SENov 11, 2015

How Advanced Change Patterns Impact the Process of Process Modeling

arXiv:1511.04060v1
Originality Synthesis-oriented
AI Analysis

This work addresses the problem of optimizing change pattern sets for process modelers, but it is incremental as it builds on existing research on change primitives.

The study investigated how different sets of change patterns impact the process of process modeling, finding that an extended pattern set was perceived as more difficult to use, increased mental effort, and was often applied incorrectly, limiting its benefits.

Process model quality has been an area of considerable research efforts. In this context, correctness-by-construction as enabled by change patterns provides promising perspectives. While the process of process modeling (PPM) based on change primitives has been thoroughly investigated, only little is known about the PPM based on change patterns. In particular, it is unclear what set of change patterns should be provided and how the available change pattern set impacts the PPM. To obtain a better understanding of the latter as well as the (subjective) perceptions of process modelers, the arising challenges, and the pros and cons of different change pattern sets we conduct a controlled experiment. Our results indicate that process modelers face similar challenges irrespective of the used change pattern set (core pattern set versus extended pattern set, which adds two advanced change patterns to the core patterns set). An extended change pattern set, however, is perceived as more difficult to use, yielding a higher mental effort. Moreover, our results indicate that more advanced patterns were only used to a limited extent and frequently applied incorrectly, thus, lowering the potential benefits of an extended pattern set.

Foundations

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