Inductive Logic ProgrammingInductive logic programming is a new research area formed at the intersection of machine learning and logic programming. While the influence of logic programming has encouraged the development of strong theoretical foundations, this new area is inheriting its experimental orientation from machine learning. Inductive Logic Programming will be an invaluable text for all students of computer science, machine learning and logic programming at an advanced level. * * Examination of the background to current developments within the area * Identification of the various goals and aspirations for the increasing body of researchers in inductive logic programming * Coverage of induction of first order theories, the application of inductive logic programming and discussion of several logic learning programs * Discussion of the applications of inductive logic programming to qualitative modelling, planning and finite element mesh design |
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Stephen Muggleton. The final flattened clause , once all the function calls have
been replaced , is : E " : member ( X , Z ) - consp ( X , Y , Z ) 1 bluep ( X ) 1 nilp ( Y
) . with the three following clauses : NIL : nilp ( nil ) . CONS : consp ( X , Y , cons ...
Stephen Muggleton. The final flattened clause , once all the function calls have
been replaced , is : E " : member ( X , Z ) - consp ( X , Y , Z ) 1 bluep ( X ) 1 nilp ( Y
) . with the three following clauses : NIL : nilp ( nil ) . CONS : consp ( X , Y , cons ...
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by replacing all occurrences of each v ; by the corresponding term t ; . The set of
variables ( v1 , . . . , Vn } is denoted by domain ( 0 ) . A unifier for two terms or
literals , t , and t2 , is a substitution , 0 , such that t Q = t20 . The substitution O is a
...
by replacing all occurrences of each v ; by the corresponding term t ; . The set of
variables ( v1 , . . . , Vn } is denoted by domain ( 0 ) . A unifier for two terms or
literals , t , and t2 , is a substitution , 0 , such that t Q = t20 . The substitution O is a
...
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Using the domain knowledge , non - operational predicates are replaced by the
operational predicates they are defined by , through a resolution step . When this
operation fails to yield a proper concept definition , the system falls back onto ...
Using the domain knowledge , non - operational predicates are replaced by the
operational predicates they are defined by , through a resolution step . When this
operation fails to yield a proper concept definition , the system falls back onto ...
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Contents
Inductive Logic Programming | 4 |
A Framework for Inductive Logic Programming | 9 |
oor A | 22 |
Copyright | |
26 other sections not shown
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Common terms and phrases
algorithm allows applied approach arguments assume background knowledge base body called CIGOL CLINT complete Computer concept consistent constrained atoms constraint constructed contains correct corresponding covers defined definition derivation described domain theory efficient equivalent examples exists explanation expression extend facts false Figure finite first-order formula function given GOLEM ground head Horn clauses hypothesis implied inductive inference input instances Intelligence introduced inverse knowledge knowledge base language least limit literals Logic Programming Machine Learning method Muggleton negative examples non-monotonic Note occur operator ordinary polynomial positive positive examples possible predicates present problem Proceedings proof properties prove queries reasoning relation replacing representation representative resolution respect restricted result rules saturation sentences similar sorted atoms space specialization specific step structure substitution symbol Theorem theory tree true values variables