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Author
Sulewski Piotr (Pomeranian University in Słupsk), Szymkowiak Magdalena (Poznań University of Technology, Poznań, Poland)
Title
The Weibull Lifetime Model with Randomised Failure-Free Time
Source
Statistics in Transition, 2022, vol. 23, nr 4, s. 59-76, tab., wykr., bibliogr. 32 poz.
Keyword
Zmienne losowe, Rozkład prawdopodobieństwa, Funkcje
Random variable, Probability distributions, Functions
Note
summ.
Abstract
The paper shows that treating failure-free time in the three-parameter Weibull distribution not a constant, but as a random variable makes the resulting distribution much more flexible at the expense of only one additional parameter. (original abstract)
Accessibility
The Main Library of the Cracow University of Economics
The Library of Warsaw School of Economics
The Library of University of Economics in Katowice
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Bibliography
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ISSN
1234-7655
Language
eng
URI / DOI
http://dx.doi.org/10.2478/stattrans-2022-0042
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