Richter, Michael M. / Thomas Zeugmann et al (Hrsg.). Algorithmic Learning Theory - 9th International Conference, ALT¿98, Otzenhausen, Germany, October 8¿10, 1998 Proceedings. Springer Berlin Heidelberg, 1998.
eng

Algorithmic Learning Theory

9th International Conference, ALT¿98, Otzenhausen, Germany, October 8¿10, 1998 Proceedings
  • Springer Berlin Heidelberg
  • 1998
  • Taschenbuch
  • 460 Seiten
  • ISBN 9783540650133
Herausgeber: Michael M. Richter / Thomas Zeugmann / Rolf Wiehagen / Carl H. Smith

This volume contains all the papers presented at the Ninth International Con- rence on Algorithmic Learning Theory (ALT¿98), held at the European education centre Europ¿aisches Bildungszentrum (ebz) Otzenhausen, Germany, October 8{ 10, 1998. The Conference was sponsored by the Japanese Society for Arti cial Intelligence (JSAI) and the University of Kaiserslautern. Thirty-four papers on all aspects of algorithmic learning theory and related areas were submitted, all electronically. Twenty-six papers were accepted by the program committee based on originality, quality, and relevance to the theory of machine learning. Additionally, three invited talks presented by Akira Maruoka of Tohoku University, Arun Sharma of the University of New South

Mehr Weniger
Wales, and Stefan Wrobel from GMD, respectively, were featured at the conference. We would like to express our sincere gratitude to our invited speakers for sharing with us their insights on new and exciting developments in their areas of research. This conference is the ninth in a series of annual meetings established in 1990. The ALT series focuses on all areas related to algorithmic learning theory including (but not limited to): the theory of machine learning, the design and analysis of learning algorithms, computational logic of/for machine discovery, inductive inference of recursive functions and recursively enumerable languages, learning via queries, learning by arti cial and biological neural networks, pattern recognition, learning by analogy, statistical learning, Bayesian/MDL estimation, inductive logic programming, robotics, application of learning to databases, and gene analyses.

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