Bounding the partition function is a key inference task in many graphical models. In this paper, we develop an anytime anyspace search algorithm taking advantage of AND/OR tree structure and optimized variational heuristics to tighten deterministic bounds on the partition function. We study how our priority-driven best-first search scheme can improve on state-of-the-art variational bounds in an anytime way within limited memory resources, as well as the effect of the AND/OR framework to exploit conditional independence structure within the search process within the context of summation. We compare our resulting bounds to a number of existing methods, and show that our approach offers a number of advantages on real-world problem instances ta...
In this paper we explore a novel approach for anytime heuris-tic search, in which the node that is m...
Anytime search is a pragmatic approach for trading solution cost and solving time. It can also be us...
In this paper we explore a novel approach for anytime heuristic search, in which the node that is mo...
Marginal MAP is a key task in Bayesian inference and decision-making. It is known to be very difficu...
Graphical models are a powerful framework for modeling interactions within complex systems. Reasonin...
One popular and efficient scheme for solving exactly combinatorial optimization problems over graphi...
We introduce new anytime search algorithms that combine best-first with depth-first search into hybr...
We describe how to convert the heuristic search algorithm A * into an anytime algorithm that finds a...
Abstract Heuristic search is one of the fundamental problem solving techniques in Artificial Intelli...
Marginal MAP is a difficult mixed inference task for graphical models. Existing state-of-the-art sol...
This paper explores the anytime performance of search-based algorithms for solving the Marginal MAP ...
Best-first search can be regarded as anytime scheme for producing lower bounds on the optimal soluti...
This paper presents a new anytime algorithm for the marginal MAP problem in graphical models of boun...
Anytime search is a pragmatic approach for trading solution cost and solving time. It can also be u...
Graphical models are widely used to model complex interactions between variables. A graphical model ...
In this paper we explore a novel approach for anytime heuris-tic search, in which the node that is m...
Anytime search is a pragmatic approach for trading solution cost and solving time. It can also be us...
In this paper we explore a novel approach for anytime heuristic search, in which the node that is mo...
Marginal MAP is a key task in Bayesian inference and decision-making. It is known to be very difficu...
Graphical models are a powerful framework for modeling interactions within complex systems. Reasonin...
One popular and efficient scheme for solving exactly combinatorial optimization problems over graphi...
We introduce new anytime search algorithms that combine best-first with depth-first search into hybr...
We describe how to convert the heuristic search algorithm A * into an anytime algorithm that finds a...
Abstract Heuristic search is one of the fundamental problem solving techniques in Artificial Intelli...
Marginal MAP is a difficult mixed inference task for graphical models. Existing state-of-the-art sol...
This paper explores the anytime performance of search-based algorithms for solving the Marginal MAP ...
Best-first search can be regarded as anytime scheme for producing lower bounds on the optimal soluti...
This paper presents a new anytime algorithm for the marginal MAP problem in graphical models of boun...
Anytime search is a pragmatic approach for trading solution cost and solving time. It can also be u...
Graphical models are widely used to model complex interactions between variables. A graphical model ...
In this paper we explore a novel approach for anytime heuris-tic search, in which the node that is m...
Anytime search is a pragmatic approach for trading solution cost and solving time. It can also be us...
In this paper we explore a novel approach for anytime heuristic search, in which the node that is mo...