3.8 Proceedings Paper

Active Anomaly Detection for Key Item Selection in Process Auditing

期刊

PROCESS MINING WORKSHOPS, ICPM 2021
卷 433, 期 -, 页码 167-179

出版社

SPRINGER INTERNATIONAL PUBLISHING AG
DOI: 10.1007/978-3-030-98581-3_13

关键词

Process Mining; Domain Knowledge; Anomaly Detection; Auditing

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Process mining can help auditors retrieve crucial information about transactions. We propose an approach that identifies unusual transactions and updates anomaly scores based on auditors' domain knowledge. Evaluation results indicate that the approach has the potential to support auditors' decision-making process.
Process mining allows auditors to retrieve crucial information about transactions by analysing the process data of a client. We propose an approach that supports the identification of unusual or unexpected transactions, also referred to as exceptions. These exceptions can be selected by auditors as key items, meaning the auditors wants to look further into the underlying documentation of the transaction. The approach encodes the traces, assigns an anomaly score to each trace, and uses the domain knowledge of auditors to update the assigned anomaly scores through active anomaly detection. The approach is evaluated with three groups of auditors over three cycles. The results of the evaluation indicate that the approach has the potential to support the decision-making process of auditors. Although auditors still need to make a manual selection of key items, they are able to better substantiate this selection. As such, our research can be seen as a step forward with respect to the usage of anomaly detection and data analysis in process auditing.

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