There are several different parameterizations of the distribution in use. The one shown here gives reasonably interpretable parameters and a simple form for the cumulative distribution function. The parameter is a scale parameter and is also the median of the distribution. The parameter is a shape parameter. The distribution is unimodal when and its dispersion decreases as increases. The cumulative distribution function is where,, The probability density function is
Alternative parameterization
An alternative parametrization is given by the pair in analogy with the logistic distribution:
Properties
Moments
The th raw moment exists only when when it is given by where B is the beta function. Expressions for the mean, variance, skewness and kurtosis can be derived from this. Writing for convenience, the mean is and the variance is Explicit expressions for the skewness and kurtosis are lengthy. As tends to infinity the mean tends to, the variance and skewness tend to zero and the excess kurtosis tends to 6/5.
The log-logistic distribution provides one parametric model for survival analysis. Unlike the more commonly used Weibull distribution, it can have a non-monotonic hazard function: when the hazard function is unimodal. The fact that the cumulative distribution function can be written in closed form is particularly useful for analysis of survival data with censoring. The log-logistic distribution can be used as the basis of an accelerated failure time model by allowing to differ between groups, or more generally by introducing covariates that affect but not by modelling as a linear function of the covariates. The survival function is and so the hazard function is The log-logistic distribution with shape parameter is the marginal distribution of the inter-times in a geometric-distributed counting process.
Hydrology
The log-logistic distribution has been used in hydrology for modelling stream flow rates and precipitation. Extreme values like maximum one-day rainfall and river discharge per month or per year often follow a log-normal distribution. The log-normal distribution, however, needs a numeric approximation. As the log-logistic distribution, which can be solved analytically, is similar to the log-normal distribution, it can be used instead. The blue picture illustrates an example of fitting the log-logistic distribution to ranked maximum one-day October rainfalls and it shows the 90% confidence belt based on the binomial distribution. The rainfall data are represented by the plotting positionr/ as part of the cumulative frequency analysis.
Economics
The log-logistic has been used as a simple model of the distribution of wealth or income in economics, where it is known as the Fisk distribution. Its Gini coefficient is. The Gini coefficient for a continuous probability distribution takes the form: where is the CDF of the distribution and is the expected value. For the log-logistic distribution, the formula for the Gini coefficient becomes: Defining the substitution leads to the simpler equation: And making the substitution further simplifies the Gini coefficient formula to: The integral component is equivalent to the standard beta function. The beta function may also be written as: where is the gamma function. Using the properties of the gamma function, it can be shown that: From Euler's reflection formula, the expression can be simplified further: Finally, we may conclude that the Gini coefficient for the log-logistic distribution.
Networking
The log-logistic has been used as a model for the period of time beginning when some data leaves a software user application in a computer and the response is received by the same application after travelling through and being processed by other computers, applications, and network segments, most or all of them without hard real-time guarantees. It has been shown to be a more accurate probabilistic model for that than the log-normal distribution or others, as long as abrupt changes of regime in the sequences of those times are properly detected.
Related distributions
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If X has a log-logistic distribution with scale parameter and shape parameter then Y = log has a logistic distribution with location parameter and scale parameter
As the shape parameter of the log-logistic distribution increases, its shape increasingly resembles that of a logistic distribution. Informally:
The log-logistic distribution with shape parameter and scale parameter is the same as the generalized Pareto distribution with location parameter, shape parameter and scale parameter
The addition of another parameter formally results in a shifted log-logistic distribution, but this is usually considered in a different parameterization so that the distribution can be bounded above or bounded below.
Generalizations
Several different distributions are sometimes referred to as the generalized log-logistic distribution, as they contain the log-logistic as a special case. These include the Burr Type XII distribution and the Dagum distribution, both of which include a second shape parameter. Both are in turn special cases of the even more general generalized beta distribution of the second kind. Another more straightforward generalization of the log-logistic is the shifted log-logistic distribution.