Anomaly Correction of Business Processes Using Transformer Autoencoder
- URL: http://arxiv.org/abs/2404.10211v1
- Date: Tue, 16 Apr 2024 01:45:18 GMT
- Title: Anomaly Correction of Business Processes Using Transformer Autoencoder
- Authors: Ziyou Gong, Xianwen Fang, Ping Wu,
- Abstract summary: We propose a business process anomaly correction method based on Transformer autoencoder.
By using self-attention mechanism and autoencoder structure, it can efficiently process event sequences of arbitrary length.
The experimental results on several real-life event logs show that the proposed method is superior to the previous methods.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Event log records all events that occur during the execution of business processes, so detecting and correcting anomalies in event log can provide reliable guarantee for subsequent process analysis. The previous works mainly include next event prediction based methods and autoencoder-based methods. These methods cannot accurately and efficiently detect anomalies and correct anomalies at the same time, and they all rely on the set threshold to detect anomalies. To solve these problems, we propose a business process anomaly correction method based on Transformer autoencoder. By using self-attention mechanism and autoencoder structure, it can efficiently process event sequences of arbitrary length, and can directly output corrected business process instances, so that it can adapt to various scenarios. At the same time, the anomaly detection is transformed into a classification problem by means of selfsupervised learning, so that there is no need to set a specific threshold in anomaly detection. The experimental results on several real-life event logs show that the proposed method is superior to the previous methods in terms of anomaly detection accuracy and anomaly correction results while ensuring high running efficiency.
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