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Algorithms for operational decision-making: An absorptive capacity perspective on the process of converting data into relevant knowledge

机译:运行决策的算法:对将数据转换为相关知识的过程的吸收能力视角

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The organisational mechanisms through which algorithms can be exploited in the process of converting data into relevant knowledge for operational decision-making have not yet been fully investigated from an absorptive capacity perspective. Previous studies underlined a rise in new digital specialised roles, but they said little about how the organisational knowledge and structures should be redesigned to take advantage of these data-rich operational environments. In this article, we present the findings of a case study on the way algorithms can be exploited in the electrical sector to shed light on these issues. We then develop a framework to theorise how the organisational mechanisms associated with absorptive capacity influence the way algorithms can be exploited to convert data into relevant knowledge for operational decision-making. Our emerging framework reveals that to convert data into relevant knowledge for operational decision-making, the involvement of line employees and liaison roles are required to introduce system-level knowledge that algorithms are able to capture less effectively. Additionally, more formalisation is needed in operational work to ensure the quality of the data that feed such algorithms. Finally, socialisation tactics facilitate the convergence between the knowledge produced from algorithms and the experiential knowledge of line employees.
机译:算法可以在将数据转换为操作决策的相关知识中,尚未从吸收能力的角度完全调查该组织机制。以前的研究强调了新的数字专业角色的增加,但他们对如何重新设计组织知识和结构来利用这些数据丰富的运营环境。在本文中,我们介绍了在电气扇区中可以利用算法的方式研究的调查结果,以阐明这些问题。然后,我们制定了一个框架,以了解与吸收能力影响相关的组织机制如何利用算法将数据转换为操作决策的相关知识。我们的新兴框架揭示了将数据转换为业务决策的相关知识,员工和联络角色的参与是需要引入系统级知识,即算法能够少有效捕捉。此外,在操作工作中需要更正式化,以确保提供此类算法的数据的质量。最后,社会化策略促进了从算法产生的知识与线员工的经验知识之间的融合。

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