We propose two models, one continuous and one categorical, to learn about dependence between two random variables, given only limited joint observations, but assuming that the marginals are precisely known. The continuous model focuses on the Gaussian case, while the categorical model is generic. We illustrate the resulting statistical inferences on a simple example concerning the body mass index. Both methods can be extended easily to three or more random variables
We present a framework for characterizing Bayesian classification methods. This framework can be tho...
In this paper we study the relationship between regression analysis and a multivariate dependency me...
In the present work we study discrete and limited dependent variables. We begin with binary dependen...
Summary & Conclusions�A model for building statistical dependence between marginal distribution ...
We propose a method of dependence modeling for a broad class of multivariate data. Multivariate Gaus...
We propose a model particularly suitable for modeling the relationship between a dependent variable ...
A deluge of data is transforming science and industry. Many hope that this massive flux of informat...
Tests for dependence of continuous, discrete and mixed continuous-discrete variables are ubiquitous...
Tests for dependence of continuous, discrete and mixed continuous-discrete variables are ubiquitous ...
Causes of uncertainties may be interrelated and may introduce dependencies. Ignoring these dependenc...
The art and science of simulation involves modeling the various possible events that could occur, us...
We study limit beliefs in a learning-by-experimentation environment where: (a) givenan opportunity f...
This dissertation covers a collection of supervised learning methods targeted to data with complex d...
In applied psychological, behavioral and sociological research the majority of data are typically mi...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
We present a framework for characterizing Bayesian classification methods. This framework can be tho...
In this paper we study the relationship between regression analysis and a multivariate dependency me...
In the present work we study discrete and limited dependent variables. We begin with binary dependen...
Summary & Conclusions�A model for building statistical dependence between marginal distribution ...
We propose a method of dependence modeling for a broad class of multivariate data. Multivariate Gaus...
We propose a model particularly suitable for modeling the relationship between a dependent variable ...
A deluge of data is transforming science and industry. Many hope that this massive flux of informat...
Tests for dependence of continuous, discrete and mixed continuous-discrete variables are ubiquitous...
Tests for dependence of continuous, discrete and mixed continuous-discrete variables are ubiquitous ...
Causes of uncertainties may be interrelated and may introduce dependencies. Ignoring these dependenc...
The art and science of simulation involves modeling the various possible events that could occur, us...
We study limit beliefs in a learning-by-experimentation environment where: (a) givenan opportunity f...
This dissertation covers a collection of supervised learning methods targeted to data with complex d...
In applied psychological, behavioral and sociological research the majority of data are typically mi...
A new graphical model, called a vine, for dependent random variables is introduced. Vines generalize...
We present a framework for characterizing Bayesian classification methods. This framework can be tho...
In this paper we study the relationship between regression analysis and a multivariate dependency me...
In the present work we study discrete and limited dependent variables. We begin with binary dependen...