The monitoring and control of any dynamic system depends crucially on the ability to reason about its current status and its future trajectory. In the case of a stochastic system, these tasks typically involve the use of a belief state—a probability distribution over the state of the process at a given point in time. Unfortunately, the state spaces of complex processes are very large, making an explicit representation of a belief state intractable. Even in dynamic Bayesian networks (DBNs), where the process itself can be represented compactly, the representation of the belief state is intractable. We investigate the idea of maintaining a compact approximation to the true belief state, and analyze the conditions under which the errors due to...
We study the problem of finite-horizon probabilistic invariance for discrete-time Markov processes o...
Dynamic Bayesian networks are factored representations of stochastic processes. Despite their factor...
A new approach to inference in state space models is proposed, based on approximate Bayesian computa...
The monitoring and control of any dynamic system depends crucially on the ability to reason about it...
Inference is a key component in learning probabilistic models from partially observable data. When l...
In recent years, researchers in the A l domain have used Bayesian belief networks to build models o...
To monitor or control a stochastic dynamic system, we need to reason about its current state. Exact ...
We study the problem of finite-horizon probabilistic invariance for discrete-time Markov processes o...
This paper considers the problem of representing complex systems that evolve stochastically over tim...
The continuous time Bayesian network (CTBN) enables temporal reasoning by rep-resenting a system as ...
Bayesian networks are gaining an increasing popularity as a modeling tool for complex problems invol...
Dynamic Bayesian networks are structured representations of stochastic pro-cesses. Despite their str...
A Bayesian network can be used to model consisely the probabilistic knowledge with respect to a give...
In this paper we extend the work of Smith and Papamichail (1999) and present fast approximate Bayesi...
grantor: University of TorontoA common method of inference for belief networks is Gibbs sa...
We study the problem of finite-horizon probabilistic invariance for discrete-time Markov processes o...
Dynamic Bayesian networks are factored representations of stochastic processes. Despite their factor...
A new approach to inference in state space models is proposed, based on approximate Bayesian computa...
The monitoring and control of any dynamic system depends crucially on the ability to reason about it...
Inference is a key component in learning probabilistic models from partially observable data. When l...
In recent years, researchers in the A l domain have used Bayesian belief networks to build models o...
To monitor or control a stochastic dynamic system, we need to reason about its current state. Exact ...
We study the problem of finite-horizon probabilistic invariance for discrete-time Markov processes o...
This paper considers the problem of representing complex systems that evolve stochastically over tim...
The continuous time Bayesian network (CTBN) enables temporal reasoning by rep-resenting a system as ...
Bayesian networks are gaining an increasing popularity as a modeling tool for complex problems invol...
Dynamic Bayesian networks are structured representations of stochastic pro-cesses. Despite their str...
A Bayesian network can be used to model consisely the probabilistic knowledge with respect to a give...
In this paper we extend the work of Smith and Papamichail (1999) and present fast approximate Bayesi...
grantor: University of TorontoA common method of inference for belief networks is Gibbs sa...
We study the problem of finite-horizon probabilistic invariance for discrete-time Markov processes o...
Dynamic Bayesian networks are factored representations of stochastic processes. Despite their factor...
A new approach to inference in state space models is proposed, based on approximate Bayesian computa...