Understanding data-driven business model innovation in complexity: A system dynamics approach

IF 10.5 1区 管理学 Q1 BUSINESS Journal of Business Research Pub Date : 2024-09-18 DOI:10.1016/j.jbusres.2024.114967
Fengquan Wang , Jihai Jiang , Federico Cosenz
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Abstract

With the growing complexity of today’s big data environments, data-driven business model innovation has shown the key features of a complex system, such as dynamics and non-linearity, but relevant research mainly draws a static and linear perspective, which necessitates unveiling data-driven business model innovation as a complex system. To this end, building on complexity theory, this study divides the complex system of data-driven business model innovation into three interdependent subsystems (i.e., big data, business model innovation, and data value). Each subsystem has its more granular components and elements. Then, the system dynamics approach is adopted to clarify the coevolution process and its key influencing factors of data-driven business model innovation. By conducting simulation and sensitivity analysis of key variables, the findings suggest that, like the “flywheel effect”, big data insight, value proposition, customer performance, and firm performance increase with time. Among them, big data insight, value proposition, and customer performance have a basically consistent pace. By contrast, firm performance grows much more slowly at the beginning but has a stronger acceleration in later stages. Besides, improving big data analytics cannot directly increase data value. Only when combined with businesses, it can create marginal benefits, among which business matching is the most salient. This study not only contributes to the advancement of complexity theory and data-driven business model innovation but also deepens business model research through holistic and systematic approaches.

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在复杂性中理解数据驱动的商业模式创新:系统动力学方法
随着当今大数据环境的日益复杂,数据驱动的商业模式创新呈现出动态性和非线性等复杂系统的主要特征,但相关研究主要从静态和线性的角度出发,这就有必要将数据驱动的商业模式创新作为一个复杂系统加以揭示。为此,本研究以复杂性理论为基础,将数据驱动的商业模式创新这一复杂系统划分为三个相互依存的子系统(即大数据、商业模式创新和数据价值)。每个子系统都有其更细化的组成部分和要素。然后,采用系统动力学方法阐明数据驱动的商业模式创新的协同演化过程及其关键影响因素。通过对关键变量进行模拟和敏感性分析,研究结果表明,如同 "飞轮效应 "一样,大数据洞察力、价值主张、客户绩效和企业绩效会随着时间的推移而增加。其中,大数据洞察力、价值主张和客户绩效的增长速度基本一致。相比之下,企业绩效的增长在初期要缓慢得多,但在后期会有更强的加速度。此外,提高大数据分析能力并不能直接提升数据价值。只有与业务相结合,才能创造边际效益,其中业务匹配最为突出。本研究不仅有助于推进复杂性理论和数据驱动的商业模式创新,还通过整体性和系统性的方法深化了商业模式研究。
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来源期刊
CiteScore
20.30
自引率
10.60%
发文量
956
期刊介绍: The Journal of Business Research aims to publish research that is rigorous, relevant, and potentially impactful. It examines a wide variety of business decision contexts, processes, and activities, developing insights that are meaningful for theory, practice, and/or society at large. The research is intended to generate meaningful debates in academia and practice, that are thought provoking and have the potential to make a difference to conceptual thinking and/or practice. The Journal is published for a broad range of stakeholders, including scholars, researchers, executives, and policy makers. It aids the application of its research to practical situations and theoretical findings to the reality of the business world as well as to society. The Journal is abstracted and indexed in several databases, including Social Sciences Citation Index, ANBAR, Current Contents, Management Contents, Management Literature in Brief, PsycINFO, Information Service, RePEc, Academic Journal Guide, ABI/Inform, INSPEC, etc.
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