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Predicting Remaining Cycle Time from Ongoing Cases: A Survival Analysis-Based Approach

机译:从持续情况下预测剩余的循环时间:基于生存分析的方法

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Predicting the remaining cycle time of running cases is one important use case of predictive process monitoring. Different approaches that learn from event logs, e.g., relying on an existing representation of the process or leveraging machine learning approaches, have been proposed in literature to tackle this problem. Machine learning-based techniques have shown superiority over other techniques with respect to the accuracy of the prediction as well as freedom from knowledge about the underlying process models generating the logs. However, all proposed approaches learn from complete traces. This might cause delays in starting new training cycles as usually process instances might last over long time periods of hours, days, weeks or even months. In this paper, we propose a machine learning approach that can learn from incomplete ongoing traces. Using a time-aware survival analysis technique, we can train a neural network to predict the remaining cycle time of a running case. Our approach accepts as input both complete and incomplete traces. We have evaluated our approach on different real-life datasets and compared it with a state of the art baseline. Results show that our approach, in many cases, is able to outperform the baseline approach both in accuracy and training time.
机译:预测运行情况的剩余循环时间是预测过程监测的一个重要用例。从事日志中学习的不同方法,例如,依靠过程或利用机器学习方法的现有表示,以解决这个问题。基于机器的基于机器的技术在关于预测的准确性以及与生成日志的底层流程模型的知识的自由度,已经显示出优越性。但是,所有提出的方法都从完整的迹线中学到。这可能导致启动新培训周期的延迟,通常流程实例可能持续时间长时间,天,周甚至几个月。在本文中,我们提出了一种机器学习方法,可以从不完整的持续迹线学习。使用时间感知的生存分析技术,我们可以训练神经网络来预测运行情况的剩余循环时间。我们的方法是接受完整和不完整的迹线的输入。我们在不同的现实实例数据集中评估了我们的方法,并将其与艺术基线的状态进行比较。结果表明,我们的方法在许多情况下,能够以准确性和培训时间越优越基线方法。

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