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Least squares fitting the three-parameter inverse Weibull density (CROSBI ID 164252)

Prilog u časopisu | izvorni znanstveni rad | međunarodna recenzija

Marušić, Miljenko ; Marković, Darija ; Jukić, Dragan Least squares fitting the three-parameter inverse Weibull density // Mathematical communications, 15 (2010), 2; 539-553

Podaci o odgovornosti

Marušić, Miljenko ; Marković, Darija ; Jukić, Dragan

engleski

Least squares fitting the three-parameter inverse Weibull density

The inverse Weibull model was developed by Erto. In practice, the unknown parameters of the appropriate inverse Weibull density are not known and must be estimated from a random sample. Estimation of its parameters has been approached in the literature by various techniques, because a standard maximum likelihood estimate does not exist. To estimate the unknown parameters of the three-parameter inverse Weibull density we will use a combination of nonparametric and parametric methods. The idea consists of using two steps: in the first step we calculate an initial nonparametric density estimate which needs to be as good as possible, and in the second step we apply the nonlinear least squares method to estimate the unknown parameters. As a main result, a theorem on the existence of the least squares estimate is obtained, as well as its generalization in the $l_p$ norm ($1\leq p<\infty$). Some simulations are given to show that our approach is satisfactory if the initial density is of good enough quality.

three-parameter inverse Weibull density; least squares; least squares estimate; existence problem; data fitting

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Podaci o izdanju

15 (2)

2010.

539-553

objavljeno

1331-0623

Povezanost rada

Matematika

Indeksiranost