基于资产收益多尺度能量分布的非参数自适应风险价值量化

G. Tzagkarakis, F. Maurer, T. Dionysopoulos
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引用次数: 0

摘要

量化风险对每个金融机构来说都是至关重要的,时间维度是所有完善的风险度量的关键方面。然而,利用金融数据传达的频率信息,可以在联合时-频方式下对固有风险演变产生更好的见解。然而,绝大多数风险管理人员没有明确区分由不同频率内容的模式捕获的信息,而依赖于完整的时间分辨率数据,而不考虑交易范围。为了解决这一问题,提出了一种新的风险价值(VaR)量化方法,该方法将由预先确定的交易水平决定的多个频率尺度上收益序列的时间演化能量曲线非线性地组合在一起。最重要的是,我们提出的方法可以与任何基于分位数的风险度量相结合,以提高其性能。用真实数据进行的实验评估表明,我们的方法在有效控制低估/高估VaR值方面具有更高的鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Nonparametric Adaptive Value-at-Risk Quantification Based on the Multiscale Energy Distribution of Asset Returns
Quantifying risk is pivotal for every financial institution, with the temporal dimension being the key aspect for all the well-established risk measures. However, exploiting the frequency information conveyed by financial data, could yield improved insights about the inherent risk evolution in a joint time-frequency fashion. Nevertheless, the great majority of risk managers make no explicit distinction between the information captured by patterns of different frequency content, while relying on the full time-resolution data, regardless of the trading horizon. To address this problem, a novel value-at-risk (VaR) quantification method is proposed, which combines nonlinearly the time-evolving energy profile of returns series at multiple frequency scales, determined by the predefined trading horizon. Most importantly, our proposed method can be coupled with any quantile-based risk measure to enhance its performance. Experimental evaluation with real data reveals an increased robustness of our method in efficiently controlling under-/over-estimated VaR values.
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