提高商品和金融市场的预测准确性:GARCH 和 SVR 模型的启示

IF 2.1 Q2 BUSINESS, FINANCE International Journal of Financial Studies Pub Date : 2024-06-26 DOI:10.3390/ijfs12030059
Apostolos Ampountolas
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引用次数: 0

摘要

本研究旨在加深对黄金和可可等商品收益以及金融市场指数 S&P500 波动动态的理解。它全面概述了每种模型在捕捉资产回报中的波动集群、不对称和长期记忆效应方面的功效。通过使用 sGARCH、eGARCH、gjrGARCH 和 FIGARCH 等模型,研究提供了对波动演变及其对资产回报影响的细致理解。在模型优化中使用偏斜广义误差分布 (SGED) 表明,理解回报率分布中的不对称和肥尾是多么重要,这在金融数据中很常见。主要研究结果包括:sGARCH 模型因其较低的 AIC 值和有利的参数估计而成为黄金期货的首选,这表明回报分布中存在显著的波动集群和轻微的正偏斜。对于可可期货,FIGARCH 模型在捕捉长期记忆效应方面表现出色,其较高的对数似然值和较低的 AIC 值证明了这一点。就 S&P500 指数而言,eGARCH 模型在捕捉波动响应的非对称性方面表现突出,在对数似然值和 AIC 值方面都表现出色。总之,确定像 FIGARCH 模型这样适用于长记忆效应的优越建模方法,可以提供更准确的风险价值(VaR)和预期缺口(ES)估计值,从而增强风险管理策略。此外,样本外评估显示,支持向量回归(SVR)在短期预测方面优于传统的 GARCH 模型,这表明它有潜力成为金融市场的另一种预测工具。这些发现强调了针对特定资产类别和预测期限选择适当建模技术的重要性。此外,该研究还强调了 SVR 等先进技术在提高预测准确性方面的潜力,从而为金融市场的投资组合管理和风险评估提供了有价值的启示。
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Enhancing Forecasting Accuracy in Commodity and Financial Markets: Insights from GARCH and SVR Models
The aim of this study is to enhance the understanding of volatility dynamics in commodity returns, such as gold and cocoa, as well as the financial market index S&P500. It provides a comprehensive overview of each model’s efficacy in capturing volatility clustering, asymmetry, and long-term memory effects in asset returns. By employing models like sGARCH, eGARCH, gjrGARCH, and FIGARCH, the research offers a nuanced understanding of volatility evolution and its impact on asset returns. Using the Skewed Generalized Error Distribution (SGED) in model optimization shows how important it is to understand asymmetry and fat-tailedness in return distributions, which are common in financial data. Key findings include the sGARCH model being the preferred choice for Gold Futures due to its lower AIC value and favorable parameter estimates, indicating significant volatility clustering and a slight positive skewness in return distribution. For Cocoa Futures, the FIGARCH model demonstrates superior performance in capturing long memory effects, as evidenced by its higher log-likelihood value and lower AIC value. For the S&P500 Index, the eGARCH model stands out for its ability to capture asymmetry in volatility responses, showing superior performance in both log-likelihood and AIC values. Overall, identifying superior modeling approaches like the FIGARCH model for long memory effects can enhance risk management strategies by providing more accurate estimates of Value-at-Risk (VaR) and Expected Shortfall (ES). Additionally, the out-of-sample evaluation reveals that Support Vector Regression (SVR) outperforms traditional GARCH models for short-term forecasting horizons, indicating its potential as an alternative forecasting tool in financial markets. These findings underscore the importance of selecting appropriate modeling techniques tailored to specific asset classes and forecasting horizons. Furthermore, the study highlights the potential of advanced techniques like SVR in enhancing forecasting accuracy, thus offering valuable implications for portfolio management and risk assessment in financial markets.
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来源期刊
CiteScore
3.70
自引率
8.70%
发文量
100
审稿时长
11 weeks
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