Discrete Weibull distribution
In probability theory and statistics, the discrete Weibull distribution is the discrete variant of the Weibull distribution. It was first described by Nakagawa and Osaki in 1975.
Parameters |
scale shape | ||
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Support | |||
PMF | |||
CDF |
Alternative parametrizations
In the original paper by Nakagawa and Osaki they used the parametrization making the cumulative distribution function with . Setting makes the relationship with the geometric distribution apparent.[1]
An alternative parametrization — related to the Pareto distribution — has been used to estimate parameters in infectious disease modelling.[2] This parametrization introduces a parameter , meaning that the term can be replaced with . Therefore, the probability mass function can be expressed as
- ,
and the cumulative mass function can be expressed as
- .
Location-scale transformation
The continuous Weibull distribution has a close relationship with the Gumbel distribution which is easy to see when log-transforming the variable. A similar transformation can be made on the discrete Weibull.
Define where (unconventionally) and define parameters and . By replacing in the cumulative mass function:
We see that we get a location-scale parametrization:
which in estimation settings makes a lot of sense. This opens up the possibility of regression with frameworks developed for Weibull regression and extreme-value-theory. [3]
References
- Nakagawa, Toshio; Osaki, Shunji (1975). "The discrete Weibull distribution". IEEE Transactions on Reliability. 24 (5): 300–301. doi:10.1109/TR.1975.5214915. S2CID 6149392.
- Endo A, Murayama H, Abbott S, et al. (2022). "Heavy-tailed sexual contact networks and monkeypox epidemiology in the global outbreak, 2022". Science. 378 (6615): 90–94. doi:10.1126/science.add4507. PMID 36137054.
- Scholz, Fritz (1996). "Maximum Likelihood Estimation for Type I Censored Weibull Data Including Covariates". ISSTECH-96-022, Boeing Information & Support Services. Retrieved 26 April 2016.