2015 | OriginalPaper | Buchkapitel
Pariket: Mining Business Process Logs for Root Cause Analysis of Anomalous Incidents
verfasst von : Nisha Gupta, Kritika Anand, Ashish Sureka
Erschienen in: Databases in Networked Information Systems
Verlag: Springer International Publishing
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Process mining consists of extracting knowledge and actionable information from event-logs recorded by Process Aware Information Systems (PAIS). PAIS are vulnerable to system failures, malfunctions, fraudulent and undesirable executions resulting in anomalous trails and traces. The flexibility in PAIS resulting in large number of trace variants and the large volume of event-logs makes it challenging to identify anomalous executions and determining their root causes. We propose a framework and a multi-step process to identify root causes of anomalous traces in business process logs. We first transform the event-log into a sequential dataset and apply Window-based and Markovian techniques to identify anomalies. We then integrate the basic event-log data consisting of the Case ID, time-stamp and activity with the contextual data and prepare a dataset consisting of two classes (anomalous and normal). We apply Machine Learning techniques such as decision tree classifiers to extract rules (explaining the root causes) describing anomalous transactions. We use advanced visualization techniques such as parallel plots to present the data in a format making it easy for a process analyst to identify the characteristics of anomalous executions. We conduct a triangulation study to gather multiple evidences to validate the effectiveness and accuracy of our approach.