EVM: Lifelong reinforcement and self-learning
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- @InProceedings{Nowostawski:2009:IMCSIT,
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author = "Mariusz Nowostawski",
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title = "EVM: Lifelong reinforcement and self-learning",
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booktitle = "International Multiconference on Computer Science and
Information Technology, IMCSIT '09",
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year = "2009",
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month = oct,
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pages = "89--98",
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publisher = "IEEE ?",
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keywords = "genetic algorithms, genetic programming",
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URL = "http://www.proceedings2009.imcsit.org/pliks/iv_imcsit.pdf",
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abstract = "Open-ended systems and unknown dynamical environments
present challenges to the traditional machine learning
systems, and in many cases traditional methods are not
applicable. Lifelong reinforcement learning is a
special case of dynamic (process-oriented)
reinforcement learning. Multi-task learning is a
methodology that exploits similarities and patterns
across multiple tasks. Both can be successfully used
for open-ended systems and automated learning in
unknown environments. Due to its unique
characteristics, lifelong reinforcement presents both
challenges and potential capabilities that go beyond
traditional reinforcement learning methods. In this
article, we present the basic notions of lifelong
reinforcement learning, introduce the main
methodologies, applications and challenges. We also
introduce a new model of lifelong reinforcement based
on the Evolvable Virtual Machine architecture (EVM).",
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notes = "Information Science Department Otago University PO Box
56 Dunedin, New Zealand",
- }
Genetic Programming entries for
Mariusz Nowostawski
Citations