2023
DOI: 10.2298/csis220110005t
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Matching business process behavior with encoding techniques via meta-learning: An anomaly detection study

Abstract: Recording anomalous traces in business processes diminishes an event log?s quality. The abnormalities may represent bad execution, security issues, or deviant behavior. Focusing on mitigating this phenomenon, organizations spend efforts to detect anomalous traces in their business processes to save resources and improve process execution. However, in many real-world environments, reference models are unavailable, requiring expert assistance and increasing costs. The con15 siderable number of … Show more

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Cited by 3 publications
(1 citation statement)
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“…Therefore, a function that projects event data into another feature space is required. Definition 5 (Encoding [26]). Assuming an event log L, encoding is a function f e that maps L to a feature space, i.e., f e : L → R n , where R n is an n-dimensional real vector space.…”
Section: Preliminariesmentioning
confidence: 99%
“…Therefore, a function that projects event data into another feature space is required. Definition 5 (Encoding [26]). Assuming an event log L, encoding is a function f e that maps L to a feature space, i.e., f e : L → R n , where R n is an n-dimensional real vector space.…”
Section: Preliminariesmentioning
confidence: 99%