This paper deals with the problem of learning characteristic concept descriptions from examples and describes a new generalization approach implemented in the system Cola-2. The approach tries to take advantage of the information which can be induced from descriptions of unclassified objects using a conceptual clustering algorithm. Experimental results in various real-world domains strongly support the hypothesis that the new approach delivers more correct (and possibly more comprehesible) concept descriptions than exisiting methods, if the induced concept descriptions are also used to classify objects which belong to concepts which were not present in the training data set. This paper describes the generalization approach implemented in Co...
which the learning process is driven by providing positive and negative examples to the learner. Fro...
This paper introduces a logical model of inductive generalization, and specifically of the machine l...
This paper introduces a logical model of inductive generalization, and specif-ically of the machine ...
. This paper presents a novel idea to the problem of learning concept descriptions from examples. Wh...
Among the inferences studied in Description Logics (DLs), induction has been paid increasing attenti...
In the field of machine learning different paradigms are used among which inductive learning. A spe...
. We address a learning problem with the following peculiarity : we search for characteristic featur...
Summarization: Post and prior to learning concept perception may vary. Inductive learning systems su...
In most concept-learning systems, users must explicitly list all features which make an example an i...
The automatic inductive learning of production rules in a classification environment is a difficult ...
The automatic inductive learning of production rules in a classification environment is a difficult ...
For explicit representation of commonality and variability of a product line, a feature model is mos...
This paper presents a computational study of the change of the logic-based concepts to arithmeticbas...
Inductive learning is an approach to machine learning in which concepts are learned from examples an...
Successful application of Machine Learning to certain real-world situations sometimes requires to ta...
which the learning process is driven by providing positive and negative examples to the learner. Fro...
This paper introduces a logical model of inductive generalization, and specifically of the machine l...
This paper introduces a logical model of inductive generalization, and specif-ically of the machine ...
. This paper presents a novel idea to the problem of learning concept descriptions from examples. Wh...
Among the inferences studied in Description Logics (DLs), induction has been paid increasing attenti...
In the field of machine learning different paradigms are used among which inductive learning. A spe...
. We address a learning problem with the following peculiarity : we search for characteristic featur...
Summarization: Post and prior to learning concept perception may vary. Inductive learning systems su...
In most concept-learning systems, users must explicitly list all features which make an example an i...
The automatic inductive learning of production rules in a classification environment is a difficult ...
The automatic inductive learning of production rules in a classification environment is a difficult ...
For explicit representation of commonality and variability of a product line, a feature model is mos...
This paper presents a computational study of the change of the logic-based concepts to arithmeticbas...
Inductive learning is an approach to machine learning in which concepts are learned from examples an...
Successful application of Machine Learning to certain real-world situations sometimes requires to ta...
which the learning process is driven by providing positive and negative examples to the learner. Fro...
This paper introduces a logical model of inductive generalization, and specifically of the machine l...
This paper introduces a logical model of inductive generalization, and specif-ically of the machine ...