智力资本
绿色创新
适度
独创性
结构方程建模
业务
探索性研究
结构性资本
产品(数学)
产业组织
营销
经济
人力资本
心理学
金融资本
定性研究
社会学
社会心理学
社会科学
统计
几何学
数学
个人资本
财务
人类学
经济增长
作者
Muhammad Usman Shehzad,Jianhua Zhang,Mir Dost,Muhammad Shakil Ahmad,Sajjad Alam
出处
期刊:Journal of Intellectual Capital
[Emerald (MCB UP)]
日期:2022-11-13
卷期号:24 (4): 974-1001
被引量:52
标识
DOI:10.1108/jic-02-2022-0032
摘要
Purpose Given the importance of environmental protection and the crucial role of manufacturing firms in environmental degradation, the purpose of this research is to investigate the impact of green intellectual capital (GIC) on firms' green performance (GP), mediating effects of ambidextrous green innovation (GI) and moderating role of technological turbulence (TT). Design/methodology/approach The study employed a quantitative research approach with the partial least square structural equation modeling (PLS-SEM) methodology to assess the proposed relationships among the constructs on a sample of 334 executives from 134 medium and large-sized manufacturing firms. Findings The findings show that GIC significantly impacts different aspects of GP, including green management, green process and green product performance. Moreover, exploitative and exploratory GI serves as mediators between GIC and firms' GP. Finally, the findings demonstrate that TT moderation enhanced the effects of GIC on exploratory GI, while decreasing the effects of GIC on exploitative GI. Practical implications The research offers valuable insights and a novel strategy for manufacturing firms and policymakers to mitigate environmental degradation and attain sustainable GP by stimulating ambidextrous GI through green intangible resources. Originality/value This research adds to the current GIC, GI and GP literature by focusing on green environmental issues using the resource-based view (RBV) theory. This research also provides a significant theoretical and practical justification for explaining the relationships by differentiating ambidextrous GI between exploitative and exploratory GI's mediating effects and TT's moderating effects.
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