acceptance rate 34%In recent years, there has been considerable progress on fast randomized algorithms that ap- proximate probabilistic inference with tight toler- ance and confidence guarantees. The idea here is to formulate inference as a counting task over an annotated propositional theory, called weighted model counting (WMC), which can be parti- tioned into smaller tasks using universal hashing. An inherent limitation of this approach, how- ever, is that it only admits the inference of dis- crete probability distributions. In this work, we consider the problem of approximating inference tasks for a probability distribution defined over discrete and continuous random variables. Build- ing on a notion called weighted model integra- tion,...
Probabilistic inference can be realized using weighted model counting. Despite a lot of progress, co...
A promising approach to probabilistic inference that has attracted recent attention exploits its red...
Probabilistic logics combine the expressive power of logic with the ability to reason with uncertain...
In recent years, there has been considerable progress on fast randomized algorithms that ap- proxima...
In recent years, there has been considerable progress on fast randomized algorithms that ap-proximat...
In recent years, there has been considerable progress on fast randomized algorithms that approximate...
28.8% acceptance rateWeighted model counting (WMC) on a propositional knowledge base is an effective...
Weighted model counting (WMC) on a propositional knowledge base is an effective and general approach...
Probabilistic inference can be realized using weighted model counting. Despite a lot of progress, co...
AbstractA recent and effective approach to probabilistic inference calls for reducing the problem to...
Hashing-based model counting has emerged as a promising approach for large-scale probabilistic infer...
Probabilistic inference via model counting has emerged as a scalable technique with strong formal gu...
In probabilistic reasoning, the traditionally discrete domain has been elevated to the hybrid domain...
A recent and effective approach to probabilistic inference calls for reducing the problem to one of ...
Weighted model counting, that is, counting the weighted number of satisfying assignments of a propos...
Probabilistic inference can be realized using weighted model counting. Despite a lot of progress, co...
A promising approach to probabilistic inference that has attracted recent attention exploits its red...
Probabilistic logics combine the expressive power of logic with the ability to reason with uncertain...
In recent years, there has been considerable progress on fast randomized algorithms that ap- proxima...
In recent years, there has been considerable progress on fast randomized algorithms that ap-proximat...
In recent years, there has been considerable progress on fast randomized algorithms that approximate...
28.8% acceptance rateWeighted model counting (WMC) on a propositional knowledge base is an effective...
Weighted model counting (WMC) on a propositional knowledge base is an effective and general approach...
Probabilistic inference can be realized using weighted model counting. Despite a lot of progress, co...
AbstractA recent and effective approach to probabilistic inference calls for reducing the problem to...
Hashing-based model counting has emerged as a promising approach for large-scale probabilistic infer...
Probabilistic inference via model counting has emerged as a scalable technique with strong formal gu...
In probabilistic reasoning, the traditionally discrete domain has been elevated to the hybrid domain...
A recent and effective approach to probabilistic inference calls for reducing the problem to one of ...
Weighted model counting, that is, counting the weighted number of satisfying assignments of a propos...
Probabilistic inference can be realized using weighted model counting. Despite a lot of progress, co...
A promising approach to probabilistic inference that has attracted recent attention exploits its red...
Probabilistic logics combine the expressive power of logic with the ability to reason with uncertain...