Green finance: Evidence from large portfolios and networks during financial crises and recessions

Author:

Argentiero Amedeo1,Bonaccolto Giovanni2ORCID,Pedrini Giulio2

Affiliation:

1. Department of International Humanities and Social Sciences University of International Studies of Rome, UNINT Rome Italy

2. School of Economics and Law “Kore” University of Enna, Cittadella Universitaria Enna Italy

Abstract

AbstractIn this article, we study the relevance of green finance from a portfolio and a network perspective. The estimates are derived from a regularized graphical model, which allows us to deal with two important issues. First, we refer to the curse of dimensionality, as we focus on a relatively large set of companies. Second, we explicitly take into account the heavy‐tailed distributions of financial time series, which reflect the impact of crises and recessions. Focusing on a time interval spanning across well‐known tail events, from the US subprime crisis to the recent outbreak of the COVID‐19 pandemic, we show that the selected green stocks offer a relevant contribution to the minimization of the overall portfolio risk. Moreover, they outperform the gray assets in terms of risk, profitability, and risk‐adjusted return in a statistically significant way. These findings are consistent with the estimates obtained from the network analysis. Indeed, the gray stocks exhibit a greater connection within the dynamic networks and, then, are more exposed to the risk of a greater propagation of negative spillover effects during stressed periods. Interestingly, the relevance of the green stocks increases when moving from the standard Gaussian to the leptokurtic setting. The policy implications suggested by these results induce policymakers to undertake synergistic interventions with private finance aimed at supporting a green economy and environmentally responsible companies.

Publisher

Wiley

Subject

Management, Monitoring, Policy and Law,Strategy and Management,Development

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