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Inductive Logic Programming: 12th International Conference, ILP 2002, Sydney, Australia, July 9-11, 2002. Revised Papers 2003 ed. [Paperback / softback]

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  • Format: Paperback / softback, 358 pages, height x width: 235x155 mm, weight: 1140 g, X, 358 p., 1 Paperback / softback
  • Series: Lecture Notes in Computer Science 2583
  • Pub. Date: 12-Feb-2003
  • Publisher: Springer-Verlag Berlin and Heidelberg GmbH & Co. K
  • ISBN-10: 3540005676
  • ISBN-13: 9783540005674
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  • Format: Paperback / softback, 358 pages, height x width: 235x155 mm, weight: 1140 g, X, 358 p., 1 Paperback / softback
  • Series: Lecture Notes in Computer Science 2583
  • Pub. Date: 12-Feb-2003
  • Publisher: Springer-Verlag Berlin and Heidelberg GmbH & Co. K
  • ISBN-10: 3540005676
  • ISBN-13: 9783540005674
Other books in subject:
The Twelfth International Conference on Inductive Logic Programming was held in Sydney, Australia, July 911, 2002. The conference was colocated with two other events, the Nineteenth International Conference on Machine Learning (ICML2002) and the Fifteenth Annual Conference on Computational Learning Theory (COLT2002). Startedin1991,InductiveLogicProgrammingistheleadingannualforumfor researchers working in Inductive Logic Programming and Relational Learning. Continuing a series of international conferences devoted to Inductive Logic Programming and Relational Learning, ILP 2002 was the central event in 2002 for researchers interested in learning relational knowledge from examples. The Program Committee, following a resolution of the Community Me- ing in Strasbourg in September 2001, took upon itself the issue of the possible change of the name of the conference. Following an extended e-mail discussion, a number of proposed names were subjected to a vote. In the ?rst stage of the vote, two names were retained for the second vote. The two names were: Ind- tive Logic Programming, and Relational Learning. It had been decided that a 60% vote would be needed to change the name; the result of the vote was 57% in favor of the name Relational Learning. Consequently, the name Inductive Logic Programming was kept.

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Springer Book Archives
Contributed Papers.- Propositionalization for Clustering Symbolic
Relational Descriptions.- Efficient and Effective Induction of First Order
Decision Lists.- Learning with Feature Description Logics.- An Empirical
Evaluation of Bagging in Inductive Logic Programming.- Kernels for Structured
Data.- Experimental Comparison of Graph-Based Relational Concept Learning
with Inductive Logic Programming Systems.- Autocorrelation and Linkage Cause
Bias in Evaluation of Relational Learners.- Learnability of Description Logic
Programs.- 1BC2: A True First-Order Bayesian Classifier.- RSD: Relational
Subgroup Discovery through First-Order Feature Construction.- Mining Frequent
Logical Sequences with SPIRIT-LoG.- Using Theory Completion to Learn a Robot
Navigation Control Program.- Learning Structure and Parameters of Stochastic
Logic Programs.- A Novel Approach to Machine Discovery: Genetic Programming
and Stochastic Grammars.- Revision of First-Order Bayesian Classifiers.- The
Applicability to ILP of Results Concerning the Ordering of Binomial
Populations.- Compact Representation of Knowledge Bases in ILP.- A Polynomial
Time Matching Algorithm of Structured Ordered Tree Patterns for Data Mining
from Semistructured Data.- A Genetic Algorithms Approach to ILP.-
Experimental Investigation of Pruning Methods for Relational Pattern
Discovery.- Noise-Resistant Incremental Relational Learning Using Possible
Worlds.- Lattice-Search Runtime Distributions May Be Heavy-Tailed.- Invited
Talk Abstracts.- Learning in Rich Representations: Inductive Logic
Programming and Computational Scientific Discovery.