Editors' Introduction to [Algorithmic Learning Theory: 21st International Conference, ALT 2010, Canberra, Australia, October 6-8, 2010. Proceedings]
Date
2010-10
Authors
Hutter, Marcus
Stephan, Frank
Vovk, Vladimir
Zeugmann, Thomas
Journal Title
Journal ISSN
Volume Title
Publisher
Springer Verlag
Abstract
Learning theory is an active research area that incorporates ideas,
problems, and techniques from a wide range of disciplines including
statistics, artificial intelligence, information theory, pattern
recognition, and theoretical computer science. The research reported
at the 21st International Conference on Algorithmic Learning Theory
(ALT 2010) ranges over areas such as query models, online learning,
inductive inference, boosting, kernel methods, complexity and
learning, reinforcement learning, unsupervised learning, grammatical
inference, and algorithmic forecasting. In this introduction we give
an overview of the five invited talks and the regular contributions
of ALT 2010.
Description
Keywords
algorithmic learning theory, query models, online learning, inductive inference, boosting, kernel methods, complexity and learning, reinforcement learning, unsupervised learning, grammatical inference, algorithmic forecasting
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Book chapter
Book Title
Algorithmic Learning Theory: 21st International Conference, ALT 2010, Canberra, Australia, October 6-8, 2010. Proceedings
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Open Access
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