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A composite methodology for supporting collaboration pattern discovery via semantic enrichment and multidimensional analysis

机译:一种通过语义丰富和多维分析支持协作模式发现的复合方法

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摘要

Classical process discovery approaches usually investigate logs generated by processes in order to mine and discovery corresponding process schemas. When the collaboration processes case is addressed, such approaches turn to be poorly effective, due to the fact that: (i) logs of collaboration processes are usually stored in heterogeneous data storages which also expose different data types; (ii) it is not easy and direct to derive a common analysis model from such logs. As a consequence, classical methodologies usually fail. In order to fulfill this gap, in this paper we describe a composite methodology that combines semantics-based techniques and multidimensional analysis paradigms to support effective and efficient collaboration process discovery from log data.
机译:传统的流程​​发现方法通常会调查流程生成的日志,以挖掘和发现相应的流程模式。在解决协作流程的情况下,由于以下事实,这种方法的效果很差:(i)协作流程的日志通常存储在异构数据存储中,这些数据存储也暴露了不同的数据类型; (ii)从此类日志中导出通用分析模型并不容易且直接。结果,经典方法通常会失败。为了弥补这一差距,在本文中,我们描述了一种组合方法,该方法结合了基于语义的技术和多维分析范式,以支持从日志数据中发现有效和高效的协作过程。

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