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How People Really (Like To) Work: Comparative Process Mining to Unravel Human Behavior

机译:人们如何(真正喜欢)工作:比较过程挖掘以揭示人类行为

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Software forms an integral part of the most complex artifacts built by humans. Communication, production, distribution, healthcare, transportation, banking, education, entertainment, government, and trade all increasingly rely on systems driven by software. Such systems may be used in ways not anticipated at design time as the context in which they operate is constantly changing and humans may interact with them an unpredictable manner. However, at the same time, we are able to collect unprecedented collections of event data describing what people and organizations are actually doing. Recent developments in process mining make it possible to analyze such event data, thereby focusing on behavior rather than correlations and simplistic performance indicators. For example, event logs can be used to automatically learn end-to-end process models. Next to the automated discovery of the real underlying process, there are process mining techniques to analyze bottlenecks, to uncover hidden inefficiencies, to check compliance, to explain deviations, to predict performance, and to guide users towards "better" processes. Process mining reveals how people really work and often reveals what they would really like to do. Event-based analysis may reveal workarounds and remarkable differences between people and organizar tions. This keynote paper highlights current research on comparative process mining. One can compare event data with normative process models and see where people deviate. Some of these deviations may be positive and one can learn from them. Other deviations may reveal inefficiencies, design flaws, or even fraudulent behavior. One can also use process cubes to compare different systems or groups of people. Through slicing, dicing, rolling-up, and drilling-down we can view event data from different angles and produce process mining results that can be compared.
机译:软件是人类构建的最复杂工件的组成部分。通信,生产,分销,医疗保健,运输,银行,教育,娱乐,政府和贸易越来越依赖于软件驱动的系统。此类系统可能会以设计时无法预期的方式使用,因为它们的运行环境不断变化,并且人类可能会以不可预测的方式与之交互。但是,与此同时,我们能够收集前所未有的事件数据集合,这些事件数据描述了人员和组织的实际活动。流程挖掘的最新发展使分析此类事件数据成为可能,从而将重点放在行为上,而不是相关性和简单的性能指标上。例如,事件日志可用于自动学习端到端流程模型。除了自动发现真正的基础流程之外,还有一些流程挖掘技术可以分析瓶颈,发现隐藏的低效率,检查合规性,解释偏差,预测性能并指导用户迈向“更好”的流程。流程挖掘揭示了人们的实际工作方式,并经常揭示了他们真正想做的事情。基于事件的分析可能会揭示变通方法和人员与组织之间的显着差异。本主题演讲重点介绍了当前对比较过程挖掘的研究。可以将事件数据与标准流程模型进行比较,并查看人们的偏离情况。这些偏差中的某些偏差可能是正的,并且可以从中学习。其他偏差可能会显示效率低下,设计缺陷甚至欺诈行为。人们还可以使用过程多维数据集来比较不同的系统或人群。通过切片,切块,向上滚动和向下钻取,我们可以从不同角度查看事件数据,并产生可以比较的过程挖掘结果。

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