基于平滑交叉熵的相关金融违约模拟

G. D'Acquisto, L. Mastroeni, M. Naldi
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引用次数: 2

摘要

信用风险(源自借款人的债务违约)是金融运营商日益担忧的一个问题。描述违约之间存在相关性的相关风险情景的既定模型是t-copula,它的使用使我们能够评估超过给定阈值的损失概率。然而,通常涉及的大量变量需要模拟方法。本文提出了一种基于交叉熵(CE)技术的模拟方法,作为迄今为止在文献中提出的非自适应重要性抽样(is)技术的替代方法,CE的主要优点是它可以轻松地处理比特设is更广泛的概率模型。本文提供了该方法的完整描述以及对一组扩展的模型实例所获得的结果。所提出的交叉熵技术被证明可以提供准确的结果,即使样本量比要估计的概率的倒数小几个数量级。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Simulation of Correlated Financial Defaults through Smoothed Cross-Entropy
Credit risk, deriving from borrowers defaulting on their debts, represents an ever growing source of concern for financial operators. An established model to describe the associated risk scenario, where correlation among defaults is present, is the t-copula, whose use allows us to evaluate the probability of losses exceeding a given threshold. However, the typically large number of variables involved calls for a simulation approach. A simulation method, based on the use of the Cross-Entropy (CE) technique, is here proposed as an alternative to non-adaptive Importance Sampling (IS) techniques so far presented in the literature, the main advantage of CE being that it allows to deal easily with a wider range of probability models than ad hoc IS. A full description of the method is provided along with the results obtained for an extended set of model instances. The proposed Cross-Entropy technique is shown to provide accurate results even when the sample size is several orders of magnitude smaller than the inverse of the probability to be estimated.
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