We introduce an approximate search algorithm for fast maximum a posteriori probability estimation in probabilistic programs, which we call Bayesian ascent Monte Carlo (BaMC). Probabilistic programs represent probabilistic models with varying number of mutually dependent finite, countable, and continuous random variables. BaMC is an anytime MAP search algorithm applicable to any combination of random variables and dependencies. We compare BaMC to other MAP estimation algorithms and show that BaMC is faster and more robust on a range of probabilistic models
Much current research in AI and games is being devoted to Monte Carlo search (MCS) algorithms. While...
Probabilistic programming uses programs to express generative models whose posterior probability is ...
Probabilistic logic programming can be used to model domains with complex and uncertain relationship...
We introduce an approximate search algorithm for fast maximum a posteriori probability estimation in...
Abstract—Much current research in AI and games is being devoted to Monte Carlo search (MCS) algorith...
Online solvers for partially observable Markov decision processes have difficulty scaling to problem...
We show that maximum a posteriori (MAP) statistical methods can be used in nonparametric machine lea...
We outline a general purpose framework for black-box marginal maximum a pos- teriori estimation of p...
Abstract—Much current research in AI and games is being devoted to Monte Carlo search (MCS) algorith...
An efficient method for finding a better maximizer of computationally extensive probability distribu...
In many estimation problems, the set of unknown parameters can be divided into a subset of desired p...
This paper provides a search-based algorithm for computing prior and posterior probabilities in disc...
Graduation date: 2010This thesis presents a progression of novel planning algorithms that culminates...
Automatic decision making and pattern recognition under uncertainty are difficult tasks that are ubi...
The expectation-maximization (EM) algorithm is a popular tool for maximizing likelihood functions in...
Much current research in AI and games is being devoted to Monte Carlo search (MCS) algorithms. While...
Probabilistic programming uses programs to express generative models whose posterior probability is ...
Probabilistic logic programming can be used to model domains with complex and uncertain relationship...
We introduce an approximate search algorithm for fast maximum a posteriori probability estimation in...
Abstract—Much current research in AI and games is being devoted to Monte Carlo search (MCS) algorith...
Online solvers for partially observable Markov decision processes have difficulty scaling to problem...
We show that maximum a posteriori (MAP) statistical methods can be used in nonparametric machine lea...
We outline a general purpose framework for black-box marginal maximum a pos- teriori estimation of p...
Abstract—Much current research in AI and games is being devoted to Monte Carlo search (MCS) algorith...
An efficient method for finding a better maximizer of computationally extensive probability distribu...
In many estimation problems, the set of unknown parameters can be divided into a subset of desired p...
This paper provides a search-based algorithm for computing prior and posterior probabilities in disc...
Graduation date: 2010This thesis presents a progression of novel planning algorithms that culminates...
Automatic decision making and pattern recognition under uncertainty are difficult tasks that are ubi...
The expectation-maximization (EM) algorithm is a popular tool for maximizing likelihood functions in...
Much current research in AI and games is being devoted to Monte Carlo search (MCS) algorithms. While...
Probabilistic programming uses programs to express generative models whose posterior probability is ...
Probabilistic logic programming can be used to model domains with complex and uncertain relationship...