Authors
Hoang Thi Cam Nguyen, Suhwan Lee, Jongchan Kim, Jonghyeon Ko, Marco Comuzzi
Publication date
2019/10/1
Journal
Expert Systems with Applications
Volume
131
Pages
132-147
Publisher
Pergamon
Description
Low quality of business process event logs, as determined by anomalous and missing values, is often unavoidable in practical contexts. The output of process analysis that uses event logs with missing and anomalous values is also likely to be of low quality, thus decreasing the quality of any decisions based on it. While previous work has focused on reconstructing missing events in an event log or removing anomalous traces, in this paper we focus on detecting anomalous values and reconstructing missing values at the level of attributes in event logs. We propose methods based on autoencoders, which are a class of neural networks that can reconstruct their own input and are particularly suitable to learn a model of the complex relationships among attribute values in an event log. These methods do not rely on any a-priori knowledge about the business process that generated an event log and are evaluated using …
Total citations
2019202020212022202320242610121412
Scholar articles
HTC Nguyen, S Lee, J Kim, J Ko, M Comuzzi - Expert Systems with Applications, 2019