Editors’ Introduction to [Algorithmic Learning Theory: 18th International Conference, ALT 2007, Sendai, Japan, October 1-4, 2007. Proceedings]
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Hutter, Marcus
Servedio, Rocco A.
Takimoto, Eiji
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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 18th International Conference on Algorithmic Learning Theory
(ALT 2007) ranges over areas such as unsupervised learning,
inductive inference, complexity and learning, boosting and
reinforcement learning, query learning models, grammatical
inference, online learning and defensive forecasting, and kernel
methods. In this introduction we give an overview of the five
invited talks and the regular contributions of ALT 2007.
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Algorithmic Learning Theory: 18th International Conference, ALT 2007, Sendai, Japan, October 1-4, 2007. Proceedings
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