Litcius/Paper detail

An Abstraction-Based Approach for Privacy-Aware Federated Process Mining

Majid Rafiei, Wil M. P. van der Aalst

2023IEEE Access16 citationsDOIOpen Access PDF

Abstract

Process awareness is an essential success factor in any type of business. Process mining uses event data to discover and analyze actual business processes. Although process mining is growing fast and it has already become the basis for a plethora of commercial tools, research has not yet sufficiently addressed the privacy concerns in this discipline. Most of the contributions made to privacy-preserving process mining consider an intra-organizational setting, where a single organization wants to safely publish its event data so that process mining experts can analyze the data and provide insights. However, in real-life settings, organizations need to collaborate for performing their processes, e.g., a supply chain process may involve many organizations. Therefore, event data and processes are often distributed over several partner organizations, yet organizations hesitate to share their data due to privacy and confidentiality concerns. In this paper, we introduce an abstraction-based approach to support privacy-aware process mining in inter-organizational settings. We implement our approach and demonstrate its effectiveness using real-life event logs.

Topics & Concepts

Computer scienceProcess miningEvent (particle physics)Process (computing)ConfidentialityAbstractionBusiness processBusiness process discoveryBusiness process managementData scienceProcess managementWork in processComputer securityBusiness process modelingBusinessPhysicsOperating systemEpistemologyMarketingPhilosophyQuantum mechanicsPrivacy-Preserving Technologies in DataBusiness Process Modeling and AnalysisPrivacy, Security, and Data Protection