In this paper we explore a novel approach for anytime heuristic search, in which the node that is most probable to improve the incumbent solution is expanded first. This is especially suited for the "anytime aspect" of anytime algorithms - the possibility that the algorithm will be be halted anytime throughout the search. The potential of a node to improve the incumbent solution is estimated by a custom cost function, resulting in Potential Search, an anytime best-first search. Experimental results on the 15-puzzle and on the key player problem in communication networks (KPP-COM) show that this approach is competitive with state-of-the-art anytime heuristic search algorithms, and is more robust
This paper describes a new approach to anytime heuristic search based on local search in the space o...
Exact algorithms for learning Bayesian networks guarantee to find provably optimal networks. However...
This paper explores the anytime performance of search-based algorithms for solving the Marginal MAP ...
In this paper we explore a novel approach for anytime heuris-tic search, in which the node that is m...
We describe how to convert the heuristic search algorithm A * into an anytime algorithm that finds a...
Anytime search is a pragmatic approach for trading solution cost and solving time. It can also be u...
Anytime search is a pragmatic approach for trading solution cost and solving time. It can also be us...
Anytime search algorithms solve optimisation problems by quickly finding a (usually suboptimal) firs...
This paper presents two new search algorithms: Potential Search (PTS) and Anytime Potential Search/A...
Abstract Heuristic search is one of the fundamental problem solving techniques in Artificial Intelli...
In this paper we address the following search task: find a goal with cost smaller than or equal to a...
Colloque avec actes et comité de lecture. internationale.International audienceWe describe in this p...
This paper presents a new anytime search algorithm, anytime explicitestimation search (AEES). AEES i...
Incremental heuristic searches reuse their previous search efforts to speed up the current search. A...
This work presents an iterative anytime heuristic search algorithm called Anytime Window A* (AWA*) w...
This paper describes a new approach to anytime heuristic search based on local search in the space o...
Exact algorithms for learning Bayesian networks guarantee to find provably optimal networks. However...
This paper explores the anytime performance of search-based algorithms for solving the Marginal MAP ...
In this paper we explore a novel approach for anytime heuris-tic search, in which the node that is m...
We describe how to convert the heuristic search algorithm A * into an anytime algorithm that finds a...
Anytime search is a pragmatic approach for trading solution cost and solving time. It can also be u...
Anytime search is a pragmatic approach for trading solution cost and solving time. It can also be us...
Anytime search algorithms solve optimisation problems by quickly finding a (usually suboptimal) firs...
This paper presents two new search algorithms: Potential Search (PTS) and Anytime Potential Search/A...
Abstract Heuristic search is one of the fundamental problem solving techniques in Artificial Intelli...
In this paper we address the following search task: find a goal with cost smaller than or equal to a...
Colloque avec actes et comité de lecture. internationale.International audienceWe describe in this p...
This paper presents a new anytime search algorithm, anytime explicitestimation search (AEES). AEES i...
Incremental heuristic searches reuse their previous search efforts to speed up the current search. A...
This work presents an iterative anytime heuristic search algorithm called Anytime Window A* (AWA*) w...
This paper describes a new approach to anytime heuristic search based on local search in the space o...
Exact algorithms for learning Bayesian networks guarantee to find provably optimal networks. However...
This paper explores the anytime performance of search-based algorithms for solving the Marginal MAP ...