Achieving manufacturing supply chain resilience: the role of paradoxical leadership and big data analytics capability

IF 7.3 2区 工程技术 Q1 ENGINEERING, INDUSTRIAL
Ting Xu, Xinyu Liu
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Abstract

PurposeDespite the escalating significance and intricate nature of supply chains, there has been limited scholarly attention devoted to exploring the cognitive processes that underlie supply chain management. Drawing on cognitive-behavioral theory, the authors propose a moderated-mediation model to investigate how paradoxical leadership impacts manufacturing supply chain resilience.Design/methodology/approachBy conducting a two-wave study encompassing 164 supply chain managers from Chinese manufacturing firms, the authors employ partial least squares structural equation modeling (PLS-SEM) to empirically examine and validate the proposed hypotheses.FindingsThe findings indicate that managers' paradoxical cognition significantly affects supply chain resilience, with supply chain ambidexterity acting as a mediating mechanism. Surprisingly, the study findings suggest that big data analytics negatively moderate the effect of paradoxical cognition on supply chain ambidexterity and supply chain resilience, while positively moderating the effect of supply chain ambidexterity on supply chain resilience.Research limitations/implicationsThese findings shed light on the importance of considering cognitive factors and the potential role of big data analytics in enhancing manufacturing supply chain resilience, which enriches the study of behavioral operations.Practical implicationsThe results offer managerial guidance for leaders to use paradoxical cognition frames and big data analytics properly, offering theoretical insight for future research in manufacturing supply chain resilience.Originality/valueThis is the first empirical research examining the impact of paradoxical leadership on supply chain resilience by considering the role of big data analytics and supply chain ambidexterity.
实现制造业供应链复原力:矛盾领导力和大数据分析能力的作用
目的尽管供应链的重要性和复杂性不断提升,但学术界对供应链管理认知过程的研究却十分有限。作者借鉴认知行为理论,提出了一个调节-中介模型,以研究悖论型领导力如何影响制造业供应链的适应力。设计/方法/途径通过对中国制造企业的 164 名供应链经理进行两波研究,作者采用偏最小二乘结构方程模型(PLS-SEM)对提出的假设进行了实证检验和验证。研究结果研究结果表明,管理者的悖论认知会显著影响供应链复原力,而供应链灵活性则是中介机制。令人惊讶的是,研究结果表明,大数据分析负向调节了矛盾认知对供应链灵活性和供应链恢复力的影响,而正向调节了供应链灵活性对供应链恢复力的影响。研究局限/启示这些研究结果阐明了考虑认知因素的重要性以及大数据分析在增强制造业供应链恢复力方面的潜在作用,丰富了行为运营研究。实践意义研究结果为领导者正确使用悖论认知框架和大数据分析提供了管理指导,为未来制造业供应链复原力的研究提供了理论启示。原创性/价值这是首次通过考虑大数据分析和供应链灵活性的作用,对悖论领导力对供应链复原力的影响进行实证研究。
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来源期刊
Journal of Manufacturing Technology Management
Journal of Manufacturing Technology Management Engineering-Control and Systems Engineering
CiteScore
16.30
自引率
7.90%
发文量
45
期刊介绍: The Journal of Manufacturing Technology Management (JMTM) aspires to be the premier destination for impactful manufacturing-related research. JMTM provides comprehensive international coverage of topics pertaining to the management of manufacturing technology, focusing on bridging theoretical advancements with practical applications to enhance manufacturing practices. JMTM seeks articles grounded in empirical evidence, such as surveys, case studies, and action research, to ensure relevance and applicability. All submissions should include a thorough literature review to contextualize the study within the field and clearly demonstrate how the research contributes significantly and originally by comparing and contrasting its findings with existing knowledge. Articles should directly address management of manufacturing technology and offer insights with broad applicability.
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