2014
DOI: 10.2308/accr-50807
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A Field Study on the Use of Process Mining of Event Logs as an Analytical Procedure in Auditing

Abstract: There is a large body of accounting research literature examining the use of analytical procedures by auditors and proposing either new types of analytical procedures or more effective ways of implementing existing procedures. In this paper, we demonstrate-using procurement data from a leading global bank-the value added in an audit setting of a new type of analytical procedure: process mining of event logs. In particular, using process mining, we are able to identify numerous transactions that we consider to … Show more

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Cited by 140 publications
(42 citation statements)
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“…A subsequent paper proposed a bipartite model based on extreme value theory and Bayesian analysis to detect journal entries with a low probability of causing a material misstatement [26]. Another stream of literature focusses on business processes and the application of process mining to identify unusual or not well-controlled process instances from ERP system data [27,28]. Schreyer et al described one of the few attempts to apply deep learning in the context of auditing [29].…”
Section: Anomaly Detection In Accounting Data From An Audit Perspectivementioning
confidence: 99%
“…A subsequent paper proposed a bipartite model based on extreme value theory and Bayesian analysis to detect journal entries with a low probability of causing a material misstatement [26]. Another stream of literature focusses on business processes and the application of process mining to identify unusual or not well-controlled process instances from ERP system data [27,28]. Schreyer et al described one of the few attempts to apply deep learning in the context of auditing [29].…”
Section: Anomaly Detection In Accounting Data From An Audit Perspectivementioning
confidence: 99%
“…Van der Aalst et al (2007) were the first ones to discuss process mining from the perspective of applications in industrial practice. Jans et al (2014) applied process mining techniques to enrich audit evidence during a financial statement audit. Vom Brocke and Mendling (2018) present various applications of process mining in hospitals, insurances, software usability analysis, and logistics.…”
Section: Special Issuementioning
confidence: 99%
“…Audit practitioners and other stakeholders suggest that CA affords the IA function many benefits (Jans, Alles, and Vasarhelyi 2014) such as shorter audit cycle times and increased interactions with managers. 1 These benefits suggest that use of CA could result in less opportunism (PwC 2006; AICPA 2012b) due to management's need to more frequently explain significant audit findings to senior management and/or the audit committee (Barr-Pulliam 2017).…”
Section: The Effect Of Assurance Frequency On Management Opportunismmentioning
confidence: 99%