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An evolving possibilistic fuzzy modeling approach for Value-at-Risk estimation

机译:价值 - 风险估计的不断发展的可能性模糊建模方法

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摘要

Market risk exposure plays a key role in risk management. A way to measure risk exposure is to evaluate the losses likely to incur when the assets prices of a portfolio decline. Most financial institutions rely on Value-at-Risk (VaR) estimates to measure downside market risk. This paper suggests an evolving possibilistic fuzzy modeling (ePFM) approach to estimate VaR. The approach is an extension of the possibilistic fuzzy c-means clustering and functional fuzzy rule-based modeling within the framework of incremental learning. Evolving possibilistic modeling employs memberships and typicalities to update the cluster structure and corresponding fuzzy rules using a statistical control distance-based criterion. A utility measure evaluates the quality of the current cluster structure and associated model. Data from the main global equity market indexes of United States, United Kingdom, Germany, Spain, and Brazil from January 2000 to December 2012 are used to estimate VaR using ePFM. The performance of ePFM is evaluated and compared with traditional VaR benchmarks such as Historical Simulation, GARCH, EWMA, and Extreme Value Theory based VaR, as well as with state of the art evolving approaches. The results suggest that ePFM is a potential candidate for VaR modeling because it achieves better results than the alternative approaches. (C) 2017 Elsevier B.V. All rights reserved.
机译:市场风险曝光在风险管理中发挥着关键作用。一种衡量风险风险暴露的方法是评估当资产衰退的资产价格下降时可能会产生招致的损失。大多数金融机构依赖价值 - 风险(var)估计,以衡量下行市场风险。本文表明了一种不断变化的可能性模糊建模(EPFM)方法来估算var。该方法是在增量学习框架内延伸可能的模糊C-Means聚类和基于功能模糊规则的建模。不断发展的可能性模型采用成员资格和典型地使用基于统计控制距离的标准来更新群集结构和相应的模糊规则。实用程序测量评估当前集群结构和相关模型的质量。来自美国2000年1月至2012年1月至12月的美国,英国,德国,西班牙和巴西的主要全球股权市场指数的数据用于使用EPFM来估算VAR。对EPFM的性能进行评估,并与传统的VAR基准相比,如历史模拟,加基,EWMA和极值基于极值理论的VAR,以及现有的现有方法。结果表明,EPFM是VAR建模的潜在候选者,因为它比替代方法实现了更好的结果。 (c)2017 Elsevier B.v.保留所有权利。

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