大数据分析能力对新产品性能的影响——高科技企业协同能力和团队协作的影响

IF 1.9 4区 管理学 Q3 MANAGEMENT Chinese Management Studies Pub Date : 2022-12-01 DOI:10.1108/cms-02-2022-0053
Chi-Hsiang Chen
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引用次数: 1

摘要

目的随着人工智能的应用越来越普遍,许多高科技公司都采用人工智能应用来应对新出现的社会、技术和环境挑战。大数据分析能力在人工智能应用过程中变得越来越重要。基于基于资源的观点和计划行为理论,本研究旨在研究BDAC和协作如何影响新产品性能。实际上,和谐工作团队对于创造管理协同效应尤为重要,这一实证分析表明了BDAC和合作对NPP的重要性。设计/方法/方法本文重点关注在运营中应用人工智能的公司的绩效。这项研究收集了包括中国和台湾在内的大中华区企业的数据,因为大中华区目前是制造过程中人工智能应用的半导体、电子和电气产品的领先制造商。采用验证性因子分析和结构方程建模进行统计分析。研究结果表明,BDAC与人工智能应用中的协作能力(CC)呈正相关,而与团队协作(TC)无关。CC与TC呈正相关,CC和TC均与NPP呈正相关。此外,使用Sobel t检验检验了中介效应,这表明CC是BDAC对NPP影响的重要中介。实际含义BDAC的战略实施和协作可以使企业在外部环境的驱动下使用人工智能来提高其NPP,从而进一步提高NPP。这些过程表明,人工智能和BDAC对于公司合作的成功和在全球竞争中提高NPP的有效管理都至关重要。原创性/价值本研究引入BDAC的概念来解释CC和TC之间的关系,因为它们与NPP有关。本研究对研究结果的理论和实践意义进行了讨论,并为BDAC的管理提供了一个框架。
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Influence of big data analytical capability on new product performance – the effects of collaboration capability and team collaboration in high-tech firm
Purpose As the application of artificial intelligence (AI) becomes more prevalent, many high-tech firms have employed AI applications to deal with emerging societal, technological and environmental challenges. Big data analytical capability (BDAC) has become increasingly important in the AI application processes. Drawing upon the resource-based view and the theory of planned behavior, this study aims to investigate how BDAC and collaboration affect new product performance (NPP). Practically, a harmonic working team is particularly important for creating management synergies, this empirical analysis demonstrates the importance of BDAC and collaboration for NPP. Design/methodology/approach This paper focuses on the performance of firms that applied AI in their operations. This study collected data from firms in Greater China, including China and Taiwan, as Greater China is currently the leading manufacturer of semiconductor, electronic and electric products for AI applications in the manufacturing process. Confirmatory factor analysis and structural equation modeling is employed for statistical analysis. Findings The analytical results indicate that BDAC positively relates to collaboration capability (CC) in AI applications but not to team collaboration (TC). CC positively correlates with TC, and both CC and TC positively correlate with NPP. Further, the mediating effect was examined using the Sobel t-test, which reveals that CC is a significant mediator in the influence of BDAC on NPP. Practical implications The strategic implementation of BDAC and collaboration can allow an enterprise to improve its NPP when driven by the external environment to use AI, which further enhances NPP. These processes indicate that AI and BDAC are both crucial for the success of a company’s collaboration and for effective management to improve NPP in the face of global competition. Originality/value This study introduces the concept of BDAC to explain the relationship between CC and TC, as they pertain to NPP. This study presented a discussion of the theoretical and practical implications of the research findings and could provide a framework for managing BDAC.
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CiteScore
3.90
自引率
13.60%
发文量
63
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