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Showing papers by "Malik Ghallab published in 2002"


Journal Article
TL;DR: An approach and a system, called robel, that enables a designer to specify and build a robot supervision system which learns from experience very robust ways of performing a task such as "navigate to".
Abstract: We are proposing here an approach and a system, called ROBEL, that enables a designer to specify and build a robot supervision system which learns from experience very robust ways of performing a task such as navigate to. The designer specifies a collection of Hierarchical Tasks Networks (HTN) that are complex plans, called modalities, whose primitives are sensory-motor functions. Each modality is a possible combination these functions for achieving the task. The relationship between supervision states and the appropriate modality for pursuing a task is learned through experience as a Markov Decision Process (MDP) which provides a general policy for the task. This MDP is independent of the environment; it characterizes the robot abilities for the task.

9 citations