Přístupnostní navigace
E-application
Search Search Close
Publication detail
FUSEK, M. MICHÁLEK, J.
Original Title
Left‑censored samples from skewed distributions: Statistical inference and applications
Type
journal article in Scopus
Language
English
Original Abstract
Left‑censored data occur frequently in many areas. At present, researchers pay attention to skewed censored distributions more frequently. This paper deals with statistical inference of type I multiply left‑censored Weibull and exponential distributions. It suggests a computational procedure for calculation of maximum likelihood estimates of the parameters. The expected Fisher information matrix for estimation of variances of estimated parameters is introduced. The estimates are then used for construction of confidence intervals for the expectation using the maximum likelihood method. Asymptotic tests for comparison of distributions (expectations respectively) of two independent left‑censored Weibull samples are proposed. Furthermore, asymptotic tests for assessing suitability of reduction of the Weibull distribution to the exponential distribution are introduced. Finally, the left‑censored exponential distribution is briefly described. Methods derived in this paper are illustrated on elemental carbon measurements, and can be applied in analysis of real environmental and/or chemical data.
Keywords
Asymptotic tests, Fisher information matrix, left‑censored data, maximum likelihood, skewed distribution.
Authors
FUSEK, M.; MICHÁLEK, J.
Released
1. 3. 2018
ISBN
1211-8516
Periodical
Acta Universitatis Agriculturae et Silviculturae Mendelianae Brunensis
Year of study
66
Number
1
State
Czech Republic
Pages from
245
Pages to
252
Pages count
8
BibTex
@article{BUT146242, author="Michal {Fusek} and Jaroslav {Michálek}", title="Left‑censored samples from skewed distributions: Statistical inference and applications", journal="Acta Universitatis Agriculturae et Silviculturae Mendelianae Brunensis", year="2018", volume="66", number="1", pages="245--252", doi="10.11118/actaun201866010245", issn="1211-8516" }