Modern software systems are able to record vast amounts of user actions, stored for later analysis. One of the main types of such user interaction data is click data: the digital trace of the actions of a user through the graphical elements of an application, website or software. While readily available, click data is often missing a case notion: an attribute linking events from user interactions to a specific process instance in the software. In this paper, we propose a neural network-based technique to determine a case notion for click data, thus enabling process mining and other process analysis techniques on user interaction data. We describe our method, show its scalability to datasets of large dimensions, and we validate its efficacy through a user study based on the segmented event log resulting from interaction data of a mobility sharing company. Interviews with domain experts in the company demonstrate that the case notion obtained by our method can lead to actionable process insights.
翻译:现代软件系统能够记录大量用户行动,储存供日后分析。这种用户互动数据的主要类型之一是点击数据:通过应用程序、网站或软件的图形元素对用户行动进行数字跟踪。虽然很容易获得,但点击数据往往缺少一个案例概念:将用户互动事件与软件中特定进程实例相联系的属性。在本文件中,我们提议一种神经网络技术,以确定点击数据的案例概念,从而推动进程挖掘和用户互动数据的其他进程分析技术。我们描述我们的方法,显示其可扩缩到大维数据集,我们通过基于流动共享公司互动数据产生的分部分事件日志的用户研究来验证其效力。与公司域专家的访谈表明,我们方法获得的案例概念可以导致可操作的进程洞察力。