Declarative problem solving, such as planning, poses interesting challenges for Genetic Programming (GP). There have been recent attempts to apply GP to planning that fit two approaches: (a) using GP to search in plan space or (b) to evolve a planner. In this article, we propose to evolve only the heuristics to make a particular planner more efficient. This approach is more feasible than (b) because it does not have to build a planner from scratch but can take advantage of already existing planning systems. It is also more efficient than (a) because once the heuristics have been evolved, they can be used to solve a whole class of different planning problems in a planning domain, instead of running GP for every new planning problem. Empirica...
. In this paper we describe SINERGY, which is a highly parallelizable, linear planning system that i...
Abstract. In this paper we describe SINERGY, which is a highly parallelizable, linear planning syste...
This thesis presents a new approach to the Arti cial Intelligence (AI) problem of fully automated p...
Declarative problem solving, such as planning, poses interestig challenges for Genetic Programming ...
Declarative problem solving, such as planning, poses interesting challenges for Genetic Programming ...
Proceeding of: 7th International Conference on Evolutionary Programming, EP98 San Diego, California,...
The purpose of this article is to present a multi-strategy approach to learn heuristics for planning...
AbstractThe purpose of this article is to present a multi-strategy approach to learn heuristics for ...
There are several ways of applying Genetic Programming (GP) to STRIPS-like planning in the literat...
Finding the shortest plan for a given planning problem is extremely hard. We present a domain indepe...
There are many different approaches to solving planning problems, one of which is the use of domain ...
Proceedings of: 15th International Conference on Machine Learning, Madison (Wisconsin, USA), July 24...
This paper describes a genetic planning system, i.e., a program capable of solving planning problems...
In this paper we describe SINERGY, which is a general-purpose, AI planning system that is based on t...
Despite recent progress in planning, many complex domains and even simple domains with large problem...
. In this paper we describe SINERGY, which is a highly parallelizable, linear planning system that i...
Abstract. In this paper we describe SINERGY, which is a highly parallelizable, linear planning syste...
This thesis presents a new approach to the Arti cial Intelligence (AI) problem of fully automated p...
Declarative problem solving, such as planning, poses interestig challenges for Genetic Programming ...
Declarative problem solving, such as planning, poses interesting challenges for Genetic Programming ...
Proceeding of: 7th International Conference on Evolutionary Programming, EP98 San Diego, California,...
The purpose of this article is to present a multi-strategy approach to learn heuristics for planning...
AbstractThe purpose of this article is to present a multi-strategy approach to learn heuristics for ...
There are several ways of applying Genetic Programming (GP) to STRIPS-like planning in the literat...
Finding the shortest plan for a given planning problem is extremely hard. We present a domain indepe...
There are many different approaches to solving planning problems, one of which is the use of domain ...
Proceedings of: 15th International Conference on Machine Learning, Madison (Wisconsin, USA), July 24...
This paper describes a genetic planning system, i.e., a program capable of solving planning problems...
In this paper we describe SINERGY, which is a general-purpose, AI planning system that is based on t...
Despite recent progress in planning, many complex domains and even simple domains with large problem...
. In this paper we describe SINERGY, which is a highly parallelizable, linear planning system that i...
Abstract. In this paper we describe SINERGY, which is a highly parallelizable, linear planning syste...
This thesis presents a new approach to the Arti cial Intelligence (AI) problem of fully automated p...