There are many different approaches to solving planning problems, one of which is the use of domain specific control knowledge to help guide a domain independent search algorithm. This paper presents L2Plan which represents this control knowledge as an ordered set of control rules, called a policy, and learns using genetic programming. The genetic program’s crossover and mutation operators are augmented by a simple local search. L2Plan was tested on both the blocks world and briefcase domains. In both domains, L2Plan was able to produce policies that solved all the test problems and which outperformed the hand-coded policies written by the authors
Intelligent Planning and Machine Learning are two hot topics in AI research field. Integrated resear...
In this paper we describe SINERGY, which is a general-purpose, AI planning system that is based on t...
This work investigates the application of Evolutionary Computation (EC) to the induction of generali...
There are many different approaches to solving planning problems, one of which is the use of domain ...
AbstractThe purpose of this article is to present a multi-strategy approach to learn heuristics for ...
Declarative problem solving, such as planning, poses interesting challenges for Genetic Programming ...
The purpose of this article is to present a multi-strategy approach to learn heuristics for planning...
Declarative problem solving, such as planning, poses interestig challenges for Genetic Programming ...
Despite recent progress in planning, many complex domains and even simple domains with large problem...
This paper reports on experiments where techniques of supervised machine learning are applied to the...
Proceedings of: 15th International Conference on Machine Learning, Madison (Wisconsin, USA), July 24...
Despite recent progress in planning, many complex domains and even larger problems in simple domains...
Despite recent progress in planning, many complex domains and even larger problems in simple domains...
Many complex domains and even larger problems in simple domains remain challenging in spite of the r...
Finding the shortest plan for a given planning problem is extremely hard. We present a domain indepe...
Intelligent Planning and Machine Learning are two hot topics in AI research field. Integrated resear...
In this paper we describe SINERGY, which is a general-purpose, AI planning system that is based on t...
This work investigates the application of Evolutionary Computation (EC) to the induction of generali...
There are many different approaches to solving planning problems, one of which is the use of domain ...
AbstractThe purpose of this article is to present a multi-strategy approach to learn heuristics for ...
Declarative problem solving, such as planning, poses interesting challenges for Genetic Programming ...
The purpose of this article is to present a multi-strategy approach to learn heuristics for planning...
Declarative problem solving, such as planning, poses interestig challenges for Genetic Programming ...
Despite recent progress in planning, many complex domains and even simple domains with large problem...
This paper reports on experiments where techniques of supervised machine learning are applied to the...
Proceedings of: 15th International Conference on Machine Learning, Madison (Wisconsin, USA), July 24...
Despite recent progress in planning, many complex domains and even larger problems in simple domains...
Despite recent progress in planning, many complex domains and even larger problems in simple domains...
Many complex domains and even larger problems in simple domains remain challenging in spite of the r...
Finding the shortest plan for a given planning problem is extremely hard. We present a domain indepe...
Intelligent Planning and Machine Learning are two hot topics in AI research field. Integrated resear...
In this paper we describe SINERGY, which is a general-purpose, AI planning system that is based on t...
This work investigates the application of Evolutionary Computation (EC) to the induction of generali...