Implementation of deep learning models in predicting ESG index volatility

IF 6.9 1区 经济学 Q1 BUSINESS, FINANCE Financial Innovation Pub Date : 2024-07-08 DOI:10.1186/s40854-023-00604-0
Hum Nath Bhandari, Nawa Raj Pokhrel, Ramchandra Rimal, Keshab R. Dahal, Binod Rimal
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Abstract

The consideration of environmental, social, and governance (ESG) aspects has become an integral part of investment decisions for individual and institutional investors. Most recently, corporate leaders recognized the core value of the ESG framework in fulfilling their environmental and social responsibility efforts. While stock market prediction is a complex and challenging task, several factors associated with developing an ESG framework further increase the complexity and volatility of ESG portfolios compared with broad market indices. To address this challenge, we propose an integrated computational framework to implement deep learning model architectures, specifically long short-term memory (LSTM), gated recurrent unit, and convolutional neural network, to predict the volatility of the ESG index in an identical environment. A comprehensive analysis was performed to identify a balanced combination of input features from fundamental data, technical indicators, and macroeconomic factors to delineate the cone of uncertainty in market volatility prediction. The performance of the constructed models was evaluated using standard assessment metrics. Rigorous hyperparameter tuning and model-selection strategies were implemented to identify the best model. Furthermore, a series of statistical analyses was conducted to validate the robustness and reliability of the model. Experimental results showed that a single-layer LSTM model with a relatively small number of neurons provides a superior fit with high prediction accuracy relative to more complex models.
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深度学习模型在预测 ESG 指数波动性中的应用
对环境、社会和治理(ESG)方面的考虑已成为个人和机构投资者投资决策不可或缺的一部分。最近,企业领导者认识到了 ESG 框架在履行环境和社会责任方面的核心价值。虽然股市预测是一项复杂而具有挑战性的任务,但与制定 ESG 框架相关的几个因素进一步增加了 ESG 投资组合与大盘指数相比的复杂性和波动性。为了应对这一挑战,我们提出了一个综合计算框架,以实施深度学习模型架构,特别是长短期记忆(LSTM)、门控递归单元和卷积神经网络,从而预测相同环境下 ESG 指数的波动性。通过综合分析,确定了基本面数据、技术指标和宏观经济因素输入特征的平衡组合,从而划定了市场波动预测的不确定性锥体。使用标准评估指标对所构建模型的性能进行了评估。为确定最佳模型,实施了严格的超参数调整和模型选择策略。此外,还进行了一系列统计分析,以验证模型的稳健性和可靠性。实验结果表明,与更复杂的模型相比,神经元数量相对较少的单层 LSTM 模型具有更好的拟合效果和更高的预测精度。
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来源期刊
Financial Innovation
Financial Innovation Economics, Econometrics and Finance-Finance
CiteScore
11.40
自引率
11.90%
发文量
95
审稿时长
5 weeks
期刊介绍: Financial Innovation (FIN), a Springer OA journal sponsored by Southwestern University of Finance and Economics, serves as a global academic platform for sharing research findings in all aspects of financial innovation during the electronic business era. It facilitates interactions among researchers, policymakers, and practitioners, focusing on new financial instruments, technologies, markets, and institutions. Emphasizing emerging financial products enabled by disruptive technologies, FIN publishes high-quality academic and practical papers. The journal is peer-reviewed, indexed in SSCI, Scopus, Google Scholar, CNKI, CQVIP, and more.
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