Research Paper: A validation of QDAcity‐RE for domain modeling using qualitative data analysis

Abstract: Using qualitative data analysis (QDA) to perform domain analysis and modeling has shown great promise. Yet, the evaluation of such approaches has been limited to single-case case studies. While these exploratory cases are valuable for an initial assessment, the evaluation of the efficacy of QDA to solve the suggested problems is restricted by the common single-case case study research design. Using our own method, called QDAcity-RE, as the example, we present an in-depth empirical evaluation of employing qualitative data analysis for domain modeling using a controlled experiment design. Our controlled experiment shows that the QDA-based method leads to a deeper and richer set of domain concepts discovered from the data, while also being more time efficient than the control group using a comparable non-QDA-based method with the same level of traceability.

Keywords: Domain modeling, Qualitatice data analysis, Requirements Engineering

Reference: Andreas Kaufmann, Julia Krause, Nikolay Harutyunyan, Ann Barcomb and Dirk Riehle. 2021. A validation of QDAcity‐RE for domain modeling using qualitative data analysis. Requirements Engineering. https://doi.org/10.1007/s00766-021-00360-6

The paper is available as a PDF.

Friedrich-Alexander-Universität Erlangen-Nürnberg