基于前景理论的企业绿色技术创新复杂网络演化博弈分析

IF 2.5 3区 经济学 Q2 ECONOMICS
Wu Guancen, Chen Xuan, Niu Xing
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引用次数: 0

摘要

企业绿色技术创新是实现可持续发展和产业转型的关键动力。然而,在复杂的产业网络中,企业如何将主观因素与客观市场条件结合起来,制定有效的创新战略,仍然是一个需要进一步探索的领域。本研究旨在构建基于前景理论的复杂网络演化模型,考察参考点、风险偏好和损失厌恶等主观因素在不同网络环境下对绿色技术创新采用的影响。进一步探讨网络特征(包括拓扑结构、规模和节点度)如何影响创新的扩散。数值分析结果表明,在无标度网络中,降低企业收益参考点、降低损失厌恶、增加风险偏好、扩大网络规模和提高平均节点度,总体上促进了绿色技术创新的采用。在小世界网络中,对参考点的依赖性相对较低,风险偏好和平均节点度的影响更为复杂。此外,适度的重新布线概率可以提高小世界网络中绿色技术创新的采用。这些研究结果为理解企业绿色技术创新的驱动机制提供了新的见解和实践意义。他们进一步强调了针对产业网络的具体特征进行政府干预的重要性,以有效促进绿色技术创新的扩散。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolutionary Game Analysis of Complex Networks in Enterprise Green Technology Innovation From a Prospect Theory Perspective

Green technological innovation in enterprises is a key driving force for achieving sustainable development and industrial transformation. However, how enterprises formulate effective innovation strategies by integrating subjective factors with objective market conditions within complex industrial networks remains an area requiring further exploration. This study aims to construct a complex network evolution model based on prospect theory and examines how subjective factors, such as reference points, risk preferences, and loss aversion, influence the adoption of green technology innovation in different network environments. It further explores how network characteristics, including topology, size, and node degree, affect the diffusion of innovation. Numerical analysis results indicate that in scale-free networks, lowering reference points for enterprise gains, reducing loss aversion, increasing risk preference, expanding network size, and raising average node degree generally promote higher adoption of green technology innovation. In small-world networks, the dependence on reference points is relatively lower, risk preference and average node degree demonstrate more complex impacts. Additionally, a moderate rewiring probability can enhance green technology innovation adoption in small-world networks. These findings provide new insights and practical implications for understanding the driving mechanisms of green technological innovation in enterprises. They further emphasize the importance of government interventions tailored to the specific characteristics of industrial networks to effectively facilitate the diffusion of green technological innovation.

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来源期刊
CiteScore
1.40
自引率
18.20%
发文量
242
期刊介绍: Managerial and Decision Economics will publish articles applying economic reasoning to managerial decision-making and management strategy.Management strategy concerns practical decisions that managers face about how to compete, how to succeed, and how to organize to achieve their goals. Economic thinking and analysis provides a critical foundation for strategic decision-making across a variety of dimensions. For example, economic insights may help in determining which activities to outsource and which to perfom internally. They can help unravel questions regarding what drives performance differences among firms and what allows these differences to persist. They can contribute to an appreciation of how industries, organizations, and capabilities evolve.
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