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Metaheuristic Optimization for Automated Business Process Discovery

机译:自动化业务流程发现的核培育优化

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The problem of automated discovery of process models from event logs has been intensely investigated in the past two decades, leading to a range of approaches that strike various trade-offs between accuracy, model complexity, and execution time. A few studies have suggested that the accuracy of automated process discovery approaches can be enhanced by using metaheuristic optimization. However, these studies have remained at the level of proposals without validation on real-life logs or they have only considered one metaheuristics in isolation. In this setting, this paper studies the following question: To what extent can the accuracy of automated process discovery approaches be improved by applying different optimization metaheuristics? To address this question, the paper proposes an approach to enhance automated process discovery approaches with metaheuristic optimization. The approach is instantiated to define an extension of a state-of-the-art automated process discovery approach, namely Split Miner. The paper compares the accuracy gains yielded by four optimization metaheuristics relative to each other and relative to state-of-the-art baselines, on a benchmark comprising 20 real-life logs. The results show that metaheuristic optimization improves the accuracy of Split Miner in a majority of cases, at the cost of execution times in the order of minutes, versus seconds for the base algorithm.
机译:在过去的二十年中,从事件日志中自动发现过程模型的问题已经强烈调查,这导致一系列方法在准确性,模型复杂性和执行时间之间击中各种权衡的方法。一些研究表明,通过使用成胸部优化可以提高自动化过程发现方法的准确性。然而,这些研究仍然处于未经现实日志验证的提案水平,或者它们仅被认为是一个孤立的一个半导体。在此设置中,本文研究了以下问题:通过应用不同的优化成果学,可以改善自动化过程发现方法的准确性程度?为了解决这个问题,本文提出了一种提高了与成群质优化的自动化过程发现方法的方法。该方法实例化以定义最先进的自动化过程发现方法的扩展,即分割矿工。该论文比较了四种优化成式训练的准确性增益相对于彼此相对于彼此以及最先进的基准,在包括20个现实生活日志的基准测试中。结果表明,成逐优化在大多数情况下提高了分裂矿工的准确性,以分钟为单位的执行时间,对基础算法的秒数。

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