评估动荡时期的金融稳定性:对 COVID-19 期间泰国运输业广义自回归条件异方差风险价值模型性能的研究

IF 2 Q2 BUSINESS, FINANCE
Risks Pub Date : 2024-03-13 DOI:10.3390/risks12030051
Danai Likitratcharoen, Lucksuda Suwannamalik
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引用次数: 0

摘要

风险价值(VaR)指标是量化市场风险的重要工具,可估算潜在的投资损失。它主要用于金融行业,有助于遵守监管规定和制定资本储备战略。然而,VaR 模型的预测精度经常面临审查,尤其是在危机和不确定性增加的阶段。波动集群等现象影响了这些模型的准确性。为了缓解这些制约因素,条件波动率模型被整合进来,以增强 VaR 方法的稳健性和适应性。本研究针对 COVID-19 大流行期间泰国股市的波动情况,对 GARCH 型 VaR 模型在运输行业的有效性进行了批判性评估。数据集包括泰国证券交易所内运输行业指数(TRANS)、服务行业指数(SERVICE)和 17 只相关股票的每日价格波动,时间跨度为 2018 年 12 月 28 日至 2023 年 12 月 28 日,从而囊括了大流行病时期。采用的 GARCH 型风险值模型包括 GARCH (1,1) 风险值、ARMA (1,1)-GARCH (1,1) 风险值、GARCH (1,1)-M 风险值、IGARCH (1,1) 风险值、EWMA 风险值和 csGARCH (1,1) 风险值。这些模型与历史模拟风险值和德尔塔正态风险值等计算密集度较低的传统模型并列。回溯测试方法包括 Kupiec 的 POF 测试、独立性测试和 Christoffersen 的区间预测测试。有趣的是,研究结果显示,历史模拟 VaR 模型在失败率准确性方面超过了 GARCH 类型 VaR 模型。在 GARCH 类型中,EWMA VaR 模型表现出更高的失败率准确性。csGARCH (1,1) VaR 模型和 EWMA VaR 模型表现出明显的稳健性。这些发现对金融风险管理中的管理决策具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing Financial Stability in Turbulent Times: A Study of Generalized Autoregressive Conditional Heteroskedasticity-Type Value-at-Risk Model Performance in Thailand’s Transportation Sector during COVID-19
The Value-at-Risk (VaR) metric serves as a pivotal tool for quantifying market risk, offering an estimation of potential investment losses. Predominantly employed within financial sectors, it aids in adhering to regulatory mandates and in devising capital reserve strategies. Nonetheless, the predictive precision of VaR models frequently faces scrutiny, particularly during crises and heightened uncertainty phases. Phenomena like volatility clustering impinge on the accuracy of these models. To mitigate such constraints, conditional volatility models are integrated to augment the robustness and adaptability of VaR approaches. This study critically evaluates the efficacy of GARCH-type VaR models within the transportation sector amidst the Thai stock market’s volatility during the COVID-19 pandemic. The dataset encompasses daily price fluctuations in the Transportation Sector index (TRANS), the Service Industry index (SERVICE), and 17 pertinent stocks within the Stock Exchange of Thailand, spanning from 28 December 2018 to 28 December 2023, thereby encapsulating the pandemic era. The employed GARCH-type VaR models include GARCH (1,1) VaR, ARMA (1,1)—GARCH (1,1) VaR, GARCH (1,1)—M VaR, IGARCH (1,1) VaR, EWMA VaR, and csGARCH (1,1) VaR. These are juxtaposed with more traditional, less computationally intensive models like the Historical Simulation VaR and Delta Normal VaR. The backtesting methodologies encompass Kupiec’s POF test, the Independence Test, and Christoffersen’s Interval Forecast test. Intriguingly, the findings reveal that the Historical Simulation VaR model surpasses GARCH-type VaR models in failure rate accuracy. Within the GARCH-type category, the EWMA VaR model exhibited superior failure rate accuracy. The csGARCH (1,1) VaR and EWMA VaR models emerged as notably robust. These findings bear significant implications for managerial decision-making in financial risk management.
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来源期刊
Risks
Risks Economics, Econometrics and Finance-Economics, Econometrics and Finance (miscellaneous)
CiteScore
3.80
自引率
22.70%
发文量
205
审稿时长
11 weeks
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