Feature models provide an effective way to organize and reuse requirements in a specific domain. A feature model consists of a feature tree and cross-tree constraints. Identifying features and then building a feature tree takes a lot of effort, and many semi-automated approaches have been proposed to help the situation. However, finding cross-tree constraints is often more challenging which still lacks the help of automation. In this paper, we propose an approach to mining cross-tree binary constraints in the construction of feature models. Binary constraints are the most basic kind of cross-tree constraints that involve exactly two features and can be further classified into two sub-types, i.e. requires and excludes. Given these two sub-ty...
Feature models have been widely adopted to reuse the requirements of a set of similar products in a ...
Feature modeling is a method to compactly capture commonality and variability of a software product ...
Data mining (as well as machine learning) are well-established fields of research that are concerned...
Extended feature models enable expressing powerful constraints by involving feature attributes in cr...
We present an algorithm which eliminates constraints from a feature model whose feature diagram is a...
One basic construct in feature models (FMs) is the constraints between features, which play the role...
Since feature models for realistic product families may be quite complicated, the automated analysis...
Feature modeling has been found very effective for modeling and managing variability in Software Pro...
Feature models are often used in software product lines to represent a set of products and reason ov...
International audienceVariability intensive systems may include several thousand features allowing f...
Abstract: Product line models are important artefacts in product line engineering. One of the most p...
In Software Product Line (SPL), feature model is highly recommended to manage the commonalities and ...
Feature selection is an important preprocessing step in mining high-dimensional data. Generally, sup...
This paper introduces the concept of generalised feature trees, which are feature trees where featur...
Abstract--- Pattern set mining troubled with discovery a set of NP interrelated patterns in constrai...
Feature models have been widely adopted to reuse the requirements of a set of similar products in a ...
Feature modeling is a method to compactly capture commonality and variability of a software product ...
Data mining (as well as machine learning) are well-established fields of research that are concerned...
Extended feature models enable expressing powerful constraints by involving feature attributes in cr...
We present an algorithm which eliminates constraints from a feature model whose feature diagram is a...
One basic construct in feature models (FMs) is the constraints between features, which play the role...
Since feature models for realistic product families may be quite complicated, the automated analysis...
Feature modeling has been found very effective for modeling and managing variability in Software Pro...
Feature models are often used in software product lines to represent a set of products and reason ov...
International audienceVariability intensive systems may include several thousand features allowing f...
Abstract: Product line models are important artefacts in product line engineering. One of the most p...
In Software Product Line (SPL), feature model is highly recommended to manage the commonalities and ...
Feature selection is an important preprocessing step in mining high-dimensional data. Generally, sup...
This paper introduces the concept of generalised feature trees, which are feature trees where featur...
Abstract--- Pattern set mining troubled with discovery a set of NP interrelated patterns in constrai...
Feature models have been widely adopted to reuse the requirements of a set of similar products in a ...
Feature modeling is a method to compactly capture commonality and variability of a software product ...
Data mining (as well as machine learning) are well-established fields of research that are concerned...