SENov 11, 2015

Change Patterns for Model Creation: Investigating the Role of Nesting Depth

arXiv:1511.04120v13 citations
Originality Synthesis-oriented
AI Analysis

This work addresses a specific gap in process modeling research, focusing on cognitive factors for practitioners, but appears incremental as it builds on prior studies of change patterns and primitives.

The paper tackles the problem of understanding how nesting depth affects cognitive complexity when using change patterns for process model creation, proposing an experimental research design to test this impact.

Process model quality has been an area of considerable research efforts. In this context, the correctness-by-construction principle of change patterns offers a promising perspective. However, using change patterns for model creation imposes a more structured way of modeling. While the process of process modeling (PPM) based on change primitives has been investigated, little is known about this process based on change patterns and factors that impact the cognitive complexity of pattern usage. Insights from the field of cognitive psychology as well as observations from a pilot study suggest that the nesting depth of the model to be created has a significant impact on cognitive complexity. This paper proposes a research design to test the impact of nesting depth on the cognitive complexity of change pattern usage in an experiment.

Foundations

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