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Semantic fuzzy mining: Enhancement of process models and event logs analysis from syntactic to conceptual level

机译:语义模糊挖掘:从句法层面到概念层面的流程模型和事件日志分析的增强

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Semantic-based process mining is a useful technique towards improving information values of process models and analysis by means of conceptualization. The conceptual system of analysis allows the meaning of process elements to be enhanced through the use of property characteristics and classification of discoverable entities, to generate inference knowledge that can be used to determine useful patterns and predict future outcomes. The work in this paper presents a Semantic-Fuzzy mining approach that makes use of labels within event log about real-time process to provide a method which allows for mining and improved process analysis of the resulting process models through semantic - annotation, representation and reasoning. Qualitatively, the study shows by using a case study of Learning Process - how data from various process domains can be extracted, semantically prepared, and transformed into mining executable formats to support the discovery, monitoring and enhancement of real-time domain processes through further semantic analysis of the discovered models. Also, the paper quantitatively assess the level of accuracy of the classification results to predict behaviours of unobserved instances within the process knowledge-base by determing which traces are fitting or not fitting the discovered model by using a training set and lest log for the cross-validation experiment. Accordingly, the work looks at the sophistication of the proposed semantic-based approach and the discovered models, validation of the classification results and their influence compared to other existing benchmark techniques and algorithms for process mining. The experimental results and data validation ends with the supposition that a system which is formally encoded with semantic labelling (annotation), semantic representation (ontology) and semantic reasoning (reasoner) has the capability to lift process mining analysis and outcomes from the syntactic level to a much more conceptual level, resulting in a mining approach that is able to induce new knowledge based on previously unobserved behaviours and a more intuitive and easy way to envisage the relationships between the process instances found within the available event data logs and the discovered process models.
机译:基于语义的过程挖掘是一种通过概念化提高过程模型和分析信息价值的有用技术。分析的概念系统允许通过使用属性特征和可发现实体的分类来增强过程元素的含义,以生成可用于确定有用模式和预测未来结果的推理知识。本文的工作提出了一种语义模糊的挖掘方法,该方法利用事件日志中有关实时过程的标签来提供一种方法,该方法允许通过语义-注释,表示和推理对所得过程模型进行挖掘和改进过程分析。 。定性地,该研究使用学习过程的案例研究进行了展示-如何从各种过程域中提取数据,进行语义准备以及如何将其转换为挖掘的可执行格式,以通过进一步的语义支持发现,监视和增强实时域过程分析发现的模型。此外,本文通过使用交叉集的训练集和测试日志来确定哪些迹线适合或不适合发现的模型,从而定量评估分类结果的准确性水平,以预测过程知识库中未观察到的实例的行为。验证实验。因此,与其他现有的用于流程挖掘的基准技术和算法相比,本文着眼于所提出的基于语义的方法和所发现的模型的先进性,分类结果的验证及其影响。实验结果和数据验证以这样一个假设为结束:一个由语义标签(注释),语义表示(本体论)和语义推理(推理者)正式编码的系统具有将过程挖掘分析和结果从句法层面提升到更高的概念层次,从而产生一种挖掘方法,该方法能够基于先前未观察到的行为来引入新知识,并且以更直观,更轻松的方式来设想在可用事件数据日志中发现的流程实例与发现的流程模型之间的关系。

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