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Prole likelihood estimation of generalized half logistic distribution under progressively type-II censoring  

Kim, Yong-Ku (Department of Statistics, Yeungnam University)
Kang, Suk-Bok (Department of Statistics, Yeungnam University)
Han, Song-Hui (Department of Statistics, Yeungnam University)
Seo, Jung-In (Department of Statistics, Yeungnam University)
Publication Information
Journal of the Korean Data and Information Science Society / v.22, no.3, 2011 , pp. 597-603 More about this Journal
Abstract
The half logistic distribution has been used intensively in reliability and survival analysis especially when the data is censored. In this paper, we provide prole likelihood estimation of the shape parameter and scale parameter in the generalized half logistic distribution based on progressively Type-II censored data. We also introduce approximate maximum prole likelihood estimates for the scale parameter. As an illustration, we examine the validity of our estimation using real data and simulated data.
Keywords
Generalized half logistic distribution; prole likelihood estimation; progressively Type-II censoring;
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Times Cited By KSCI : 5  (Citation Analysis)
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