Dependence is a universal phenomenon which can be observed everywhere. In machine learning, probabilistic graphical models (PGMs) represent dependence relations with graphs. PGMs find wide applications in natural language processing (NLP), speech processing, computer vision, biomedicine, information retrieval, etc. Many traditional models, such as hidden Markov models (HMMs), Kalman filters, can be put under the umbrella of PGMs. The central idea of PGMs is to decompose (factorize) a joint probability into a product of local factors. Learning, inference and storage can be conducted efficiently over the factorization representation.\ud \ud In this thesis, we propose a novel framework motivated by the Minimum Shared Information Principle (MSI...
online first May 2014Lifted graphical models provide a language for expressing dependencies between ...
Statistical Relational Learning is a new branch of machine learning that aims to model a joint distr...
There has been a growing interest in stochastic modelling and learning with complex data, whose elem...
Dependence is a universal phenomenon which can be observed everywhere. In machine learning, probabil...
Conditional Random Fields (CRFs) are undirected graphical models which are well suited to many natur...
Factorization is of fundamental importance in the area of Probabilistic Graphical Models (PGMs). In ...
Sequence labeling has wide applications in many areas. For example, most of named entity recog-nitio...
CRFs are discriminative undirected models which are globally\ud normalized. Global normalization pre...
Sequence labeling has wide applications in natural language processing and speech processing. Popula...
Most information extraction (IE) systems treat separate potential extractions as independent. Howeve...
Most information extraction (IE) systems treat separate potential extractions as independent. Howeve...
Modeling and predicting co-occurrences of events is a fundamental problem of unsupervised learning. ...
Discriminatively trained undirected graphical models have had wide empirical success, and there has ...
Most information extraction (IE) systems treat separate potential extractions as independent. Howeve...
<p>40 ICA networks (<i>upper row</i>) and 40 sparse PCA networks (<i>lower row</i>) were discovered ...
online first May 2014Lifted graphical models provide a language for expressing dependencies between ...
Statistical Relational Learning is a new branch of machine learning that aims to model a joint distr...
There has been a growing interest in stochastic modelling and learning with complex data, whose elem...
Dependence is a universal phenomenon which can be observed everywhere. In machine learning, probabil...
Conditional Random Fields (CRFs) are undirected graphical models which are well suited to many natur...
Factorization is of fundamental importance in the area of Probabilistic Graphical Models (PGMs). In ...
Sequence labeling has wide applications in many areas. For example, most of named entity recog-nitio...
CRFs are discriminative undirected models which are globally\ud normalized. Global normalization pre...
Sequence labeling has wide applications in natural language processing and speech processing. Popula...
Most information extraction (IE) systems treat separate potential extractions as independent. Howeve...
Most information extraction (IE) systems treat separate potential extractions as independent. Howeve...
Modeling and predicting co-occurrences of events is a fundamental problem of unsupervised learning. ...
Discriminatively trained undirected graphical models have had wide empirical success, and there has ...
Most information extraction (IE) systems treat separate potential extractions as independent. Howeve...
<p>40 ICA networks (<i>upper row</i>) and 40 sparse PCA networks (<i>lower row</i>) were discovered ...
online first May 2014Lifted graphical models provide a language for expressing dependencies between ...
Statistical Relational Learning is a new branch of machine learning that aims to model a joint distr...
There has been a growing interest in stochastic modelling and learning with complex data, whose elem...