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Algorithmic learning theory : 10th International Conference, ALT'99, Tokyo, Japan, December 6 8, 1999 : procee | ALT'99 (1999 : Tokyo, Japan), Watanabe, Osamu, 1958-, Yokomori, Takashi

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Algorithmic learning theory : 10th International Conference, ALT'99, Tokyo, Japan, December 6 8, 1999 : procee

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Author: ALT'99 (1999 : Tokyo, Japan), Watanabe, Osamu, 1958-, Yokomori, Takashi

Added by: sketch

Added Date: 2015-12-30

Publication Date: 1999

Language: eng

Subjects: Computer algorithms, Machine learning

Publishers: Berlin ; New York : Springer

Collections: journals contributions, journals

ISBN Number: 3540667482

Pages Count: 300

PPI Count: 300

PDF Count: 1

Total Size: 180.71 MB

PDF Size: 7.79 MB

Extensions: djvu, gif, pdf, gz, zip, torrent, log, mrc

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Downloads: 567

Views: 617

Total Files: 18

Media Type: texts

Description

Algorithmic Learning Theory: 10th International Conference, ALT’99 Tokyo, Japan, December 6–8, 1999 Proceedings
Author: Osamu Watanabe, Takashi Yokomori
Published by Springer Berlin Heidelberg
ISBN: 978-3-540-66748-3
DOI: 10.1007/3-540-46769-6

Table of Contents:

  • Tailoring Representations to Different Requirements
  • Theoretical Views of Boosting and Applications
  • Extended Stochastic Complexity and Minimax Relative Loss Analysis
  • Algebraic Analysis for Singular Statistical Estimation
  • Generalization Error of Linear Neural Networks in Unidentifiable Cases
  • The Computational Limits to the Cognitive Power of the Neuroidal Tabula Rasa
  • The Consistency Dimension and Distribution-Dependent Learning from Queries (Extended Abstract)
  • The VC-Dimension of Subclasses of Pattern Languages
  • On the V
  • On the Strength of Incremental Learning
  • Learning from Random Text
  • Inductive Learning with Corroboration
  • Flattening and Implication
  • Induction of Logic Programs Based on ψ-Terms
  • Complexity in the Case Against Accuracy: When Building One Function-Free Horn Clause Is as Hard as Any
  • A Method of Similarity-Driven Knowledge Revision for Type Specializations
  • PAC Learning with Nasty Noise
  • Positive and Unlabeled Examples Help Learning
  • Learning Real Polynomials with a Turing Machine
  • Faster Near-Optimal Reinforcement Learning: Adding Adaptiveness to the E3 Algorithm

Includes bibliographical references and index
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