The introduction of copulas, which allow separating the dependence structure of a multivariate distribution from its marginal behaviour, was a major advance in dependence modelling. Copulas brought new theoretical insights to the concept of dependence and enabled the construction of a variety of new multivariate distributions. Despite their popularity in statistics and financial modelling, copulas have remained largely unknown in the machine learning community until recently. This thesis investigates the use of copula models, in particular Gaussian copulas, for solving various machine learning problems and makes contributions in the domains of dependence detection between datasets, compression based on side information, and variable selecti...
Studying associations among multivariate outcomes is an interesting problem in statistical science. ...
Multivariate survival data are characterized by the presence of correlation between event times with...
<p>The paper presents a new copula based method for measuring dependence between random variables. O...
The aim of machine learning and statistics is to learn and predict from data. With the introduction ...
Learning the joint dependence of discrete variables is a fundamental problem in machine learning, wi...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
Different types of correlated data arise commonly in many studies and present considerable challenge...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
A fundamental problem in statistics is the estimation of dependence between random variables. While ...
Diploma thesis deals with theory of copulas and their practical use in the field of financial and no...
Modeling multivariate continuous distributions is a task of central interest in statistics and machi...
The development of tools to measure and to model dependence in high-dimensional data is of great int...
Graduation date: 2012A copula is the representation of a multivariate distribution. Copulas are use...
The majority of model-based clustering techniques is based on multivariate normal models and their v...
Flexible multivariate distributions are needed in many areas. The popular multivariate Gaussian dist...
Studying associations among multivariate outcomes is an interesting problem in statistical science. ...
Multivariate survival data are characterized by the presence of correlation between event times with...
<p>The paper presents a new copula based method for measuring dependence between random variables. O...
The aim of machine learning and statistics is to learn and predict from data. With the introduction ...
Learning the joint dependence of discrete variables is a fundamental problem in machine learning, wi...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
Different types of correlated data arise commonly in many studies and present considerable challenge...
Copulas allow to learn marginal distributions separately from the multivariate dependence structure ...
A fundamental problem in statistics is the estimation of dependence between random variables. While ...
Diploma thesis deals with theory of copulas and their practical use in the field of financial and no...
Modeling multivariate continuous distributions is a task of central interest in statistics and machi...
The development of tools to measure and to model dependence in high-dimensional data is of great int...
Graduation date: 2012A copula is the representation of a multivariate distribution. Copulas are use...
The majority of model-based clustering techniques is based on multivariate normal models and their v...
Flexible multivariate distributions are needed in many areas. The popular multivariate Gaussian dist...
Studying associations among multivariate outcomes is an interesting problem in statistical science. ...
Multivariate survival data are characterized by the presence of correlation between event times with...
<p>The paper presents a new copula based method for measuring dependence between random variables. O...