Conformance checking allows organizations to verify whether their IT system complies with the prescribed behavior by comparing process executions recorded by the IT system against a process model (representing the normative behavior). However, most of the existing techniques are only able to identify low-level deviations, which provide a scarce support to investigate what actually happened when a process execution deviates from the specification. In this work, we introduce an approach to extract recurrent deviations from historical logging data and generate anomalous patterns representing high-level deviations. These patterns provide analysts with a valuable aid for investigating nonconforming behaviors; moreover, they can be exploited to detect high-level deviations during conformance checking. To identify anomalous behaviors from historical logging data, we apply frequent subgraph mining techniques together with an ad-hoc conformance checking technique. Anomalous patterns are then derived by applying frequent items algorithms to determine highly-correlated deviations, among which ordering relations are inferred. The approach has been validated by means of a set of experiments.

Subgraph Mining for Anomalous Pattern Discovery in Event Logs / Genga, Laura; Potena, Domenico; Martino, Orazio; Alizadeh, Mahdi; Diamantini, Claudia; Zannone, Nicola. - STAMPA. - 10312:(2017), pp. 181-197. [10.1007/978-3-319-61461-8_12]

Subgraph Mining for Anomalous Pattern Discovery in Event Logs

POTENA, Domenico;DIAMANTINI, Claudia;
2017-01-01

Abstract

Conformance checking allows organizations to verify whether their IT system complies with the prescribed behavior by comparing process executions recorded by the IT system against a process model (representing the normative behavior). However, most of the existing techniques are only able to identify low-level deviations, which provide a scarce support to investigate what actually happened when a process execution deviates from the specification. In this work, we introduce an approach to extract recurrent deviations from historical logging data and generate anomalous patterns representing high-level deviations. These patterns provide analysts with a valuable aid for investigating nonconforming behaviors; moreover, they can be exploited to detect high-level deviations during conformance checking. To identify anomalous behaviors from historical logging data, we apply frequent subgraph mining techniques together with an ad-hoc conformance checking technique. Anomalous patterns are then derived by applying frequent items algorithms to determine highly-correlated deviations, among which ordering relations are inferred. The approach has been validated by means of a set of experiments.
2017
New Frontiers in Mining Complex Patterns: 5th International Workshop, Revised Selected Papers
978-3-319-61460-1
978-3-319-61461-8
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11566/250052
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