University of Wollongong
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Lifelong Machine Learning with Adaptive Multi-Agent Systems

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conference contribution
posted on 2024-11-14, 09:42 authored by Nicolas Verstaevel, Jeremy Boes, Julien Nigon, Dorian D'Amico, Marie-Pierre Gleizes
Sensors and actuators are progressively invading our everyday life as well as industrial processes. They form complex and pervasive systems usually called "ambient systems" or "cyber-physical systems". These systems are supposed to efficiently perform various and dynamic tasks in an ever-changing environment. They need to be able to learn and to self-adapt throughout their life, because designers cannot specify a priori all the interactions and situations they will face. These are strong requirements that push the need for lifelong machine learning, where devices can learn models and behaviours during their whole lifetime and are able to transfer them to perform other tasks. This paper presents a multi-agent approach for lifelong machine learning.

History

Citation

Verstaevel, N., Boes, J., Nigon, J., d'Amico, D. & Gleizes, M. (2017). Lifelong Machine Learning with Adaptive Multi-Agent Systems. In H. Jaap van den Herik, A. Rocha & J. Filipe (Eds.), Proceedings of the 9th International Conference on Agents and Artificial Intelligence (pp. 275-286). Portugal: SciTePress.

Parent title

ICAART 2017 - Proceedings of the 9th International Conference on Agents and Artificial Intelligence

Volume

2

Pagination

275-286

Language

English

RIS ID

123657

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