Adjusted Evaluation Measures for Asymmetrically Important Data

George-Jason Siouris, D. Skilogianni, A. Karagrigoriou
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引用次数: 1

Abstract

In this paper we introduce adjustments for standard evaluation measures appropriate for the analysis of data with asymmetrical importance. In risk analysis, it is understood that the returns of an asset do not all provide the same amount of information. This asymmetry of information is crucial for choosing the most appropriate model and evaluating its forecasting ability. In risk analysis, measures like value at risk (VaR) and expected shortfall (ES) concentrate on the left tail of the distribution of returns so that failures in fitting a model on the right tail are not important. Therefore, when we estimate the VaR of an asset, the days of violations are more important than the days of non-violations. The proposed adjustments take into consideration the asymmetry in importance and are filling the gap in the theory of evaluation of percentiles measures. The measures are divided into fixed partition, based on prior information or the goal of forecasting, and non fixed partition, based on the time proximity of the model failure. The performance of the proposed measures is illustrated with the use of a stock from the industrial metals and minerals index of the American Stock Exchange (NYSE MKT), as well as a warrant, from the Athens Exchange (ATHEX).
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非对称重要数据的调整后评估指标
在本文中,我们介绍了标准评价措施的调整,适合于分析具有不对称重要性的数据。在风险分析中,一项资产的回报并不都提供相同数量的信息。这种信息不对称对于选择最合适的模型和评估其预测能力至关重要。在风险分析中,风险值(VaR)和预期损失(ES)等度量集中在收益分布的左尾,因此在右尾拟合模型的失败并不重要。因此,当我们估计资产的VaR时,违规天数比未违规天数更重要。所提出的调整考虑了重要性的不对称性,填补了百分位测度评价理论的空白。将度量分为基于先验信息或预测目标的固定分区和基于模型故障的时间接近度的非固定分区。通过使用美国证券交易所(NYSE MKT)工业金属和矿产指数的股票以及雅典交易所(ATHEX)的权证来说明拟议措施的表现。
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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CiteScore
1.10
自引率
0.00%
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0
审稿时长
20 weeks
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