Zhang Ditian, Tang Chun, Tang Pan
School of Economics and Management, Southeast University, Nanjing, Jiangsu 211189, China.
School of Economics and Management, Southeast University, Nanjing, Jiangsu 211189, China.
J Environ Manage. 2025 Jan;373:123463. doi: 10.1016/j.jenvman.2024.123463. Epub 2024 Dec 17.
This study combines an asymmetric TVP-VAR model with interpretable machine learning algorithms to confirm the presence of asymmetries in spillover effects within China's green finance market and to identify the macroeconomic drivers behind these effects. The key findings are as follows: First, China's green finance market has become a prominent transmitter of energy risk spillovers, with a significant asymmetry in its external effects-negative return spillovers exceed positive ones. This asymmetry is especially evident during extreme events like the 2014 oil price crash and the COVID-19 pandemic, indicating that investors in this market are more responsive to negative news. Second, using interpretable machine learning models, we identify the macroeconomic factors that significantly impact spillover effects in the green finance market, with Economic Policy Uncertainty and the U.S. Energy Price Index standing out as particularly influential. Third, while the drivers of positive and negative spillovers differ, their directional impact is consistent across both. These insights are crucial for investors aiming to diversify portfolios and for policymakers managing risks in asymmetric market conditions.
本研究将非对称时变参数向量自回归(TVP-VAR)模型与可解释机器学习算法相结合,以确认中国绿色金融市场溢出效应中不对称性的存在,并识别这些效应背后的宏观经济驱动因素。主要研究结果如下:第一,中国绿色金融市场已成为能源风险溢出的重要传导者,其外部效应存在显著不对称——负回报溢出超过正回报溢出。这种不对称在2014年油价暴跌和新冠疫情等极端事件期间尤为明显,表明该市场的投资者对负面消息更为敏感。第二,通过使用可解释机器学习模型,我们识别出对绿色金融市场溢出效应有显著影响的宏观经济因素,其中经济政策不确定性和美国能源价格指数的影响力尤为突出。第三,虽然正负溢出效应的驱动因素不同,但其方向性影响在两者之间是一致的。这些见解对于旨在实现投资组合多元化的投资者以及在不对称市场条件下管理风险的政策制定者而言至关重要。