A Monte Carlo evaluation of non-parametric estimators of expected shortfall

IF 5.7 Q1 BUSINESS, FINANCE
Julia S. Mehlitz, B. Auer
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引用次数: 3

Abstract

Purpose Motivated by the growing importance of the expected shortfall in banking and finance, this study aims to compare the performance of popular non-parametric estimators of the expected shortfall (i.e. different variants of historical, outlier-adjusted and kernel methods) to each other, selected parametric benchmarks and estimates based on the idea of forecast combination. Design/methodology/approach Within a multidimensional simulation setup (spanned by different distributional settings, sample sizes and confidence levels), the authors rank the estimators based on classic error measures, as well as an innovative performance profile technique, which the authors adapt from the mathematical programming literature. Findings The rich set of results supports academics and practitioners in the search for an answer to the question of which estimators are preferable under which circumstances. This is because no estimator or combination of estimators ranks first in all considered settings. Originality/value To the best of their knowledge, the authors are the first to provide a structured simulation-based comparison of non-parametric expected shortfall estimators, study the effects of estimator averaging and apply the mentioned profiling technique in risk management.
期望缺口的非参数估计的蒙特卡罗估计
目的受预期缺口在银行业和金融业日益重要的影响,本研究旨在比较流行的预期缺口非参数估计量(即历史、异常值调整和核方法的不同变体)的性能,并基于预测组合的思想选择参数基准和估计。设计/方法论/方法在多维模拟设置(由不同的分布设置、样本量和置信水平跨越)中,作者根据经典的误差测量以及创新的性能概况技术对估计量进行排名,作者从数学规划文献中改编了这一技术。发现丰富的结果支持学术界和从业者寻找答案,以解决在何种情况下哪种估计量更可取的问题。这是因为在所有考虑的设置中,没有估计器或估计器的组合排在第一位。原创性/价值据他们所知,作者是第一个提供基于结构化模拟的非参数预期缺口估计量比较的人,研究估计量平均的影响,并将上述分析技术应用于风险管理。
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
Journal of Risk Finance
Journal of Risk Finance BUSINESS, FINANCE-
CiteScore
6.20
自引率
6.70%
发文量
37
期刊介绍: The Journal of Risk Finance provides a rigorous forum for the publication of high quality peer-reviewed theoretical and empirical research articles, by both academic and industry experts, related to financial risks and risk management. Articles, including review articles, empirical and conceptual, which display thoughtful, accurate research and be rigorous in all regards, are most welcome on the following topics: -Securitization; derivatives and structured financial products -Financial risk management -Regulation of risk management -Risk and corporate governance -Liability management -Systemic risk -Cryptocurrency and risk management -Credit arbitrage methods -Corporate social responsibility and risk management -Enterprise risk management -FinTech and risk -Insurtech -Regtech -Blockchain and risk -Climate change and risk
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