Abstract
Large Language Models (LLMs) are increasingly used to generate textual explanations of process models discovered from event logs. Producing explanations from large behavioral abstractions (e.g., directly-follows graphs or Petri nets) can be computationally expensive. This paper reports an exploratory evaluation of explanation quality under progressive behavioral-input reduction, where models are discovered from progressively smaller prefixes of a fixed log. Our pipeline (i) discovers models at multiple input sizes, (ii) prompts an LLM to generate explanations, and (iii) uses a second LLM to assess completeness, bottleneck identification, and suggested improvements. On synthetic logs, explanation quality is largely preserved under moderate reduction, indicating a practical cost-quality trade-off. The study is exploratory, as the scores are LLM-based (comparative signals rather than ground truth) and the data are synthetic. The results suggest a path toward more computationally efficient, LLM-assisted process analysis in resource-constrained settings.
| Original language | English |
|---|---|
| Publisher | ArXiv.org |
| Number of pages | 12 |
| DOIs | |
| Publication status | Published - 10 Oct 2025 |
Keywords
- Process Mining
- Large Language Models
- Behavioral Abstractions
- Data Efficiency
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Evaluating LLM-Based Process Explanations Under Progressive Behavioral-Input Reduction
van Oerle, P., Bemthuis, R. H. & Bukhsh, F. A., 19 May 2026, Enterprise Design, Operations, and Computing. EDOC 2025 Workshops: Forum, Doctoral Consortium, EA4AI, iRESEARCH, SoEA4EE, Tool Presentations, Lisbon, Portugal, September 9–12, 2025, Revised Selected Papers. Mira da Silva, M., Rivkin, A., Borbinha, J., Zdravkovic, J. & Barateiro, J. (eds.). 1 ed. Cham: Springer, p. 149–160 12 p. (Lecture Notes in Business Information Processing; vol. 571).Research output: Chapter in Book/Report/Conference proceeding › Conference contribution › Academic › peer-review
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