Modelling Risk under Volatile Conditions: Tail Index Estimation and Validation

IF 2.5 3区 经济学 Q2 ECONOMICS
V. Djakovic, J. Ivetic, Goran B. Andjelic
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引用次数: 1

Abstract

The subject of the research is to analyse and evaluate methods of investment risk modelling in dynamic, changing market circumstances, with a special focus on the assessment success of the expected effects of investment activities in ’extreme’ return points. In that sense, different Value at Risk models were used: the Historical Simulation (HS VaR), the Delta Normal VaR (D VaR) and the Extreme Value Theory model (EVT). The research objective is to test the performance of these models in specific, volatile, market circumstances, in terms of estimating the maximum possible losses from these activities. The basic hypothesis of the research is that it is possible to successfully anticipate the maximum possible losses from the investment activities in the extreme points of the return function by applying different methods of investment risk modelling in volatile market circumstances. The analysed financial data comprise daily stock returns of the BELEX15 (Serbia), BUX (Hungary), CROBEX (Croatia) and SBITOP (Slovenia) stock exchange indices in the period 2012-2019, which is relatively long time period suitable for the sound analyses. The main findings of the research point to the superior application adequacy of the Extreme Value Theory model (EVT) for successful risk modelling, i.e. for making optimal investment decisions. The research results represent innovated, concrete knowledge in the field of understanding the behaviour of the return function in its extremes, and consequently are of great importance to both the academic and professional public in the process of generating decisions on investment activities in volatile market conditions.
波动条件下的风险建模:尾指数估计与验证
该研究的主题是分析和评估在动态变化的市场环境中投资风险建模的方法,特别关注在“极端”回报点评估投资活动预期效果的成功。在这个意义上,我们使用了不同的风险值模型:历史模拟(HS VaR)、德尔塔正态VaR (D VaR)和极值理论模型(EVT)。研究目的是测试这些模型在特定的、不稳定的市场环境中的表现,以估计这些活动可能造成的最大损失。本研究的基本假设是,在波动的市场环境中,通过应用不同的投资风险建模方法,可以成功地预测在收益函数的极端点上投资活动的最大可能损失。所分析的财务数据包括2012-2019年期间BELEX15(塞尔维亚)、BUX(匈牙利)、CROBEX(克罗地亚)和SBITOP(斯洛文尼亚)证券交易所指数的每日股票收益,这是一个相对较长的时间段,适合进行稳健的分析。研究的主要结果表明,极值理论模型(EVT)在成功的风险建模,即做出最优投资决策方面具有优越的应用充分性。研究结果代表了在理解极端情况下回报函数行为领域的创新、具体知识,因此对学术界和专业公众在波动的市场条件下产生投资活动决策的过程中都非常重要。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
5.20
自引率
3.60%
发文量
32
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