Some characterization problems associated with the bivariate exponential and geometric distributions


Autoria(s): Muraleedharan Nair,K R; Dr.Unnikrishnan Nair, N
Data(s)

24/04/2014

24/04/2014

10/05/1990

Resumo

It is highly desirable that any multivariate distribution possessescharacteristic properties that are generalisation in some sense of the corresponding results in the univariate case. Therefore it is of interest to examine whether a multivariate distribution can admit such characterizations. In the exponential context, the question to be answered is, in what meaning— ful way can one extend the unique properties in the univariate case in a bivariate set up? Since the lack of memory property is the best studied and most useful property of the exponential law, our first endeavour in the present thesis, is to suitably extend this property and its equivalent forms so as to characterize the Gumbel's bivariate exponential distribution. Though there are many forms of bivariate exponential distributions, a matching interest has not been shown in developing corresponding discrete versions in the form of bivariate geometric distributions. Accordingly, attempt is also made to introduce the geometric version of the Gumbel distribution and examine several of its characteristic properties. A major area where exponential models are successfully applied being reliability theory, we also look into the role of these bivariate laws in that context. The present thesis is organised into five Chapters

Department of Mathematics and Statistics, Cochin University of Science and Technology

Cochin University of Science and Technology

Identificador

http://dyuthi.cusat.ac.in/purl/3657

Idioma(s)

en

Publicador

Cochin University Of Science And Technology

Palavras-Chave #Gumbels bivariate exponential #Freunds distribution #Marshall and Olkin distribution #Characterization problem
Tipo

Thesis