Business process discovery as a service with event log privacy and access control over discovered models


연구 분야: Safety



학회: Computing


초록

The information systems supporting business processes of organizations generate and collect a large number of records in event logs that are exploitable in process mining tasks (discovery, conformance and enhancement). Under a Big Data scenario, Process Mining as a Service (PMaaS) can be attractive for organizations to outsource the storage of event logs and the processing resources for process mining tasks to the cloud in the presence of large event logs. However, the Cloud Service Provider (CSP) may be honest but curious, thus posing security and privacy risks when event log data are sensitive or subject to data privacy laws and regulations. In this work, a cryptography-based method is presented that preserves the privacy of event log data outsourced to an untrusted CSP, which executes the process discovery task, the most common task in process mining. The method conveniently encrypts the event log on the data owner’s side to enable the CSP to apply access control over the discovered models (encrypted) through proxy re-encryption. The proposed method is implemented as a software tool and validated and evaluated in terms of performance, scalability, and data utility using real medical (sensitive) data logs under recommended security levels. The results demonstrate the feasibility of the proposed approach to support Process Discovery as a Service (PDaaS), which enables privacy preservation and access control.


Author Profile
Hector A. de la Fuente-Anaya

Instituto Nacional de Astrofisica Optica y Electronica 72840 Tonantzintla Puebla Mexico

Germany
Author Profile
Heidy M. Marin-Castro

Cinvestav Tamaulipas 87138 Victoria Tamaulipas Mexico

Mexico
Author Profile
Miguel Morales-Sandoval

Universidad de las Americas Puebla 72810 Cholula Puebla Mexico

Germany

📄 논문 정보

발행 연도 2024년
인용수 0
출판 국가 Germany, Mexico
사이트 Springer
좋아요 수 0

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