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Main Authors: Shakil, Mohammad Hassan, Pollestad, Arne Johan, Kyaw, Khine, Munim, Ziaul Haque
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2510.00244
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author Shakil, Mohammad Hassan
Pollestad, Arne Johan
Kyaw, Khine
Munim, Ziaul Haque
author_facet Shakil, Mohammad Hassan
Pollestad, Arne Johan
Kyaw, Khine
Munim, Ziaul Haque
contents With European Union initiatives mandating gender quotas on corporate boards, a key question arises: Is greater board gender diversity (BGD) associated with better emissions performance (EP)? To answer this question, we examine the influence of BGD on EP across a sample of European firms from 2016 to 2022. Using panel regressions, advanced machine learning algorithms, and explainable AI, we reveal a non-linear relationship. Specifically, EP improves with BGD up to an optimal level of approximately 35 %, beyond which further increases in BGD yield no additional improvement in EP. A minimum BGD threshold of 22 % is necessary for meaningful improvements in EP. To assess the legitimacy of EP outcomes, this study examines whether ESG controversies weaken the BGD-EP relationship. The results show no significant effect, suggesting that BGD's impact is driven by governance mechanisms rather than symbolic actions. Additionally, path analysis indicates that while environmental innovation contributes to EP, it is not the mediating channel through which BGD promotes EP. The results have implications for academics, businesses, and regulators.
format Preprint
id arxiv_https___arxiv_org_abs_2510_00244
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Board gender diversity and emissions performance: Insights from panel regressions, machine learning, and explainable AI
Shakil, Mohammad Hassan
Pollestad, Arne Johan
Kyaw, Khine
Munim, Ziaul Haque
General Finance
Computers and Society
Machine Learning
62P20
With European Union initiatives mandating gender quotas on corporate boards, a key question arises: Is greater board gender diversity (BGD) associated with better emissions performance (EP)? To answer this question, we examine the influence of BGD on EP across a sample of European firms from 2016 to 2022. Using panel regressions, advanced machine learning algorithms, and explainable AI, we reveal a non-linear relationship. Specifically, EP improves with BGD up to an optimal level of approximately 35 %, beyond which further increases in BGD yield no additional improvement in EP. A minimum BGD threshold of 22 % is necessary for meaningful improvements in EP. To assess the legitimacy of EP outcomes, this study examines whether ESG controversies weaken the BGD-EP relationship. The results show no significant effect, suggesting that BGD's impact is driven by governance mechanisms rather than symbolic actions. Additionally, path analysis indicates that while environmental innovation contributes to EP, it is not the mediating channel through which BGD promotes EP. The results have implications for academics, businesses, and regulators.
title Board gender diversity and emissions performance: Insights from panel regressions, machine learning, and explainable AI
topic General Finance
Computers and Society
Machine Learning
62P20
url https://arxiv.org/abs/2510.00244