CORDIS - Forschungsergebnisse der EU
CORDIS

Composing Learning for Artificial Cognitive Systems

Projektbeschreibung


Cognitive Systems and Robotics

One of the aspirations of machine learning is to develop intelligent systems that can address a wide variety of control problems of many different types. Currently, the technology used to specify, solve and analyse one control problem typically cannot be reused on a different problem. The purpose of CompLACS is to develop a unified toolkit that will incorporate the most successful approaches to control problems within a single framework, including bandit problems, Markov Decision Processes (MDPs), Partially Observable MDPs (POMDPs), continuous stochastic control, and multi-agent systems. The toolkit will also provide a generic interface to specifying problems and analysing performance, by mapping intuitive, human-understandable goals into machine-understandable objectives, and by mapping algorithm performance and get back into human-understandable terms.

 

One of the aspirations of machine learning is to develop intelligent systems that can address a wide variety of control problems of many different types. However, although the community has developed successful technologies for many individual problems, these technologies have not previously been integrated into a unified framework. As a result, the technology used to specify, solve and analyse one control problem typically cannot be reused on a different problem. The community has fragmented into a diverse set of specialists with particular solutions to particular problems. The purpose of this project is to develop a unified toolkit for intelligent control in many different problem areas. This toolkit will incorporate many of the most successful approaches to a variety of important control problems within a single framework, including bandit problems, Markov Decision Processes (MDPs), Partially Observable MDPs (POMDPs), continuous stochastic control, and multi-agent systems. In addition, the toolkit will provide methods for the automatic construction of representations and capabilities, which can then be applied to any of these problem types. Finally, the toolkit will provide a generic interface to specifying problems and analysing performance, by mapping intuitive, human-understandable goals into machine-understandable objectives, and by mapping algorithm performance and regret back into human-understandable terms.

Aufforderung zur Vorschlagseinreichung

FP7-ICT-2009-6
Andere Projekte für diesen Aufruf anzeigen

Koordinator

UNIVERSITY COLLEGE LONDON
EU-Beitrag
€ 1 160 410,00
Adresse
GOWER STREET
WC1E 6BT LONDON

Auf der Karte ansehen

Aktivitätstyp
Higher or Secondary Education Establishments
Kontakt Verwaltung
Greta Borg-Carbott (Ms.)
Links
Gesamtkosten
Keine Daten

Beteiligte (8)