Recently, a Euclidean heuristic (EH) has been proposed for A* search. EH exploits manifold learning methods to construct an embedding of the state space graph, and derives an admissible heuristic distance between two states from the Euclidean distance between their respective embedded points. EH has shown good performance and memory efficiency in comparison to other existing heuristics such as differential heuristics. However, its potential has not been fully explored. In this paper, we propose a number of techniques that can significantly improve the quality of EH. We propose a goal-oriented manifold learning scheme that optimizes the Euclidean distance to goals in the embedding while maintaining admissibility and consistency. We also prop...
If a state space is not completely known in advance, then search algorithms have to explore it suffi...
Belief space search is a technique for solving planning problems characterized by incomplete state ...
Real-time search methods allow an agent to perform path-finding tasks in unknown environments. Some ...
An important problem in AI is to construct high-quality heuristics for optimal search. Recently, the...
We pose the problem of constructing good search heuristics as an optimization problem: minimizing th...
True distance memory-based heuristics (TDHs) were recently introduced as a way to obtain admissible ...
True distance memory-based heuristics (TDHs) were recently introduced as a way to obtain admissible ...
This research studies the feasibility of applying heuristic learning algorithm in artificial intelli...
[[abstract]]This paper presents a solution approach for addressing travelling salesman problems by a...
AbstractWe investigate the use of machine learning to create effective heuristics for search algorit...
Our goal is to automatically generate heuristics to guide state space search. The heuristic values a...
Heuristic search is a key component of automated planning and pathfinding. It is guided by a heurist...
In this paper we explore the challenges surrounding searching effectively in problems with preferenc...
This thesis explores limitations of heuristic search planning, and presents techniques to overcome t...
Pattern Databases (PDBs) are the most common form of memory-based heuristics, and they have been wid...
If a state space is not completely known in advance, then search algorithms have to explore it suffi...
Belief space search is a technique for solving planning problems characterized by incomplete state ...
Real-time search methods allow an agent to perform path-finding tasks in unknown environments. Some ...
An important problem in AI is to construct high-quality heuristics for optimal search. Recently, the...
We pose the problem of constructing good search heuristics as an optimization problem: minimizing th...
True distance memory-based heuristics (TDHs) were recently introduced as a way to obtain admissible ...
True distance memory-based heuristics (TDHs) were recently introduced as a way to obtain admissible ...
This research studies the feasibility of applying heuristic learning algorithm in artificial intelli...
[[abstract]]This paper presents a solution approach for addressing travelling salesman problems by a...
AbstractWe investigate the use of machine learning to create effective heuristics for search algorit...
Our goal is to automatically generate heuristics to guide state space search. The heuristic values a...
Heuristic search is a key component of automated planning and pathfinding. It is guided by a heurist...
In this paper we explore the challenges surrounding searching effectively in problems with preferenc...
This thesis explores limitations of heuristic search planning, and presents techniques to overcome t...
Pattern Databases (PDBs) are the most common form of memory-based heuristics, and they have been wid...
If a state space is not completely known in advance, then search algorithms have to explore it suffi...
Belief space search is a technique for solving planning problems characterized by incomplete state ...
Real-time search methods allow an agent to perform path-finding tasks in unknown environments. Some ...