. We address a learning problem with the following peculiarity : we search for characteristic features common to a learning set of objects related to a target concept. In particular we approach the cases where descriptions of objects are ambiguous : they represent several incompatible realities. Ambiguity arises because each description only contains indirect information from which assumptions can be derived about the object. We suppose here that a set of constraints allows the identification of "coherent" sub-descriptions inside each object. We formally study this problem, using an Inductive Logic Programming framework close to characteristic induction from interpretations. In particular, we exhibit conditions which allow a prune...
This paper presents a scheme for learning complex descriptions, such as logic formulas, from example...
This paper presents a computational study of the change of the logic-based concepts to arithmeticbas...
International audienceWe investigate here concept learning from incomplete examples, denoted here as...
We investigate here concept learning from incomplete examples. Our first purpose is to discuss to wh...
We discuss the adoption of a three-valued setting for inductive concept learning. Distinguishing bet...
. Inductive Logic Programming is mainly concerned with the problem of learning concept definitions ...
We discuss the adoption of a three-valued setting for inductive concept learning. Distinguishing be...
Three different formalizations of concept-learning in logic (as well as some variants) are analyzed ...
In the field of machine learning different paradigms are used among which inductive learning. A spe...
This paper deals with the problem of learning characteristic concept descriptions from examples and ...
A novel approach to learning first order logic formulae from positive and negative examples is incor...
In most concept-learning systems, users must explicitly list all features which make an example an i...
We propose an approach for the integration of abduction and induction in Logic Programming. In parti...
Inductive Logic Programming (ILP) is concerned with learning relational descriptions that typically...
Successful application of Machine Learning to certain real-world situations sometimes requires to ta...
This paper presents a scheme for learning complex descriptions, such as logic formulas, from example...
This paper presents a computational study of the change of the logic-based concepts to arithmeticbas...
International audienceWe investigate here concept learning from incomplete examples, denoted here as...
We investigate here concept learning from incomplete examples. Our first purpose is to discuss to wh...
We discuss the adoption of a three-valued setting for inductive concept learning. Distinguishing bet...
. Inductive Logic Programming is mainly concerned with the problem of learning concept definitions ...
We discuss the adoption of a three-valued setting for inductive concept learning. Distinguishing be...
Three different formalizations of concept-learning in logic (as well as some variants) are analyzed ...
In the field of machine learning different paradigms are used among which inductive learning. A spe...
This paper deals with the problem of learning characteristic concept descriptions from examples and ...
A novel approach to learning first order logic formulae from positive and negative examples is incor...
In most concept-learning systems, users must explicitly list all features which make an example an i...
We propose an approach for the integration of abduction and induction in Logic Programming. In parti...
Inductive Logic Programming (ILP) is concerned with learning relational descriptions that typically...
Successful application of Machine Learning to certain real-world situations sometimes requires to ta...
This paper presents a scheme for learning complex descriptions, such as logic formulas, from example...
This paper presents a computational study of the change of the logic-based concepts to arithmeticbas...
International audienceWe investigate here concept learning from incomplete examples, denoted here as...