For explicit representation of commonality and variability of a product line, a feature model is mostly used. An open question is how a feature model can be inductively learned in an automated way from a limited number of given product specifications in terms of features. We propose to address this problem through machine learning, more precisely inductive generalization from examples. However, no counter-examples are assumed to exist. Basically, a feature model needs to be complete with respect to all the given example specifications. First results indicate the feasibility of this approach, even for generating hierarchies, but many open challenges remain
. An architecture for supervision and programming by demonstration in robotized assembly is presente...
State-of-the-art learning algorithms accept data in feature vector format as input. Examples belongi...
Judging similarities among objects, events, and experiences is one of the most basic cognitive abili...
Inductive learning is an approach to machine learning in which concepts are learned from examples an...
International audienceMany real-world product lines are only represented as non-hierarchical collect...
Feature modeling is a widely used formalism to characterize a set of products (also called configura...
This paper deals with the problem of learning characteristic concept descriptions from examples and ...
The automatic inductive learning of production rules in a classification environment is a difficult ...
Successful application of Machine Learning to certain real-world situations sometimes requires to ta...
Prompted by its performance on a variety of benchmark tasks, machine learning (ML) is now being appl...
This paper considers a family of inductive problems where reasoners must identify familiar categorie...
The automatic inductive learning of production rules in a classification environment is a difficult ...
It is a common goal in the development of feature-based modeling systems to find a mechanism for sup...
It is a common goal in the develpment of feature-based modeling systems to find a mechanism for supp...
. We address a learning problem with the following peculiarity : we search for characteristic featur...
. An architecture for supervision and programming by demonstration in robotized assembly is presente...
State-of-the-art learning algorithms accept data in feature vector format as input. Examples belongi...
Judging similarities among objects, events, and experiences is one of the most basic cognitive abili...
Inductive learning is an approach to machine learning in which concepts are learned from examples an...
International audienceMany real-world product lines are only represented as non-hierarchical collect...
Feature modeling is a widely used formalism to characterize a set of products (also called configura...
This paper deals with the problem of learning characteristic concept descriptions from examples and ...
The automatic inductive learning of production rules in a classification environment is a difficult ...
Successful application of Machine Learning to certain real-world situations sometimes requires to ta...
Prompted by its performance on a variety of benchmark tasks, machine learning (ML) is now being appl...
This paper considers a family of inductive problems where reasoners must identify familiar categorie...
The automatic inductive learning of production rules in a classification environment is a difficult ...
It is a common goal in the development of feature-based modeling systems to find a mechanism for sup...
It is a common goal in the develpment of feature-based modeling systems to find a mechanism for supp...
. We address a learning problem with the following peculiarity : we search for characteristic featur...
. An architecture for supervision and programming by demonstration in robotized assembly is presente...
State-of-the-art learning algorithms accept data in feature vector format as input. Examples belongi...
Judging similarities among objects, events, and experiences is one of the most basic cognitive abili...