LGAIFeb 10, 2025

Leveraging GPT-4o Efficiency for Detecting Rework Anomaly in Business Processes

arXiv:2502.06918v12 citationsh-index: 42025 3rd International Conference on Foundation and Large Language Models (FLLM)
Originality Synthesis-oriented
AI Analysis

It addresses business process monitoring for organizations, but is incremental as it applies an existing LLM to a specific anomaly detection task.

This paper tackled the problem of detecting rework anomalies in business processes using GPT-4o, achieving up to 97.94% accuracy with few-shot prompting on a synthetic dataset.

This paper investigates the effectiveness of GPT-4o-2024-08-06, one of the Large Language Models (LLM) from OpenAI, in detecting business process anomalies, with a focus on rework anomalies. In our study, we developed a GPT-4o-based tool capable of transforming event logs into a structured format and identifying reworked activities within business event logs. The analysis was performed on a synthetic dataset designed to contain rework anomalies but free of loops. To evaluate the anomaly detection capabilities of GPT 4o-2024-08-06, we used three prompting techniques: zero-shot, one-shot, and few-shot. These techniques were tested on different anomaly distributions, namely normal, uniform, and exponential, to identify the most effective approach for each case. The results demonstrate the strong performance of GPT-4o-2024-08-06. On our dataset, the model achieved 96.14% accuracy with one-shot prompting for the normal distribution, 97.94% accuracy with few-shot prompting for the uniform distribution, and 74.21% accuracy with few-shot prompting for the exponential distribution. These results highlight the model's potential as a reliable tool for detecting rework anomalies in event logs and how anomaly distribution and prompting strategy influence the model's performance.

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