供应链
供应链管理
分析
灵活性(工程)
差异(会计)
弹性(材料科学)
结构方程建模
实证研究
计算机科学
信息处理理论
过程管理
知识管理
数据科学
信息处理
业务
营销
机器学习
经济
认识论
物理
会计
哲学
神经科学
管理
热力学
生物
作者
Rameshwar Dubey,Angappa Gunasekaran,Stephen J. Childe,Samuel Fosso Wamba,David Roubaud,Cyril Foropon
标识
DOI:10.1080/00207543.2019.1582820
摘要
Supply chain resilience and data analytics capability have generated increased interest in academia and among practitioners. However, existing studies often treat these two streams of literature independently. Our study model reconciles two different streams of literature: data analytics capability as a means to improve information-processing capacity and supply chain resilience as a means to reduce a ripple effect in supply chain or quickly recover after disruptions in the supply chain. We have grounded our theoretical model in the organisational information processing theory (OIPT). Four research hypotheses are tested using responses from 213 Indian manufacturing organisations collected via a pre-tested survey-based instrument. We further test our model using variance-based structural equation modelling, popularly known as PLS-SEM. All of the hypotheses were supported. The findings of our study offer a unique contribution to information systems (IS) and operations management (OM) literature. The findings further provide numerous directions to the supply chain managers. Finally, we note our study limitations and provide further research directions.
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