Deriving Product Line Requirements: the RED-PL Guidance Approach
September 25, 2023 Β· Declared Dead Β· π Asia-Pacific Software Engineering Conference
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Authors
Olfa Djebbi, Camille Salinesi, Daniel Diaz
arXiv ID
2309.13974
Category
cs.SE: Software Engineering
Citations
30
Venue
Asia-Pacific Software Engineering Conference
Last Checked
4 months ago
Abstract
Product lines (PL) modeling have proven to be an effective approach to reuse in software development.Several variability approaches were developed to plan requirements reuse, but only little of them actuallyaddress the issue of deriving product requirements.This paper presents a method, RED-PL that intends to support requirements derivation. The originality ofthe proposed approach is that (i) it is user-oriented, (ii) it guides product requirements elicitation andderivation as a decision making activity, and (iii) it provides systematic and interactive guidance assistinganalysts in taking decisions about requirements. The RED-PL methodological process was validatedin an industrial setting by considering the requirement engineering phase of a product line of blood analyzers.
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