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The Contribution of Sustainability and Governance Signals to Return on Equity Prediction: Evidence from Tree-Based Machine Learning, Bootstrapped Grouped CV and SHAP

サステナビリティとガバナンスシグナルが自己資本利益率予測に与える貢献:木ベース機械学習、ブートストラップグループ化交差検証、SHAPからの証拠 (AI 翻訳)

Hasan Talaş, E. Gök, Özen Akçakanat, Gürkan Gültekin, Mustafa Terzioğlu, Burçin Tutcu, Güler Ferhan Ünal Uyar

Journal of Risk and Financial Management📚 査読済 / ジャーナル2026-02-03#AI×ESGOrigin: Global経営インパクト: 資金調達対象セクター: cross_sector
DOI: 10.3390/jrfm19020106
原典: https://www.mdpi.com/1911-8074/19/2/106/pdf
📄 PDF

🤖 gxceed AI 要約

日本語

本研究は、トルコの上場非金融企業428社を対象に、ESG・ガバナンス情報が財務比率に加えてROE予測に追加的な価値を持つかを検証。ランダムフォレストが最高の予測性能を示し、ブートストラップ検定で統計的有意性を確認した。持続可能性情報の企業業績への寄与を定量的に示した点で意義深い。

English

This study uses tree-based machine learning on 428 Turkish non-financial firms to show that ESG and governance signals provide statistically significant additional information for predicting ROE beyond traditional financial ratios. Random Forest achieved the best performance, validated by bootstrapped confidence intervals. It offers generalizable evidence on the value of sustainability disclosures.

Unofficial AI-generated summary based on the public title and abstract. Not an official translation.

📝 gxceed 編集解説 — Why this matters

日本のGX文脈において

日本ではSSBJ基準や統合報告書でESG情報の開示が進むが、その定量的な価値(ROE予測力)を示す本知見は、投資家向け開示の実務的な意義付けに活用できる。日本企業の開示強化の根拠として参照可能。

In the global GX context

Globally, the study strengthens the case for mandatory ESG disclosure by demonstrating that non-financial signals improve profitability prediction. It aligns with TCFD/ISSB frameworks that emphasize the decision-usefulness of sustainability information, and offers a replicable ML methodology for assessing disclosure value.

👥 読者別の含意

🔬研究者:Shows how tree-based ML and SHAP can quantify the incremental predictive power of ESG signals for ROE, with robust cross-validation.

🏢実務担当者:Demonstrates that integrating ESG and governance data into financial models can improve return forecasts, useful for investment analysis.

🏛政策担当者:Provides empirical evidence supporting mandatory ESG disclosure as it enhances the information set for market participants.

📄 Abstract(原文)

In the global economy, traditional accounting-based ratios alone are often insufficient to fully explain firm performance, increasing the importance of complementary information sources such as sustainability and governance disclosures. In this context, environmental, social, and governance (ESG) indicators, together with corporate governance signals, have increasingly been recognized as important drivers of firm performance. However, the literature does not provide a clear and generalizable view on the impact of ESG indicators on profitability. This study aims to examine whether sustainability and corporate governance signals provide additional information value beyond traditional financial ratios in predicting ROE. To this end, two models were compared using a sample of 428 non-financial publicly traded companies operating in Turkey. The firm-level dataset was constructed using financial statements and independent audit disclosures obtained from the Turkish Public Disclosure Platform (KAP). Tree-based machine learning models were employed to capture potential nonlinear relationships and complex interactions between financial and non-financial indicators. Model performance was evaluated within a Bootstrapped Grouped Cross-Validation framework that considered firm-level dependency; the statistical reliability of performance differences was tested using bootstrap-based confidence intervals and matched tests. Among the evaluated models, Random Forest achieved the strongest overall predictive performance. In conclusion, this study demonstrates that sustainability and corporate governance disclosures provide statistically significant additional information value to ROE prediction. Due to the use of multiple algorithms, it contributes to the literature in a generalizable manner.

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gxceed は公開メタデータに基づく研究支援データセットです。要約・翻訳・解説は AI 支援で生成されています。 最終的な解釈・検証は利用者が原典資料に基づいて行うことを前提とします。