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Inductive Logic Programming

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ISBN-10: 0125097158

ISBN-13: 9780125097154

Edition: 1992

Authors: Stephen Muggleton

List price: $162.00
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Book details

List price: $162.00
Copyright year: 1992
Publisher: Elsevier Science & Technology Books
Publication date: 7/27/1992
Binding: Hardcover
Pages: 565
Size: 6.25" wide x 9.50" long x 1.25" tall
Weight: 2.090
Language: English

Inductive Logic Programming
Extensions of Inversion of Resolution Applied to Theory Completion
Generalization and Learnability: A Study of Constrained Atoms
Learning Theoretical Terms
Logic Program Synthesis from Good Examples
A Critical Comparison of Various Methods Based on Inverse Resolution
Non-Monotonic Learning
An Overview of the Interactive Concept-Learner and Theory Revisor CLINT
A Framework for Inductive Logic Programming
The Rule-Based Systems Project: Using Confirmation Theory and Non-Monotonic Logics for Incremental Learning
Relating Relational Learning Algorithms
Machine Invention of First-Order Predicates By Inverting Resolution
Efficient Induction of Logic Programs
Constraints for Predicate Invention
Refinement Graphs for FOIL and LINUS
Controlling the Complexity of Learning in Logic Through Syntactic and Task-Oriented Models
Efficient Learning of Logic Programs with Non-Determinate, Non-Discriminating Literals
An Information-Based Approach to Integrating Empirical and Explanation-Based Learning
Analogical Reasoning for Logic Programming
Some Thoughts on Inverse Resolution
Experiments in Non-Monotonic First-Order Induction
Learning Qualitative Models of Dynamic Systems
The Application of Inductive Logic Programming to Finite Element Mesh Design
Inducing Temporal Fault Diagnostic Rules from a Qualitative Model
Inductive Learning of Relations from Noisy Examples
Learning Chess Patterns
Applying Inductive Logic Programming in Reactive Environments
Chapter References