MarkTechPost@AI 2024年08月21日
This AI Paper Proposes Utilizing the AI-Based Agents Workflow (AgWf) Paradigm to Enhance the Effectiveness of Process Mining (PM) on LLMs
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为了解决传统流程挖掘方法在处理复杂场景时面临的挑战,研究人员提出了一种基于代理工作流(AgWf)的全新范式,该范式利用人工智能技术,将复杂任务分解成更小的子任务,并由专门的代理来处理。AgWf通过结合确定性工具和大型语言模型的强大推理能力,可以有效地优化流程挖掘任务,并提高结果的准确性和可靠性。

🤖 **代理工作流的优势:** AgWf将复杂任务分解成更小的子任务,并由专门的代理来处理,每个代理都配备了执行特定任务所需的材料和认知资源。这种分工合作的方式可以确保每个步骤都得到有效执行,并最大程度地提高最终结果的质量。

📊 **提升流程挖掘效率:** AgWf在处理需要语义理解和代码执行的复杂流程挖掘任务中表现出色,例如,在异常检测和代码生成方面,AgWf能够将任务分配给不同的专业代理,从而提高结果的准确性和可靠性。

📈 **超越传统方法:** AgWf在处理需要公平性评估的任务时,也比基于大型语言模型的传统方法表现更好,实现了更高的准确率。在一些基准测试中,AgWf的准确率比现有方法提高了高达20%。

🚀 **推动流程挖掘发展:** AgWf是流程挖掘领域的一项重要进展,它通过将复杂任务分解成更小的子任务,并利用人工智能技术和确定性方法的结合,有效地提高了流程挖掘的准确性和可靠性,为优化企业流程提供了强有力的工具。

Process mining is a part of data science concerned with analyzing event logs produced by information systems to learn about business processes. This paper addresses process mining techniques, which involve process discovery. All these are very important in organizations, especially in workflow optimization and enhancing efficiency and potential areas for improvement.

One major problem in process mining is dealing with complex scenarios that call for advanced reasoning and decision-making. Many traditional tools and approaches must be adapted when tasks need to be broken down into parts that want detailed execution of code and semantic understanding to infer meaningful insights from the data. These complex problems must be solved with available techniques likely to result in suboptimal process analysis and improvement outcomes.

Existing process mining techniques primarily include using Large Language Models for generating textual insights or executable code for process artifact analysis. Such models can detect anomalies, root causes, and fairness issues in data. However, They become less flexible when tasked to do more complex scenarios that require combining different skills. For example, even if LLMs can generate code or separately provide semantic insights, they usually must appropriately integrate these functions when the task requires both. This existing capability gap requires a more advanced approach to better manage and execute these complex tasks.

The AI-Based Agents Workflow paradigm is a new perspective on process mining enhancement with the help of LLMs, which researchers put forward. This methodology was achieved through collaboration between RWTH Aachen University, Fraunhofer FIT in Germany, the University of Sousse in Tunisia, Process Insights in Hamburg, Eindhoven University of Technology, and Microsoft. AgWf supports the decomposition of complex tasks into easier and more manageable workflows. This approach will optimize process mining tasks that traditional methods struggle with by integrating deterministic tools that give consistent results with the advanced reasoning feats of LLMs. This new methodology is a big step toward applying AI to process mining.

The AI-based agent’s workflow breaks down complex tasks into smaller units with more focus, and specialized agents handle each. These agents have been equipped with material and cognitive resources for the execution of their particular job, ensuring that every step of the process is carried out right. The workflow is designed to maximize the quality of the overall result by guaranteeing that each agent performs its task effectively before passing the information on to the next stage. For example, in case of a problem in anomaly detection and code generation, the AgWf would give the tasks to different specialized agents. The final results are more accurate and reliable due to the division of labor, increasing efficiency.

The AgWf methodology was tested on several complex process mining tasks; the results were impressive. It improved handling scenarios that require semantic understanding and considerably enhanced the execution of the code. The approach ensured correct and more accurate decomposition of tasks, improving the overall quality of results. At tasks that required fairness assessments, the AgWf methodology outperformed traditional methods based on LLM, achieving a higher accuracy rate. For example, the methodology improved task accuracy by as high as 20% compared to existing methods in some benchmark tests. The coordinating authors of Microsoft and others noted that this approach would finally help overcome the limitations of current process mining techniques, providing a more robust solution for complex tasks.

The AI-Based Agents Workflow is an advancement in process mining. This is a very powerful paradigm because the challenges created by traditional approaches are decomposed into complex tasks through AI-based tools combined with deterministic methods. The team’s research from institutions like RWTH Aachen University and Microsoft shows that AgWf can enhance accuracy and reliability for process mining by a large margin, which can be instrumental in organizations aiming to optimize their business processes.


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流程挖掘 人工智能 代理工作流 大型语言模型
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