中断管理的组织数字足迹:数据驱动的方法

T. Kalliomäki-Levanto, Antti Ukkonen
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引用次数: 0

摘要

中断在知识工作中很普遍,其负面影响促使研究寻找中断管理的方法。然而,这些方法几乎总是把中断的责任和负担留给知识工作者个人。另一方面,中断管理的系统级方法有可能减轻员工的负担。本文的目的是为系统级中断管理铺平道路,表明有关工作实际特征的数据可用于识别中断情况。设计/方法/方法作者提供了一个使用信息和通信技术(ICT)系统和机器学习的跟踪数据来识别中断情况的演示。他们通过要求两家公司的员工通过每周报告提供有关情况和中断的信息,进行了自动数据收集的“模拟”。他们获得了关于四个组织要素的信息:任务、人员、技术和结构,并使用分类树来显示这些数据可以用于识别中断程度不同的情况。研究结果表明,从跟踪数据中识别中断情况是可能的。在对A公司为期八周的观察期间,他们确定了7种情况,在B公司确定了4种情况,每种情况发生中断的概率不同。原创性/价值作者通过使用“任务”作为桥梁概念,将员工级别的中断管理扩展到系统级别。任务是传统中断研究和莱维特1965年社会技术模型的核心概念,该模型允许我们将其他组织要素(人员,结构和技术)与中断联系起来。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An organizational digital footprint for interruption management: a data-driven approach
PurposeInterruptions are prevalent in knowledge work, and their negative consequences have driven research to find ways for interruption management. However, these means almost always leave the responsibility and burden of interruptions with individual knowledge workers. System-level approaches for interruption management, on the other hand, have the potential to reduce the burden on employees. This paper’s objective is to pave way for system-level interruption management by showing that data about factual characteristics of work can be used to identify interrupting situations.Design/methodology/approachThe authors provide a demonstration of using trace data from information and communications technology (ICT)-systems and machine learning to identify interrupting situations. They conduct a “simulation” of automated data collection by asking employees of two companies to provide information concerning situations and interruptions through weekly reports. They obtain information regarding four organizational elements: task, people, technology and structure, and employ classification trees to show that this data can be used to identify situations across which the level of interruptions differs.FindingsThe authors show that it is possible to identifying interrupting situations from trace data. During the eight-week observation period in Company A they identified seven and in Company B four different situations each having a different probability of occurrence of interruptions.Originality/valueThe authors extend employee-level interruption management to the system-level by using “task” as a bridging concept. Task is a core concept in both traditional interruption research and Leavitt's 1965 socio-technical model which allows us to connect other organizational elements (people, structure and technology) to interruptions.
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