Abstract
Protecting personal data about individuals, such as event traces in process mining, is an inherently difficult task since an event trace leaks information about the path in a process model that an individual has triggered. Yet, prior anonymization methods of event traces like k-anonymity or event log sanitization struggled to protect against such leakage, in particular against adversaries with sufficient background knowledge. In this work, we provide a method that tackles the challenge of summarizing sensitive event traces by learning the underlying process tree in a privacy-preserving manner. We prove via the so-called Differential Privacy (DP) property that from the resulting summaries no useful inference can be drawn about any personal data in an event trace. On the technical side, we introduce a differentially private approximation (DPIM) of the Inductive Miner. Experimentally, we compare our DPIM with the Inductive Miner on 14 real-world event traces by evaluating well-known metrics: fitness, precision, simplicity, and generalization. The experiments show that our DPIM not only protects personal data but also generates faithful process trees that exhibit little utility loss above the Inductive Miner.
| Originalsprache | Englisch |
|---|---|
| Titel | 2024 6th International Conference on Process Mining (ICPM) |
| Seitenumfang | 8 |
| Erscheinungsdatum | 2024 |
| Seiten | 89-96 |
| DOIs | |
| Publikationsstatus | Veröffentlicht - 2024 |
Strategische Forschungsbereiche und Zentren
- Querschnittsbereich: Intelligente Systeme
DFG-Fachsystematik
- 4.43-03 Sicherheit und Verlässlichkeit, Betriebs-, Kommunikations- und verteilte Systeme
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