Computational Learning Theory Second European Conference, EuroCOLT '95, Barcelona, Spain, March 13 - 15, 1995. Proceedings

This volume presents the proceedings of the Second European Conference on Computational Learning Theory (EuroCOLT '95), held in Barcelona, Spain in March 1995. The book contains full versions of the 28 papers accepted for presentation at the conference as well as three invited papers. All relev...

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Bibliographic Details
Other Authors: Vitanyi, Paul (Editor)
Format: eBook
Language:English
Published: Berlin, Heidelberg Springer Berlin Heidelberg 1995, 1995
Edition:1st ed. 1995
Series:Lecture Notes in Artificial Intelligence
Subjects:
Online Access:
Collection: Springer Book Archives -2004 - Collection details see MPG.ReNa
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505 0 |a The discovery of algorithmic probability: A guide for the programming of true creativity -- A desicion-theoretic generalization of on-line learning and an application to boosting -- Online learning versus offline learning -- Learning distributions by their density levels — A paradigm for learning without a teacher -- Tight worst-case loss bounds for predicting with expert advice -- On-line maximum likelihood prediction with respect to general loss functions -- The power of procrastination in inductive inference: How it depends on used ordinal notations -- Learnability of Kolmogorov-easy circuit expressions via queries -- Trading monotonicity demands versus mind changes -- Learning recursive functions from approximations -- On the intrinsic complexity of learning -- The structure of intrinsic complexity of learning -- Kolmogorov numberings and minimal identification -- Stochastic complexity in learning -- Function learning from interpolation (extended abstract) --  
505 0 |a Approximation and learning of convex superpositions -- Minimum description length estimators under the optimal coding scheme -- MDL learning of unions of simple pattern languages from positive examples -- A note on the use of probabilities by mechanical learners -- Characterizing rational versus exponential learning curves -- Is pocket algorithm optimal? -- Some theorems concerning the free energy of (Un) constrained stochastic Hopfield neural networks -- A space-bounded learning algorithm for axis-parallel rectangles -- Learning decision lists and trees with equivalence-queries -- Bounding VC-dimension for neural networks: Progress and prospects -- Average case analysis of a learning algorithm for ?-DNF expressions -- Learning by extended statistical queries and its relation to PAC learning -- Typed pattern languages and theirlearnability -- Learning behaviors of automata from shortest counterexamples -- Learning of regular expressions by pattern matching --  
505 0 |a The query complexity of learning some subclasses of context-free grammars 
653 |a Artificial Intelligence 
653 |a Algorithms 
653 |a Formal Languages and Automata Theory 
653 |a Machine theory 
653 |a Artificial intelligence 
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520 |a This volume presents the proceedings of the Second European Conference on Computational Learning Theory (EuroCOLT '95), held in Barcelona, Spain in March 1995. The book contains full versions of the 28 papers accepted for presentation at the conference as well as three invited papers. All relevant topics in fundamental studies of computational aspects of artificial and natural learning systems and machine learning are covered; in particular artificial and biological neural networks, genetic and evolutionary algorithms, robotics, pattern recognition, inductive logic programming, decision theory, Bayesian/MDL estimation, statistical physics, and cryptography are addressed