AbstractWe propose algorithms for learning Markov boundaries from data without having to learn a Bayesian network first. We study their correctness, scalability and data efficiency. The last two properties are important because we aim to apply the algorithms to identify the minimal set of features that is needed for probabilistic classification in databases with thousands of features but few instances, e.g. gene expression databases. We evaluate the algorithms on synthetic and real databases, including one with 139,351 features
We propose a simple and efficient approach to building undirected probabilistic classification model...
Classification and prediction are common tasks in machine learning. For example, many studies have a...
textMany real-world problems involve data that both have complex structures and uncertainty. Statist...
AbstractWe propose algorithms for learning Markov boundaries from data without having to learn a Bay...
In this paper, we discuss a novel scalable, data efficient and correct Markov boundary learning algo...
Theoretically, the Markov boundary (MB) is the optimal solution for feature selection. However, exis...
Algorithms for Markov boundary discovery from data constitute an important recent development in mac...
The structure of a Markov network is typically learned in one of two ways. The first approach is to ...
A classification task requires an exponentially growing amount of computation time and number of obs...
This article proposes the usage of the d-separation criterion in Markov Boundary Discovery algorithm...
Markov networks are widely used in a wide variety of applications, in problems ranging from computer...
Many machine learning applications that involve relational databases incorporate first-order logic a...
We introduce a new embarrassingly parallel parameter learning algorithm for Markov random fields whi...
Abstract-Markov network is a widely used graphical representation of data in applications such as na...
Learning Bayesian networks is a central problem for pattern recognition, density estimation and clas...
We propose a simple and efficient approach to building undirected probabilistic classification model...
Classification and prediction are common tasks in machine learning. For example, many studies have a...
textMany real-world problems involve data that both have complex structures and uncertainty. Statist...
AbstractWe propose algorithms for learning Markov boundaries from data without having to learn a Bay...
In this paper, we discuss a novel scalable, data efficient and correct Markov boundary learning algo...
Theoretically, the Markov boundary (MB) is the optimal solution for feature selection. However, exis...
Algorithms for Markov boundary discovery from data constitute an important recent development in mac...
The structure of a Markov network is typically learned in one of two ways. The first approach is to ...
A classification task requires an exponentially growing amount of computation time and number of obs...
This article proposes the usage of the d-separation criterion in Markov Boundary Discovery algorithm...
Markov networks are widely used in a wide variety of applications, in problems ranging from computer...
Many machine learning applications that involve relational databases incorporate first-order logic a...
We introduce a new embarrassingly parallel parameter learning algorithm for Markov random fields whi...
Abstract-Markov network is a widely used graphical representation of data in applications such as na...
Learning Bayesian networks is a central problem for pattern recognition, density estimation and clas...
We propose a simple and efficient approach to building undirected probabilistic classification model...
Classification and prediction are common tasks in machine learning. For example, many studies have a...
textMany real-world problems involve data that both have complex structures and uncertainty. Statist...