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Systematic Mapping Protocol: Reasoning Algorithms on Feature Model

2021-03-26 23:34:55
Samuel Sepúlveda, Marcelo Esperguel

Abstract

Context: The importance of the feature modeling for the software product lines considering the modeling and management of the variability. Objective: Define a protocol to conduct a systematic mapping study to summarize and synthesize the evidence on reasoning algorithms for feature modeling. Method: Application the protocol to conduct a systematic mapping study according the guidelines of K. Petersen. Results: A validated protocol to conduct a systematic mapping study. Conclusions: Initial findings show that a more detailed review for the different reasoning algorithms for feature modeling is needed.

Abstract (translated)

URL

https://arxiv.org/abs/2103.16325

PDF

https://arxiv.org/pdf/2103.16325.pdf


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