Green bonds forecasting: evidence from pre-crisis, Covid-19 and Russian–Ukrainian crisis frameworks

IF 1.9 Q2 ECONOMICS
Souhir Amri Amamou, Mouna Ben Daoud, Saoussen Aguir Bargaoui
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Abstract

Purpose

Without precedent, green bonds confront, for the first time since their emergence, a twofold crisis context, namely the Covid-19-Russian–Ukrainian crisis period. In this context, this paper aims to investigate the connectedness between the two pioneering bond market classes that are conventional and treasury, with the green bonds market.

Design/methodology/approach

In their forecasting target, authors use a Support Vector Regression model on daily S&P 500 Green, Conventional and Treasury Bond Indexes for a year from 2012 to 2022.

Findings

Authors argue that conventional bonds could better explain and predict green bonds than treasury bonds for the three studied sub-periods (pre-crisis period, Covid-19 crisis and Covid-19-Russian–Ukrainian crisis period). Furthermore, conventional and treasury bonds lose their forecasting power in crisis framework due to enhancements in market connectedness relationships. This effect makes spillovers in bond markets more sensitive to crisis and less predictable. Furthermore, this research paper indicates that even if the indicators of the COVID-19 crisis have stagnated and the markets have adapted to this rather harsh economic framework, the forecast errors persist higher than in the pre-crisis phase due to the Russian–Ukrainian crisis effect not yet addressed by the literature.

Originality/value

This study has several implications for the field of green bond forecasting. It not only illuminates the market participants to the best market forecasters, but it also contributes to the literature by proposing an unadvanced investigation of green bonds forecasting in Crisis periods that could help market participants and market policymakers to anticipate market evolutions and adapt their strategies to period specificities.

绿色债券预测:危机前、Covid-19 和俄罗斯-乌克兰危机框架的证据
目的绿色债券自出现以来首次面临双重危机背景,即科维德-19-俄罗斯-乌克兰危机时期。在此背景下,本文旨在研究传统债券和国债这两种先驱债券市场类别与绿色债券市场之间的联系。设计/方法/方法在预测目标上,作者使用支持向量回归模型,对 2012 年至 2022 年的每日 S&P 500 绿色债券、传统债券和国债指数进行预测。研究结果作者认为,在所研究的三个次时期(危机前时期、Covid-19 危机时期和 Covid-19-Russian-Ukrainian 危机时期),传统债券比国债更能解释和预测绿色债券。此外,由于市场关联关系的增强,传统债券和国债在危机框架下失去了预测能力。这种效应使得债券市场的溢出效应对危机更加敏感,可预测性降低。此外,本文还指出,即使 COVID-19 危机的指标已经停滞,市场已经适应了这一相当严酷的经济框架,但由于俄罗斯-乌克兰危机效应的存在,预测误差仍然高于危机前阶段。它不仅为市场参与者提供了最佳市场预测的启示,而且还对文献做出了贡献,提出了危机时期绿色债券预测的前瞻性研究,有助于市场参与者和市场政策制定者预测市场演变并根据时期特点调整策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
4.00
自引率
5.90%
发文量
59
期刊介绍: The Journal of Economic Studies publishes high quality research findings and commentary on international developments in economics. The journal maintains a sound balance between economic theory and application at both the micro and the macro levels. Articles on economic issues between individual nations, emerging and evolving trading blocs are particularly welcomed. Contributors are encouraged to spell out the practical implications of their work for economists in government and industry
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