Heuristic search algorithms are widely used in both AI planning and the decoding of sequences from deep neural networks. In recent years, several lines of work have highlighted different factors that impact the empirical performance of heuristic search algorithms. However, a principled empirical understanding of the search behavior of these heuristic search algorithms has yet to be developed. Empirical models, such as the phase transition and the heavy-tailed behavior, have been central to the development of empirical understanding of combinatorial search problems such as constraint satisfaction problems (CSP) and satisfiability (SAT). In this dissertation, we investigate the use of empirical models to explain the behavior of heuristic sear...
We present an evaluation of different AI search paradigms applied to a natural planning problem. The...
State space search solves navigation tasks and many other real world problems. Heuristic search, esp...
Heuristic search is a successful approach to cost-optimal planning. Bidirectional heuristic search a...
Search has been vital to artificial intelligence from the very beginning as a core technique in prob...
Heuristic forward search is currently the dominant paradigm in classical planning. Forward search al...
Search in general, and heuristic search in particular, is at the heart of many Artificial Intelligen...
In the AIPS98 Planning Contest, the hsp planner showed that heuristic search planners can be competi...
AbstractIn the AIPS98 Planning Contest, the hsp planner showed that heuristic search planners can be...
This thesis explores limitations of heuristic search planning, and presents techniques to overcome t...
It is well-known that while strict admissibility of heuristics in problem solving guarantees the opt...
Work in machine learning has grown tremendously in the past years, but has had little to no impact o...
Optimal heuristic searches such as A * search are widely used for planning but can rarely scale to l...
Heuristic functions play an important role in drastically improving performance of satisficing plann...
A major difficulty in a search-based problem-solving process is the task of searching the potentiall...
AbstractWe investigate the use of machine learning to create effective heuristics for search algorit...
We present an evaluation of different AI search paradigms applied to a natural planning problem. The...
State space search solves navigation tasks and many other real world problems. Heuristic search, esp...
Heuristic search is a successful approach to cost-optimal planning. Bidirectional heuristic search a...
Search has been vital to artificial intelligence from the very beginning as a core technique in prob...
Heuristic forward search is currently the dominant paradigm in classical planning. Forward search al...
Search in general, and heuristic search in particular, is at the heart of many Artificial Intelligen...
In the AIPS98 Planning Contest, the hsp planner showed that heuristic search planners can be competi...
AbstractIn the AIPS98 Planning Contest, the hsp planner showed that heuristic search planners can be...
This thesis explores limitations of heuristic search planning, and presents techniques to overcome t...
It is well-known that while strict admissibility of heuristics in problem solving guarantees the opt...
Work in machine learning has grown tremendously in the past years, but has had little to no impact o...
Optimal heuristic searches such as A * search are widely used for planning but can rarely scale to l...
Heuristic functions play an important role in drastically improving performance of satisficing plann...
A major difficulty in a search-based problem-solving process is the task of searching the potentiall...
AbstractWe investigate the use of machine learning to create effective heuristics for search algorit...
We present an evaluation of different AI search paradigms applied to a natural planning problem. The...
State space search solves navigation tasks and many other real world problems. Heuristic search, esp...
Heuristic search is a successful approach to cost-optimal planning. Bidirectional heuristic search a...