用身体传感器网络映射组织动力学

Wen Dong, Daniel Olguín Olguín, Benjamin N. Waber, T. Kim, A. Pentland
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引用次数: 18

摘要

本文展示了一种将组织动力学生成模型和传感器网络数据与随机方法相结合的新方法。生成模型指定组织绩效如何与谁与谁互动以及谁执行什么相关。传感器网络数据跟踪谁与谁交互以及谁在组织内执行什么,随机方法通过蒙特卡罗方法将多代理模型适合于数据。本文中使用的数据集记录了数据服务中心的员工如何处理不同难度级别的任务——用社会计量徽章跟踪一个月——并记录了绩效和行为之间的联系。本文展示了利用身体传感器网络数据改善组织动力学的潜力,因此也表明需要在不同类型组织的数据集上系统地对差异组织动力学模型进行基准测试。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mapping Organizational Dynamics with Body Sensor Networks
This paper demonstrates a novel approach that combines generative models of organizational dynamics and sensor network data with a stochastic method. Generative models specify how organizational performance is related to who interacts with whom and who performs what. Sensor network data track who interacts with whom and who performs what within an organization, and the stochastic methodology fits multi-agent models to data through the Monte Carlo method. The data set used in this paper documents how employees in a data service center handle tasks with different difficulty levels - tracked with sociometric badges for one month - and documents links between performance and behavior. This paper demonstrates the potential for improving organizational dynamics with body sensor network data, and therefore also shows the need to systematically benchmark differential organizational dynamics models on data sets for different types of organizations.
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