Article · Wikipedia archive·Last revised Jun 16, 2026
Exponential-logarithmic distribution
In probability theory and statistics, the Exponential-Logarithmic (EL) distribution is a family of lifetime distributions with decreasing failure rate, defined on the interval [0, ∞). This distribution is parameterized by two parameters and .
The study of lengths of the lives of organisms, devices, materials, etc., is of major importance in the biological and engineering sciences. In general, the lifetime of a device is expected to exhibit decreasing failure rate (DFR) when its behavior over time is characterized by 'work-hardening' (in engineering terms) or 'immunity' (in biological terms).
The exponential-logarithmic model, together with its various properties, are studied by Tahmasbi and Rezaei (2008).1
This model is obtained under the concept of population heterogeneity (through the process of
compounding).
The survival function (also known as the reliability
function) and hazard function (also known as the failure rate
function) of the EL distribution are given, respectively, by
The mean residual lifetime of the EL distribution is given by
Let U be a random variate from the standard uniform distribution.
Then the following transformation of U has the EL distribution with
parameters p and β:
Estimation of the parameters
To estimate the parameters, the EM algorithm is used. This method is discussed by Tahmasbi and Rezaei (2008).1 The EM iteration is given by
Related distributions
The EL distribution has been generalized to form the Weibull-logarithmic distribution.3
If X is defined to be the random variable which is the minimum of N independent realisations from an exponential distribution with rate parameter β, and if N is a realisation from a logarithmic distribution (where the parameter p in the usual parameterisation is replaced by (1 − p)), then X has the exponential-logarithmic distribution in the parameterisation used above.
References
References
Tahmasbi, R., Rezaei, S., (2008), "A two-parameter lifetime distribution with decreasing failure rate", Computational Statistics and Data Analysis, 52 (8), 3889-3901. doi:10.1016/j.csda.2007.12.002
Lewin, L. (1981) Polylogarithms and Associated Functions, North
Holland, Amsterdam.