The Next Release Problem consists in selecting a subset of requirements to develop in the next release of a software product. The selection should be done in a way that maximizes the satisfaction of the stakeholders while the development cost is minimized and the constraints of the requirements are fulfilled. Recent works have solved the problem using exact methods based on Integer Linear Programming. In practice, there is no need to compute all the efficient solutions of the problem; a well-spread set in the objective space is more convenient for the decision maker. The exact methods used in the past to find the complete Pareto front explore the objective space in a lexicographic order or use a weighted sum of the objectives to solve a si...
This paper presents a new anytime search algorithm, anytime explicitestimation search (AEES). AEES i...
We describe how to convert the heuristic search algorithm A * into an anytime algorithm that finds a...
Abstract Optimisation algorithms with good anytime behaviour try to return as high-quality solutions...
The Next Release Problem consists in selecting a subset of requirements to develop in the next rele...
Context The Next Release Problem involves determining the set of requirements to implement in the n...
AbstractContextThe Next Release Problem involves determining the set of requirements to implement in...
In multiobjective optimization, the result of an optimization algorithm is a set of efficient soluti...
Abstract One important issue addressed by software companies is to determine which features should b...
The Pareto-optimal frontier for a bi-objective search problem instance consists of all solutions tha...
Abstract. Selection of the requirements for the next release of a software product is a inherently c...
For software vendors, the process to determine the requirements for the next release of a software p...
Pareto local search (PLS) is an extension of iterative improvement methods for multi-objective combi...
Pareto Local Search (PLS) is a simple and effective local search method for tackling multi-objective...
Arbeit an der Bibliothek noch nicht eingelangt - Daten nicht geprüftAbweichender Titel nach Übersetz...
Companies developing and maintaining complex software systems need to determine the features that sh...
This paper presents a new anytime search algorithm, anytime explicitestimation search (AEES). AEES i...
We describe how to convert the heuristic search algorithm A * into an anytime algorithm that finds a...
Abstract Optimisation algorithms with good anytime behaviour try to return as high-quality solutions...
The Next Release Problem consists in selecting a subset of requirements to develop in the next rele...
Context The Next Release Problem involves determining the set of requirements to implement in the n...
AbstractContextThe Next Release Problem involves determining the set of requirements to implement in...
In multiobjective optimization, the result of an optimization algorithm is a set of efficient soluti...
Abstract One important issue addressed by software companies is to determine which features should b...
The Pareto-optimal frontier for a bi-objective search problem instance consists of all solutions tha...
Abstract. Selection of the requirements for the next release of a software product is a inherently c...
For software vendors, the process to determine the requirements for the next release of a software p...
Pareto local search (PLS) is an extension of iterative improvement methods for multi-objective combi...
Pareto Local Search (PLS) is a simple and effective local search method for tackling multi-objective...
Arbeit an der Bibliothek noch nicht eingelangt - Daten nicht geprüftAbweichender Titel nach Übersetz...
Companies developing and maintaining complex software systems need to determine the features that sh...
This paper presents a new anytime search algorithm, anytime explicitestimation search (AEES). AEES i...
We describe how to convert the heuristic search algorithm A * into an anytime algorithm that finds a...
Abstract Optimisation algorithms with good anytime behaviour try to return as high-quality solutions...