We describe approaches for positive data modeling and classification using both finite inverted Dirichlet mixture models and support vector machines (SVMs). Inverted Dirichlet mixture models are used to tackle an outstanding challenge in SVMs namely the generation of accurate kernels. The kernels generation approaches, grounded on ideas from information theory that we consider, allow the incorporation of data structure and its structural constraints. Inverted Dirichlet mixture models are learned within a principled Bayesian framework using both Gibbs sampler and Metropolis-Hastings for parameter estimation and Bayes factor for model selection (i.e., determining the number of mixture’s components). Our Bayesian learning approach uses priors,...
Nowadays, a great number of positive data has been occurred naturally in many applications, however,...
We consider the problem of learning density mixture models for Classification. Traditional learning ...
Summary There has been increasing interest in applying Bayesian nonparametric methods in large sampl...
In this paper, we develop a novel variational Bayesian learning method for the Dirichlet process (DP...
Recent advances in processing and networking capabilities of computers have caused an accumulation ...
Clustering is an important step in data mining, machine learning, computer vision and image processi...
Model-based approaches have become important tools to model data and infer knowledge. Such approache...
Part 1: Information & Communication Technology-EurAsia Conference 2014, ICT-EurAsia 2014Internationa...
In many unsupervised machine learning algorithms where labelling a large quantity of data is unfeasi...
This thesis mainly propose variational inference for Bayesian mixture models and their applications ...
In this thesis we present an unsupervised algorithm for learning finite mixture models from multivar...
Mixture models are ubiquitous in applied science. In many real-world applications, the number of mix...
<p>Bayesian nonparametric methods are useful for modeling data without having to define the complexi...
Nowadays, we observe a rapid growth of complex data in all formats due to the technological developm...
Count data often appears in natural language processing and computer vision applications. For exampl...
Nowadays, a great number of positive data has been occurred naturally in many applications, however,...
We consider the problem of learning density mixture models for Classification. Traditional learning ...
Summary There has been increasing interest in applying Bayesian nonparametric methods in large sampl...
In this paper, we develop a novel variational Bayesian learning method for the Dirichlet process (DP...
Recent advances in processing and networking capabilities of computers have caused an accumulation ...
Clustering is an important step in data mining, machine learning, computer vision and image processi...
Model-based approaches have become important tools to model data and infer knowledge. Such approache...
Part 1: Information & Communication Technology-EurAsia Conference 2014, ICT-EurAsia 2014Internationa...
In many unsupervised machine learning algorithms where labelling a large quantity of data is unfeasi...
This thesis mainly propose variational inference for Bayesian mixture models and their applications ...
In this thesis we present an unsupervised algorithm for learning finite mixture models from multivar...
Mixture models are ubiquitous in applied science. In many real-world applications, the number of mix...
<p>Bayesian nonparametric methods are useful for modeling data without having to define the complexi...
Nowadays, we observe a rapid growth of complex data in all formats due to the technological developm...
Count data often appears in natural language processing and computer vision applications. For exampl...
Nowadays, a great number of positive data has been occurred naturally in many applications, however,...
We consider the problem of learning density mixture models for Classification. Traditional learning ...
Summary There has been increasing interest in applying Bayesian nonparametric methods in large sampl...