Sensible organizations: technology and methodology for automatically measuring organizational behavior.

Daniel Olguin Olguin, Benjamin N Waber, Taemie Kim, Akshay Mohan, Koji Ara, Alex Pentland
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引用次数: 424

Abstract

We present the design, implementation, and deployment of a wearable computing platform for measuring and analyzing human behavior in organizational settings. We propose the use of wearable electronic badges capable of automatically measuring the amount of face-to-face interaction, conversational time, physical proximity to other people, and physical activity levels in order to capture individual and collective patterns of behavior. Our goal is to be able to understand how patterns of behavior shape individuals and organizations. By using on-body sensors in large groups of people for extended periods of time in naturalistic settings, we have been able to identify, measure, and quantify social interactions, group behavior, and organizational dynamics. We deployed this wearable computing platform in a group of 22 employees working in a real organization over a period of one month. Using these automatic measurements, we were able to predict employees' self-assessments of job satisfaction and their own perceptions of group interaction quality by combining data collected with our platform and e-mail communication data. In particular, the total amount of communication was predictive of both of these assessments, and betweenness in the social network exhibited a high negative correlation with group interaction satisfaction. We also found that physical proximity and e-mail exchange had a negative correlation of r = -0.55 (p 0.01), which has far-reaching implications for past and future research on social networks.

明智的组织:自动测量组织行为的技术和方法。
我们提出了一个可穿戴计算平台的设计、实现和部署,用于测量和分析组织设置中的人类行为。我们建议使用可穿戴电子徽章,能够自动测量面对面互动的数量、对话时间、与其他人的身体接近程度和身体活动水平,以捕捉个人和集体的行为模式。我们的目标是能够理解行为模式如何塑造个人和组织。通过在自然环境中长时间在一大群人身上使用传感器,我们已经能够识别、测量和量化社会互动、群体行为和组织动态。在一个月的时间里,我们将这个可穿戴计算平台部署在一个真实组织的22名员工中。使用这些自动测量,我们能够通过将收集到的数据与我们的平台和电子邮件通信数据相结合,预测员工对工作满意度的自我评估以及他们对团队互动质量的感知。特别是,交流的总量对这两种评估都有预测作用,而社交网络中的中间性与群体互动满意度呈高度负相关。我们还发现,物理距离与电子邮件交流呈负相关(r = -0.55 (p 0.01)),这对过去和未来的社交网络研究具有深远的意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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