Current and prospective estimate of counterparty risk through dynamic neural networks

Alessio Agnese, P. Giribone, F. Querci
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Abstract

The estimate of the probability of default plays a central role for any financial entity that wants to have an overview of the risks of insolvency it may incur by having economic relations with counterparties. This study aims to analyze the calculation of such measure in the context of counterparty risk from a current and prospective standpoint, by using dynamic neural networks. The forecasting aspect in the calculation of such risk measure is becoming more and more important over time as current regulation is increasingly based on a "Through the Cycle" and not a "Point in Time" assessment, consequently giving fundamental importance to such estimate. To this end, three different models aimed at calculating the Probability of Default have been investigated: the CDS method, the Z-Spread method, and the KMV method (Kealhofer, Merton and Vasicek). First, the different techniques have been applied to one of the main suppliers of gas and energy in Italy as a reference company. Then, they have been applied to calculate the same risk measure on the 50 companies included in one of the most important European indices, the Euro Stoxx 50.
基于动态神经网络的交易对手风险的当前和未来评估
对违约概率的估计对于任何金融实体来说都起着核心作用,因为它希望对与交易对手建立经济关系可能产生的破产风险有一个总体的了解。本研究旨在利用动态神经网络,从当前和未来的角度分析交易对手风险背景下此类措施的计算。随着时间的推移,计算这种风险度量的预测方面变得越来越重要,因为目前的监管越来越多地基于“整个周期”而不是“时间点”评估,因此这种估计具有根本的重要性。为此,研究人员研究了旨在计算违约概率的三种不同模型:CDS方法、Z-Spread方法和KMV方法(Kealhofer、Merton和Vasicek)。首先,将不同的技术应用于意大利的一家主要天然气和能源供应商,作为参考公司。然后,它们被用于计算欧洲最重要的指数之一——欧洲斯托克50指数(Euro Stoxx 50)所包含的50家公司的相同风险指标。
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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