SEApr 28, 2019

A Feature Based Methodology for Variable Requirements Reverse Engineering

arXiv:1904.12309v1
Originality Incremental advance
AI Analysis

This work addresses software requirements maintainers by providing a more complete reverse engineering methodology, though it appears incremental as it builds on existing feature model approaches.

The paper tackles the challenge of reverse engineering software requirements by developing an integrated methodology that addresses gaps in existing approaches, including feature model enrichment, feature pattern recognition, and graph-based slicing. The results show that the methodology is competitive, with unique contributions such as uniform feature specification and more general slicing techniques.

In the past years, software reverse engineering dealt with source code understanding. Nowadays, it is levered to software requirements abstract level, supported by feature model notations, language independent, and simpler than the source code reading. The recent relevant approaches face the following insufficiencies: lack of a complete integrated methodology, adapted feature model, feature patterns recognition, and Graph based slicing. This work aims to provide some solutions to the above challenges through an integrated methodology. The following results are unique. Elementary and configuration features are specified in a uniform way by introducing semantics specific attributes. The reverse engineering supports feature pattern recognition and requirements feature model graph-based slicing. The slicing criteria are rich enough to allow answering questions of software requirements maintainers. A comparison of this proposed methodology, based on effective criteria, with the similar works, seems to be valuable and competitive: the enrichment of the feature model and feature pattern recognition were never approached and the proposed slicing technique is more general, effective, and practical.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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