Open Access Open Access  Restricted Access Subscription Access

An Approach for Optimized Feature Selection in Software Product Lines using Union-Find and Genetic Algorithms


Affiliations
1 Department of Computer Science and Engineering, Hanyang University, Korea, Democratic People's Republic of
 

In Software Product Line (SPL), feature model is highly recommended to manage the commonalities and variability of features under resource constraints of mandatory, optional and alternative. Features with mandatory constraints and high in dependency with other features are identified as crosscutting concerns; reduce the reusability of resources. It is important to find and modularize these concerns at modeling level. With this practice, these concerns do not effect if deletion or addition is required from entire system. In this paper we have applied Union-find algorithm to find crosscutting concerns in feature model. We evaluated our approach by applying on an automobile feature model with various dependencies between features, and found required crosscutting concerns. By this approach, identification of crosscutting concerns and their modularization made easier. Further, we have also applied genetic algorithm to get optimized feature selection under cost constraint with high performance. In SPL, as crosscutting concerns are mandatory features with fix cost and performance, optimization on feature model is necessary under consideration of crosscutting concerns. Our approach found all possible products according to crosscutting concerns, cost and performance at modeling level of an automobile feature model. At last, we found all products from minimum to maximum cost with respect to least maximum performance by using GA optimization technique.

Keywords

Feature Model, Genetic Algorithm, Optimization, Software Product Line, Union-find Algorithm
User

Abstract Views: 245

PDF Views: 0




  • An Approach for Optimized Feature Selection in Software Product Lines using Union-Find and Genetic Algorithms

Abstract Views: 245  |  PDF Views: 0

Authors

Asad Abbas
Department of Computer Science and Engineering, Hanyang University, Korea, Democratic People's Republic of
Zhiqiang Wu
Department of Computer Science and Engineering, Hanyang University, Korea, Democratic People's Republic of
Isma Farah Siddiqui
Department of Computer Science and Engineering, Hanyang University, Korea, Democratic People's Republic of
Scott Uk-Jin Lee
Department of Computer Science and Engineering, Hanyang University, Korea, Democratic People's Republic of

Abstract


In Software Product Line (SPL), feature model is highly recommended to manage the commonalities and variability of features under resource constraints of mandatory, optional and alternative. Features with mandatory constraints and high in dependency with other features are identified as crosscutting concerns; reduce the reusability of resources. It is important to find and modularize these concerns at modeling level. With this practice, these concerns do not effect if deletion or addition is required from entire system. In this paper we have applied Union-find algorithm to find crosscutting concerns in feature model. We evaluated our approach by applying on an automobile feature model with various dependencies between features, and found required crosscutting concerns. By this approach, identification of crosscutting concerns and their modularization made easier. Further, we have also applied genetic algorithm to get optimized feature selection under cost constraint with high performance. In SPL, as crosscutting concerns are mandatory features with fix cost and performance, optimization on feature model is necessary under consideration of crosscutting concerns. Our approach found all possible products according to crosscutting concerns, cost and performance at modeling level of an automobile feature model. At last, we found all products from minimum to maximum cost with respect to least maximum performance by using GA optimization technique.

Keywords


Feature Model, Genetic Algorithm, Optimization, Software Product Line, Union-find Algorithm



DOI: https://doi.org/10.17485/ijst%2F2016%2Fv9i17%2F132831