ArXiv TLDR

Operationalizing Software Engineering Theories for Practical Validation

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2605.03257

Isaque Alves, Fabio Kon, Jessica Diaz, Carla Rocha

cs.SE

TLDR

This paper proposes a systematic procedure for operationalizing software engineering theories, bridging abstract concepts with empirical validation for practical utility.

Key contributions

  • Proposes a systematic procedure for operationalizing software engineering theories for empirical validation.
  • Extends Sjøberg et al.'s framework and uses Dubin's approach to formulate non-causal hypotheses.
  • Defines variables, selects indicators, and systematically derives hypotheses for practical utility.
  • Provides a replicable, evidence-based guideline illustrated with the DevOps Team Taxonomies Theory.

Why it matters

Operationalization is crucial for making software engineering theories practically useful. This paper provides a rigorous, systematic guideline that helps researchers translate abstract concepts into testable elements, enabling evidence-based advancements and actionable insights for practitioners.

Original Abstract

Software Engineering often adapts theory-building frameworks from the social sciences to address socio-technical complexity. The key phases of the theory-building process are conceptual development, operationalization, testing, and application. Operationalization translates abstract concepts into measurable elements for empirical validation. This phase is essential for delivering the practical utility required by an applied science like Software Engineering. We propose a systematic procedure for the operationalization phase that bridges the gap between abstract concepts and empirical validation, ensuring the resulting theory is both rigorous and practically useful. We extend the operationalization framework proposed by Sjøberg et al. and formulate non-causal hypotheses following Dubin's approach. Our procedure defines variables, selects indicators, and systematically derives hypotheses. We present a replicable, evidence-based methodological guideline that preserves a clear chain of evidence and supports practical validation. We illustrate the procedure using the DevOps Team Taxonomies Theory. This guideline provides a transparent chain of evidence from theory to testable elements, empowering researchers to ground theoretical advancements in empirical evidence and deliver actionable insights for practitioners.

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