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On the Use of Log-based Model Checking, Clustering and Machine Learning for Process Behavior Prediction

机译:基于日志的模型检查,群集和机器学习的使用对过程行为预测

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The paper proposes the use of Linear Temporal Logic (LTL) formulas for the behavioral description of the traces corresponding to log files. Such descriptions are used to group similar traces into classes applying standard clustering techniques. The classification results are used to feed a machine learning system able to predict, after a few initial events, the cluster to which an in-execution process is probably going to belong. The prediction model could be used to feed an on-line recommendation system so as to drive the process towards a desired cluster or to prevent it from being part of a non-desired one. The paper describes the used methodology and shows its validity by means of the application to a real log.
机译:本文提出了用于线性时间逻辑(LTL)公式的使用,用于对应于日志文件的迹线的行为描述。这种描述用于将类似的迹线组分组到应用标准聚类技术的类中。分类结果用于馈送能够预测的机器学习系统,在几个初始事件之后,跨执行过程可能将属于的群集。预测模型可用于馈送在线推荐系统,以便将过程驱动到所需的群集,或者防止其成为非所需的群集。本文介绍了使用的方法,并通过应用于实际日志来显示其有效性。

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