ArXiv TLDR

Empirical Evaluation of Taxonomic Trace Links: A Case Study

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2604.08207

Waleed Abdeen, Michael Unterkalmsteiner, Peter Löwenadler, Parisa Yousefi, Krzysztof Wnuk

cs.SE

TLDR

Empirical evaluation of Taxonomic Trace Links (TTL) at Ericsson reveals its utility for some traceability scenarios but highlights challenges in taxonomy creation.

Key contributions

  • Empirically evaluated Taxonomic Trace Links (TTL) in an industrial setting at Ericsson.
  • Identified two practical traceability scenarios and assessed TTL's utility for each.
  • Found TTL useful for one scenario, less for another, noting challenges in taxonomy development.
  • Highlighted the need for improved classifier precision for practical TTL adoption.

Why it matters

This paper offers crucial empirical insights into the practical adoption of Taxonomic Trace Links. It highlights TTL's potential to complement traditional methods and encourages earlier trace link creation, guiding future development for real-world use.

Original Abstract

Context: Traceability is a key quality attribute of artifacts that are used in knowledge-intensive tasks and supports software engineers in producing higher-quality software. Despite its clear benefits, traceability is often neglected in practice due to challenges such as granularity of traces, lack of a common artifact structure, and unclear responsibility. The Taxonomic Trace Links (TTL) approach connects source and target artifacts through a domain-specific taxonomy, aiming to address these common traceability challenges. Objective: In this study, we empirically evaluate TTL in an industrial setting to identify its strengths and weaknesses for real-world adoption. Method: We conducted a mixed-methods study at Ericsson involving one of its software products. Quantitative and qualitative data were collected across two traceability use cases. We established trace links between 463 business use cases, 64 test cases, and 277 ISO-standard requirements. Additionally, we held three focus group sessions with practitioners. Results: We identified two practically relevant scenarios where traceability is required and evaluated TTL in each. Overall, practitioners found TTL to be a useful solution for one of the scenarios, while less useful for the other. However, developing a domain-specific taxonomy and managing heterogeneous artifact structures were noted as significant challenges. Moreover, the precision of the classifier that is used to create trace links needs to be improved to make the solution practical. Conclusion: TTL is a promising approach that can be adopted in practice and enables traceability use cases. However, TTL is not a replacement for traditional trace links, but rather complements them to enable more traceability use cases and encourage the early creation of trace links.

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