Abstract The ultimate problem considered in this thesis is modeling a high-dimensional joint distribution over a set of discrete variables. For this purpose, we consider classes of context-specific graphical models and the main emphasis is on learning the structure of such models from data. Traditional graphical models compactly represent a joint distribution through a factorization justi ed by statements of conditional independence which are encoded by a graph structure. Context-speci c independence is a natural generalization of conditional independence that only holds in a certain context, speci ed by the conditioning variables. We introduce context-speci c generalizations of both Bayesian networks and Markov networks by i...
Decoding complex relationships among large numbers of variables with relatively few observations is ...
Several methods have recently been developed for joint structure learn-ing of multiple (related) gra...
Decoding complex relationships among large numbers of variables with relatively few observations is ...
Theory of graphical models has matured over more than three decades to provide the backbone for seve...
This work focuses on learning the structure of Markov networks. Markov networks are parametric model...
AbstractThe theory of Gaussian graphical models is a powerful tool for independence analysis between...
This work focuses on learning the structure of Markov networks from data. Markov networks are parame...
The theme of this thesis is context-speci c independence in graphical models. Considering a system o...
This is a set of notes, summarizing what we talked about in the 10th recitation. They are not meant ...
40 pages, 12 figuresUndirected probabilistic graphical models represent the conditional dependencies...
It is known that directed acyclic graphs (DAGs) may hide several local features of the joint probabi...
This work is centred on investigating dependencies and representing learned structures as graphs. W...
\u3cp\u3eOne of the critical issues when adopting Bayesian networks (BNs) to model dependencies amon...
Due to technological breakthrough in recent decades and the rapid increase in the availability of mu...
TR{ISU{CS{04{06 Copyright c ° 2004 Dimitris Margaritis In this paper we present a probabilistic non-...
Decoding complex relationships among large numbers of variables with relatively few observations is ...
Several methods have recently been developed for joint structure learn-ing of multiple (related) gra...
Decoding complex relationships among large numbers of variables with relatively few observations is ...
Theory of graphical models has matured over more than three decades to provide the backbone for seve...
This work focuses on learning the structure of Markov networks. Markov networks are parametric model...
AbstractThe theory of Gaussian graphical models is a powerful tool for independence analysis between...
This work focuses on learning the structure of Markov networks from data. Markov networks are parame...
The theme of this thesis is context-speci c independence in graphical models. Considering a system o...
This is a set of notes, summarizing what we talked about in the 10th recitation. They are not meant ...
40 pages, 12 figuresUndirected probabilistic graphical models represent the conditional dependencies...
It is known that directed acyclic graphs (DAGs) may hide several local features of the joint probabi...
This work is centred on investigating dependencies and representing learned structures as graphs. W...
\u3cp\u3eOne of the critical issues when adopting Bayesian networks (BNs) to model dependencies amon...
Due to technological breakthrough in recent decades and the rapid increase in the availability of mu...
TR{ISU{CS{04{06 Copyright c ° 2004 Dimitris Margaritis In this paper we present a probabilistic non-...
Decoding complex relationships among large numbers of variables with relatively few observations is ...
Several methods have recently been developed for joint structure learn-ing of multiple (related) gra...
Decoding complex relationships among large numbers of variables with relatively few observations is ...