In this article, we describe a Bayesian approach for the estimation of probability distribution of a discrete random variable (rv) with correlated classes under finite sample space. We utilize general benefits of Bayesian approaches within the context of estimation of probability distributions under finite sample space. In our approach, a tractable posterior distribution is obtained; and hence, posterior inferences are easily drawn by using the Gibbs sampling. Possible prior correlations between adjacent categories of the considered discrete rv are suitably modeled. The proposed approach takes into account all available information contained in successive samples as a natural consequence of using Bayes's theorem. It is beneficial in th...
This thesis describes the use of sampling methods in two applications: an epidemic model of tubercul...
Many study designs yield a variety of outcomes from each subject clustered within an experimental un...
: This paper is the first of two on the problem of estimating a function of a probability distributi...
This paper considers a finite set of discrete distributions all having the same finite support. The ...
In [14] we formalized probability and probability distribution on a finite sample space. In this art...
<div><p>We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volu...
We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volume conta...
We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volume conta...
We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volume conta...
We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volume conta...
The paper considers some Bayes estimators of the finite population mean with auxiliary information u...
Assuming that the sample space is discrete and sampling distributions assign positive probability to...
In this article, we consider the Bayes and empirical Bayes problem of the current population mean of...
A finite-mixture distribution model is introduced for Bayesian classification in the case of asymmet...
Inference for bivariate distributions with fixed marginals is very important in applications. When a...
This thesis describes the use of sampling methods in two applications: an epidemic model of tubercul...
Many study designs yield a variety of outcomes from each subject clustered within an experimental un...
: This paper is the first of two on the problem of estimating a function of a probability distributi...
This paper considers a finite set of discrete distributions all having the same finite support. The ...
In [14] we formalized probability and probability distribution on a finite sample space. In this art...
<div><p>We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volu...
We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volume conta...
We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volume conta...
We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volume conta...
We consider a set of sample counts obtained by sampling arbitrary fractions of a finite volume conta...
The paper considers some Bayes estimators of the finite population mean with auxiliary information u...
Assuming that the sample space is discrete and sampling distributions assign positive probability to...
In this article, we consider the Bayes and empirical Bayes problem of the current population mean of...
A finite-mixture distribution model is introduced for Bayesian classification in the case of asymmet...
Inference for bivariate distributions with fixed marginals is very important in applications. When a...
This thesis describes the use of sampling methods in two applications: an epidemic model of tubercul...
Many study designs yield a variety of outcomes from each subject clustered within an experimental un...
: This paper is the first of two on the problem of estimating a function of a probability distributi...