. In this paper we describe SINERGY, which is a highly parallelizable, linear planning system that is based on the genetic programming paradigm. Rather than reasoning about the world it is planning for, SINERGY uses artificial selection, recombination and fitness measure to generate linear plans that solve conjunctive goals. We ran SINERGY on several domains (e.g., the briefcase problem and a few variants of the robot navigation problem), and the experimental results show that our planner is capable of handling problem instances that are one to two orders of magnitude larger than the ones solved by UCPOP. In order to facilitate the search reduction and to enhance the expressive power of SINERGY, we also propose two major extensions to our p...
Planning is one of the fundamental problems of artificial intelligence. A classic planning problem ...
Introduction Genetic programming is a domain-independent problem-solving approach in which computer ...
This thesis presents a new approach to the Arti cial Intelligence (AI) problem of fully automated p...
Abstract. In this paper we describe SINERGY, which is a highly parallelizable, linear planning syste...
In this paper we describe SINERGY, which is a general-purpose, AI planning system that is based on t...
Declarative problem solving, such as planning, poses interesting challenges for Genetic Programming ...
Declarative problem solving, such as planning, poses interestig challenges for Genetic Programming ...
Robot path planning can refer either to a mobile vehicle such as a Mars Rover, or to an end effector...
The selection of what to do next is often the hardest part of resource-limited problem solving. In p...
The purpose of this article is to present a multi-strategy approach to learn heuristics for planning...
Hierarchical planners distinguish between important considerations and details. A hierarchical plann...
The relatively ‘new’ field of genetic programming has received a lot of attention during the last fe...
There are several ways of applying Genetic Programming (GP) to STRIPS-like planning in the literat...
AbstractThe purpose of this article is to present a multi-strategy approach to learn heuristics for ...
This paper describes a genetic planning system, i.e., a program capable of solving planning problems...
Planning is one of the fundamental problems of artificial intelligence. A classic planning problem ...
Introduction Genetic programming is a domain-independent problem-solving approach in which computer ...
This thesis presents a new approach to the Arti cial Intelligence (AI) problem of fully automated p...
Abstract. In this paper we describe SINERGY, which is a highly parallelizable, linear planning syste...
In this paper we describe SINERGY, which is a general-purpose, AI planning system that is based on t...
Declarative problem solving, such as planning, poses interesting challenges for Genetic Programming ...
Declarative problem solving, such as planning, poses interestig challenges for Genetic Programming ...
Robot path planning can refer either to a mobile vehicle such as a Mars Rover, or to an end effector...
The selection of what to do next is often the hardest part of resource-limited problem solving. In p...
The purpose of this article is to present a multi-strategy approach to learn heuristics for planning...
Hierarchical planners distinguish between important considerations and details. A hierarchical plann...
The relatively ‘new’ field of genetic programming has received a lot of attention during the last fe...
There are several ways of applying Genetic Programming (GP) to STRIPS-like planning in the literat...
AbstractThe purpose of this article is to present a multi-strategy approach to learn heuristics for ...
This paper describes a genetic planning system, i.e., a program capable of solving planning problems...
Planning is one of the fundamental problems of artificial intelligence. A classic planning problem ...
Introduction Genetic programming is a domain-independent problem-solving approach in which computer ...
This thesis presents a new approach to the Arti cial Intelligence (AI) problem of fully automated p...