Antecedents and performance outcomes of employees’ data analytics skills: an adaptation structuration theory-based empirical investigation

IF 7.3 2区 管理学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS European Journal of Information Systems Pub Date : 2023-11-02 DOI:10.1080/0960085X.2022.2078235
Zhen Shao, Jose Benitez, Jing Zhang, Hanqing Zheng, Aseel Ajamieh
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Abstract

ABSTRACT How do organizations develop and manage employees’ data analytics skills to create business value and enhance organizational competitive advantage? In order to address this prominent and critical research question for IS research, we conceptualize and operationalize data analytics skills at the individual level and develop a nomological network model to examine its critical antecedents and outcomes from the lens of adaptation structuration theory. We test our core proposition and research model using survey data collected from 258 frontline employees of three data-intensive research institutes in China. We discover that data-driven culture, data analytics affordance, and individual absorptive capacity are positively associated with employees’ data analytics skills, which in turn, have positive influences on their task and innovative performance. We classify the employees into digital immigrants and digital natives based on age and examine the different influences of three salient antecedents on data analytics skills between the two groups. The research findings suggest that data-driven culture plays a more significant role in driving data analytics skills for digital immigrants, while data analytics affordance exhibits a stronger influence on data analytics skills for digital natives.
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员工数据分析技能的前因和绩效结果:基于适应结构化理论的实证研究
摘要 组织如何开发和管理员工的数据分析技能,以创造商业价值和增强组织竞争优势?为了解决这一信息系统研究中突出而关键的研究问题,我们在个人层面上对数据分析技能进行了概念化和可操作化,并从适应结构化理论的视角建立了一个名义学网络模型来研究其关键的前因和结果。我们使用从中国三家数据密集型研究所的 258 名一线员工中收集的调查数据,检验了我们的核心命题和研究模型。我们发现,数据驱动文化、数据分析承受能力和个人吸收能力与员工的数据分析技能呈正相关,而数据分析技能又反过来对员工的任务和创新绩效产生积极影响。我们根据年龄将员工分为数字移民和数字原住民两类,并研究了两类员工的三个显著前因对数据分析技能的不同影响。研究结果表明,数据驱动文化在推动数字移民的数据分析技能方面发挥着更重要的作用,而数据分析能力对数字原住民数据分析技能的影响更大。
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来源期刊
European Journal of Information Systems
European Journal of Information Systems 工程技术-计算机:信息系统
CiteScore
23.10
自引率
4.20%
发文量
52
审稿时长
>12 weeks
期刊介绍: The European Journal of Information Systems offers a unique European perspective on the theory and practice of information systems for a global readership. We actively seek first-rate articles that offer a critical examination of information technology, covering its effects, development, implementation, strategy, management, and policy.
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