2 résultats pour « financial risk »

Identifying Risk Variables From ESG Raw Data Using A Hierarchical Variable Selection Algorithm

The study examines the relationship between ESG variables and financial risk, measured through logarithmic volatility. It introduces the Hierarchical Variable Selection (HVS) algorithm, designed for ESG datasets, which is reported to outperform aggregated ESG scores and traditional selection models by providing higher explanatory power with fewer variables. Findings suggest that ESG risk factors vary across sectors and between large- and small-cap firms, influenced by differences in regulation, expectations, and strategy. The authors highlight the robustness and adaptability of HVS, noting its effectiveness in identifying risk-relevant ESG variables across industries and its potential for broader applications in hierarchical datasets.

Financial Institutions in the Face of the Environmental Emergency

The paper delves into the intertwining of financial institutions and environmental concerns, particularly climate change and biodiversity loss. It introduces a dual framework based on 'impact' and 'risk' to explore their complex relationship. It analyzes the co-existing but sometimes opposing approaches at their interface, elucidating how finance, climate change, and biodiversity intertwine in the realm of "sustainable finance".