Abstract. Recent algorithms for model counting and compilation work by decomposing a CNF into syntactically independent components through variable splitting, and then solving the components recursively and independently. In this paper, we observe that syntactic component analysis can miss decomposition opportunities because the syntax may hide existing semantic independence, leading to unnecessary variable splitting. Moreover, we show that by applying a limited resolution strategy to the CNF prior to inference, one can transform the CNF to syntactically reveal such semantic independence. We describe a general resolution strategy for this purpose, and a more specific one that utilizes problem– specific structure. We apply our proposed techn...
Computing many useful properties of Boolean formulas, such as their weighted or unweighted model cou...
Abstract. We present novel approaches to detect cardinality constraints expressed in CNF. The first ...
Bayesian networks (BNs) are highly practical and successful tools for modeling probabilistic knowled...
Recent algorithms for model counting and compilation work by decomposing a CNF into syntactically in...
Bayesian networks (BN) are a popular representation for reasoning under uncertainty. The analysis of...
This paper presents a new approach to inference in Bayesian networks with Boolean variables. The pri...
AbstractA recent and effective approach to probabilistic inference calls for reducing the problem to...
A recent and effective approach to probabilistic inference calls for reducing the problem to one of ...
Compiling Bayesian networks has proven an effective approach for inference that can utilize both glo...
Bayesian belief networks have grown to prominence because they provide compact representations for m...
AbstractDynamic Bayesian networks (DBNs) can be effectively used to model various problems in comple...
Belief networks (BNs) extracted from statistical relational learning formalisms often include variab...
Within the field of Artificial Intelligence, there is a lot of interest in combining probability and...
Traditional noun phrase coreference resolution systems represent features only of pairs of noun phra...
Probabilistic logic programs are logic programs in which some of the facts are annotated with probab...
Computing many useful properties of Boolean formulas, such as their weighted or unweighted model cou...
Abstract. We present novel approaches to detect cardinality constraints expressed in CNF. The first ...
Bayesian networks (BNs) are highly practical and successful tools for modeling probabilistic knowled...
Recent algorithms for model counting and compilation work by decomposing a CNF into syntactically in...
Bayesian networks (BN) are a popular representation for reasoning under uncertainty. The analysis of...
This paper presents a new approach to inference in Bayesian networks with Boolean variables. The pri...
AbstractA recent and effective approach to probabilistic inference calls for reducing the problem to...
A recent and effective approach to probabilistic inference calls for reducing the problem to one of ...
Compiling Bayesian networks has proven an effective approach for inference that can utilize both glo...
Bayesian belief networks have grown to prominence because they provide compact representations for m...
AbstractDynamic Bayesian networks (DBNs) can be effectively used to model various problems in comple...
Belief networks (BNs) extracted from statistical relational learning formalisms often include variab...
Within the field of Artificial Intelligence, there is a lot of interest in combining probability and...
Traditional noun phrase coreference resolution systems represent features only of pairs of noun phra...
Probabilistic logic programs are logic programs in which some of the facts are annotated with probab...
Computing many useful properties of Boolean formulas, such as their weighted or unweighted model cou...
Abstract. We present novel approaches to detect cardinality constraints expressed in CNF. The first ...
Bayesian networks (BNs) are highly practical and successful tools for modeling probabilistic knowled...