This chapter is concerned with the enhancement of planning systems using techniques from Machine Learning in order to automatically configure their planning parameters according to the morphology of the problem in hand. It presents two different adaptive systems that set the planning parameters of a highly adjustable planner based on measurable characteristics of the problem instance. The planners have acquired their knowledge from a large data set produced by results from experiments on many problems from various domains. The first planner is a rule-based system that employs propositional rule learning to induce knowledge that suggests effective configuration of planning parameters based on the problem's characteristics. The second pl...
Machine learning (ML) is often used to obtain control knowledge to improve planning efficiency. Usua...
An intelligent agent must be capable of using its past experience to develop an understanding of how...
One of the latest advances for solving classical planning prob-lems is the development of new approa...
This paper presents an adaptive planning system, called HAPRC, which automatically fine-tunes its pl...
This paper reports on experiments where techniques of supervised machine learning are applied to the...
Recent discoveries in automated planning are broadening the scope of planners, from toy problems to ...
Abstract. This paper describes a learning system for the auto-matic configuration of domain independ...
Outlines an experimental machine learning implementation, called `FM', that applies both explanation...
Attempts to apply classical planning techniques to realistic environments have met with two major d...
International audienceAutomated planning has been a continuous field of study since the 1960s, since...
Domain independent general purpose problem solving techniques are desirable from the standpoints of ...
As any other problem solving task that employs search, AI Planning needs heuristics to efficiently g...
AbstractDomain independent general purpose problem solving techniques are desirable from the standpo...
We consider techniques for learning to plan in deterministic and stochastic Artificial Intelligence ...
As any other problem solving task that employs search, AI Planning needs heuristics to efficiently g...
Machine learning (ML) is often used to obtain control knowledge to improve planning efficiency. Usua...
An intelligent agent must be capable of using its past experience to develop an understanding of how...
One of the latest advances for solving classical planning prob-lems is the development of new approa...
This paper presents an adaptive planning system, called HAPRC, which automatically fine-tunes its pl...
This paper reports on experiments where techniques of supervised machine learning are applied to the...
Recent discoveries in automated planning are broadening the scope of planners, from toy problems to ...
Abstract. This paper describes a learning system for the auto-matic configuration of domain independ...
Outlines an experimental machine learning implementation, called `FM', that applies both explanation...
Attempts to apply classical planning techniques to realistic environments have met with two major d...
International audienceAutomated planning has been a continuous field of study since the 1960s, since...
Domain independent general purpose problem solving techniques are desirable from the standpoints of ...
As any other problem solving task that employs search, AI Planning needs heuristics to efficiently g...
AbstractDomain independent general purpose problem solving techniques are desirable from the standpo...
We consider techniques for learning to plan in deterministic and stochastic Artificial Intelligence ...
As any other problem solving task that employs search, AI Planning needs heuristics to efficiently g...
Machine learning (ML) is often used to obtain control knowledge to improve planning efficiency. Usua...
An intelligent agent must be capable of using its past experience to develop an understanding of how...
One of the latest advances for solving classical planning prob-lems is the development of new approa...