We introduce the concept of generalized probabilistic queries in Dynamic Bayesian Networks (DBN) — computing P (φ1|φ2), where φi is a formula in temporal logic encoding an equivalence class of trajectories through the variables of the model. Generalized queries include as special cases traditional query types for DBNs (i.e., filtering, smoothing, prediction, and classification), but can also be used to express inference problems that are either impossible, or impractical to answer using traditional algorithms for inference in DBNs. We then discuss the relationship between answering generalized queries and the Probabilistic Model Checking Problem and introduce two novel algorithms for efficiently estimating P (φ1|φ2) in a Bayesian fashion. ...
This paper provides a search-based algorithm for computing prior and posterior probabilities in disc...
Today, ontologies are the standard for representing knowledge about concepts and relations among con...
This thesis concentrates on specifying dynamic probabilistic models and their application in the fie...
We introduce the concept of generalized probabilistic queries in Dynamic Bayesian Networks (DBN) - c...
Traditional databases commonly support ecient query and update procedures that operate in time which...
This report introduces a novel approach to performing inference and learning inDynamic Bayesian Netw...
This thesis explores and compares different methods of optimizing queries in Bayesian networks. Baye...
This paper introduces novel techniques for exact and approximate inference in Dynamic Bayesian Netwo...
Dynamic Bayesian Networks (DBNs) are temporal probabilistic models for reasoning over time. They oft...
Abstract. Probabilistic reasoning in Bayesian networks is normally conducted on a junction tree by r...
Diagnosis has been traditionally one of the most successful applications of Bayesian networks. The ...
For many clinical problems in patients the underlying pathophysiological process changes in the cour...
This thesis presents a new probability-based framework which exploits existing domain knowledge in t...
Bayesian networks (BN) are a valid method to analyze causal dependencies with uncertainties and to c...
Temporal data abstraction (TA) is a set of techniques aiming to abstract time-points into higher-lev...
This paper provides a search-based algorithm for computing prior and posterior probabilities in disc...
Today, ontologies are the standard for representing knowledge about concepts and relations among con...
This thesis concentrates on specifying dynamic probabilistic models and their application in the fie...
We introduce the concept of generalized probabilistic queries in Dynamic Bayesian Networks (DBN) - c...
Traditional databases commonly support ecient query and update procedures that operate in time which...
This report introduces a novel approach to performing inference and learning inDynamic Bayesian Netw...
This thesis explores and compares different methods of optimizing queries in Bayesian networks. Baye...
This paper introduces novel techniques for exact and approximate inference in Dynamic Bayesian Netwo...
Dynamic Bayesian Networks (DBNs) are temporal probabilistic models for reasoning over time. They oft...
Abstract. Probabilistic reasoning in Bayesian networks is normally conducted on a junction tree by r...
Diagnosis has been traditionally one of the most successful applications of Bayesian networks. The ...
For many clinical problems in patients the underlying pathophysiological process changes in the cour...
This thesis presents a new probability-based framework which exploits existing domain knowledge in t...
Bayesian networks (BN) are a valid method to analyze causal dependencies with uncertainties and to c...
Temporal data abstraction (TA) is a set of techniques aiming to abstract time-points into higher-lev...
This paper provides a search-based algorithm for computing prior and posterior probabilities in disc...
Today, ontologies are the standard for representing knowledge about concepts and relations among con...
This thesis concentrates on specifying dynamic probabilistic models and their application in the fie...