Continuous-time Bayesian networks (CTBNs) constitute a general and powerful framework for modeling continuous-time stochastic processes on networks. This makes them particularly attractive for learning the directed structures among interacting entities. However, if the available data is incomplete, one needs to simulate the prohibitively complex CTBN dynamics. Existing approximation techniques, such as sampling and low-order variational methods, either scale unfavorably in system size, or are unsatisfactory in terms of accuracy. Inspired by recent advances in statistical physics, we present a new approximation scheme based on cluster-variational methods significantly improving upon existing variational approximations. We can analytically m...
Structured stochastic processes evolving in continuous time present a widely adopted framework to mo...
In this paper we investigate the use of the mean field technique to analyze Continuous Time Bayesian...
We present new algorithms for learning Bayesian networks from data with missing values using a data ...
Continuous-time Bayesian Networks (CTBNs) represent a compact yet powerful framework for understandi...
Continuous Time Bayesian Networks (CTBNs) provide a powerful means to model complex network dynamics...
Continuous time Bayesian networks (CTBN) describe structured stochastic processes with finitely many...
Learning from data ranges between extracting essentials from the data, to the more fundamental and v...
We consider the problem of learning structures and parameters of Continuous-time Bayesian Networks (...
Many real world systems evolve asynchronously in continuous time, for examplecomputer networks, sens...
In this dissertation novel techniques for inference and learning of and decision-making in probabili...
Network inference has been extensively studied in several fields, such as systems biology and social...
We show how to use a variational approximation to the logistic function to perform approximate infer...
This publication offers and investigates efficient Monte Carlo simulation methods in order to realiz...
Structured stochastic processes evolving in continuous time present a widely adopted framework to mo...
Structured stochastic processes evolving in continuous time present a widely adopted framework to mo...
In this paper we investigate the use of the mean field technique to analyze Continuous Time Bayesian...
We present new algorithms for learning Bayesian networks from data with missing values using a data ...
Continuous-time Bayesian Networks (CTBNs) represent a compact yet powerful framework for understandi...
Continuous Time Bayesian Networks (CTBNs) provide a powerful means to model complex network dynamics...
Continuous time Bayesian networks (CTBN) describe structured stochastic processes with finitely many...
Learning from data ranges between extracting essentials from the data, to the more fundamental and v...
We consider the problem of learning structures and parameters of Continuous-time Bayesian Networks (...
Many real world systems evolve asynchronously in continuous time, for examplecomputer networks, sens...
In this dissertation novel techniques for inference and learning of and decision-making in probabili...
Network inference has been extensively studied in several fields, such as systems biology and social...
We show how to use a variational approximation to the logistic function to perform approximate infer...
This publication offers and investigates efficient Monte Carlo simulation methods in order to realiz...
Structured stochastic processes evolving in continuous time present a widely adopted framework to mo...
Structured stochastic processes evolving in continuous time present a widely adopted framework to mo...
In this paper we investigate the use of the mean field technique to analyze Continuous Time Bayesian...
We present new algorithms for learning Bayesian networks from data with missing values using a data ...