One of the current challenges in artificial intelligence is modeling dynamic environments that change due to the actions or activities undertaken by people or agents. The task of inferring hidden states, e.g. the activities or intentions of people, based on observations is called filtering. Standard probabilistic models such as Dynamic Bayesian Networks are able to solve this task efficiently using approximative methods such as particle filters. However, these models do not support logical or relational representations. The key contribution of this paper is the upgrade of a particle filter algorithm for use with a probabilistic logical representation through the definition of a proposal distribution. The performance of the algorithm depends...
The brain must make inferences about, and decisions concerning, a highly complex and unpredictable w...
In multi-agent systems, the knowledge of agents about other agents??? knowledge often plays a pivota...
Strong and weak simulation relations have been proposed for Markov chains,while strong simulation an...
One of the current challenges in artificial intelligence is modeling dynamic environments that chang...
Abstract. There is currently a large interest in probabilistic logical models. A popu-lar algorithm ...
There is currently a large interest in probabilistic logical models. A popular algorithm for approxi...
We propose a probabilistic logic programming framework for the state estimation problem in dynamic r...
We introduce a probabilistic logic programming framework to handle continuous distributions as well ...
Probabilistic Logic Programming is receiving an increasing attention for its ability to model domain...
An important issue in artificial intelligence and many other fields is modeling the domain of intere...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
Probabilistic Logic Programming is receiving an increasing attention for its ability to model domain...
Abstract. Analysis of biological sequence data demands more and more sophisticated and fine-grained ...
Probabilistic inference is an attractive approach to uncertain reasoning and em-pirical learning in ...
Many real-world phenomena exhibit both relational structure and uncertainty. Probabilistic Inductive...
The brain must make inferences about, and decisions concerning, a highly complex and unpredictable w...
In multi-agent systems, the knowledge of agents about other agents??? knowledge often plays a pivota...
Strong and weak simulation relations have been proposed for Markov chains,while strong simulation an...
One of the current challenges in artificial intelligence is modeling dynamic environments that chang...
Abstract. There is currently a large interest in probabilistic logical models. A popu-lar algorithm ...
There is currently a large interest in probabilistic logical models. A popular algorithm for approxi...
We propose a probabilistic logic programming framework for the state estimation problem in dynamic r...
We introduce a probabilistic logic programming framework to handle continuous distributions as well ...
Probabilistic Logic Programming is receiving an increasing attention for its ability to model domain...
An important issue in artificial intelligence and many other fields is modeling the domain of intere...
Thesis: Ph. D., Massachusetts Institute of Technology, Department of Brain and Cognitive Sciences, 2...
Probabilistic Logic Programming is receiving an increasing attention for its ability to model domain...
Abstract. Analysis of biological sequence data demands more and more sophisticated and fine-grained ...
Probabilistic inference is an attractive approach to uncertain reasoning and em-pirical learning in ...
Many real-world phenomena exhibit both relational structure and uncertainty. Probabilistic Inductive...
The brain must make inferences about, and decisions concerning, a highly complex and unpredictable w...
In multi-agent systems, the knowledge of agents about other agents??? knowledge often plays a pivota...
Strong and weak simulation relations have been proposed for Markov chains,while strong simulation an...