
cumulative distribution function (cdf), which is an instance of the family of logistic functions::::
Probability density function
The
probability density function (pdf) of the logistic distribution is given by::::
Because the pdf can be expressed in terms of the square of the hyperbolic secant function "sech", it is sometimes referred to as the "sech-square(d) distribution".
:"See also:"
hyperbolic secant distribution Quantile function
The inverse cumulative distribution function of the logistic distribution is , a generalization of the
logit function, defined as follows::
Alternative parameterization
An alternative parameterization of the logistic distribution can be derived using the substitution . This yields the following density function:
:
Applications
Both the
United States Chess Federation andFIDE have switched their formulas for calculating chess ratings to the logistic distribution, seeElo rating system .The logistic distribution and the S-shaped pattern that results from it have been extensively used in many different areas the most important of which include:
♦ Biology - to describe how species populations grow in competition [P. F. Verhulst, "Recherches mathématiques sur la loi d'accroissement de la population", "Nouveaux Mémoirs de l'Académie Royale des Sciences et des Belles-Lettres de Bruxelles", vol. 18 (1845); Alfred J. Lotka, "Elements of Physical Biology", (Baltimore, MD: Williams & Wilkins Co., 1925).]
♦ Epidemiology - to describe the spreading of epidemics [Theodore Modis, "Predictions: Society's Telltale Signature Reveals the Past and Forecasts the Future", Simon & Schuster, New York, 1992, pp 97-105.]
♦ Psychology - to describe learning [Theodore Modis, "Predictions: Society's Telltale Signature Reveals the Past and Forecasts the Future", Simon & Schuster, New York, 1992, Chapter 2.]
♦ Technology - to describe how new technologies diffuse and substitute for each other [J. C. Fisher and R. H. Pry , "A Simple Substitution Model of Technological Change", "Technological Forecasting & Social Change", vol. 3, no. 1 (1971).]
♦ Market - the diffusion of new-product sales [Theodore Modis, "Conquering Uncertainty", McGraw-Hill, New York, 1998, Chapter 1.]
♦ Energy - the diffusion and substitution of primary energy sources [Cesare Marchetti, "Primary Energy Substitution Models: On the Interaction between Energy and Society", "Technological Forecasting & Social Change", vol. 10, (1977).]
Related distributions
If log("X") has a logistic distribution then "X" has a
log-logistic distribution and "X" – "a" has ashifted log-logistic distribution .Derivations
Expected Value
:
:Subsitute:
:
:
:Note the odd function:
:
See also
*
logistic regression
*sigmoid function Notes
References
* cite book
first = Balakrishnan
last = N.
year = 1992
title = Handbook of the Logistic Distribution
publisher = Marcel Dekker, New York
id = ISBN 0-8247-8587-8
* cite book
author = Johnson, N. L., Kotz, S., Balakrishnan N.
year = 1995
title = Continuous Univariate Distributions
others = Vol. 2
edition = 2nd Ed.
id = ISBN 0-471-58494-0
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