Unit Weibull distribution

Unit Weibull
Probability density function
Cumulative distribution function
Parameters (real)
(real)
Support
PDF
CDF
Quantile
Skewness
Excess kurtosis
MGF

The unit-Weibull distribution (UW) is a continuous probability distribution with domain on . Useful for indices and rates, or bounded variables with a domain. It was originally proposed by Mazucheli et al[1] using a transformation of the Weibull distribution.

Definitions

Probability density function

Its probability density function is defined as:

Cumulative distribution function

And its cumulative distribution function is:

Quantile function

The quantile function of the UW distribution is given by:

Having a closed form expression for the quantile function, may make it a more flexible alternative for a quantile regression model against the classical Beta regression model.

Properties

Moments

The th raw moment of the UW distribution can be obtained through:

Skewness and kurtosis

The skewness and kurtosis measures can be obtained upon substituting the raw moments from the expressions:

Hazard rate

The hazard rate function of the UW distribution is given by:

Parameter estimation

Let be a random sample of size from the UW distribution with probability density function defined before. Then, the log-likelihood function of is:

The likelihood estimate of is obtained by solving the non-linear equations

and

The expected Fisher information matrix of based on a single observation is given by

where and is the Euler’s constant.

When , follows the power function distribution and the th raw moment of the UW distribution becomes:

In this case, the mean, variance, skewness and kurtosis, are:

The skewness can be negative, zero, or positive when . And if , with , follows the standard uniform distribution, and the measures becomes:

For the case of , follows the unit-Rayleigh distribution, and:

where

Is the complementary error function. In this case, the measures of the distribution are:

Applications

It was shown to outperform, against other distributions, like the Beta and Kumaraswamy distributions, in: maximum flood level, petroleum reservoirs, risk management cost effectiveness,[2] and recovery rate of CD34+cells data.

See also

References

  1. ^ Mazucheli, J.; Menezes, A. F. B.; Ghitany, M. E. (2018). "The Unit-Weibull Distribution And Associated Inference". Journal of Applied Probability and Statistics. 13.
  2. ^ Mazucheli, J.; Menezes, A. F. B.; Fernandes, LB; de Oliveira, RP; Ghitany, ME (2019). "The unit-Weibull distribution as an alternative to the Kumaraswamy distribution for the modeling of quantiles conditional on covariates". Journal of Applied Statistics. 47 (6): 954–974. doi:10.1080/02664763.2019.1657813. PMC 9041746. PMID 35706917.