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Correlation stress testing for value-at-risk: an unconstrained convex optimization approach

机译:风险价值的相关应力测试:无约束凸优化方法

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摘要

Correlation stress testing is employed in several financial models for determining the value-at-risk (VaR) of a financial institution’s portfolio. The possible lack of mathematical consistence in the target correlation matrix, which must be positive semidefinite, often causes breakdown of these models. The target matrix is obtained by fixing some of the correlations (often contained in blocks of submatrices) in the current correlation matrix while stressing the remaining to a certain level to reflect various stressing scenarios. The combination of fixing and stressing effects often leads to mathematical inconsistence of the target matrix. It is then naturally to find the nearest correlation matrix to the target matrix with the fixed correlations unaltered. However, the number of fixed correlations could be potentially very large, posing a computational challenge to existing methods. In this paper, we propose an unconstrained convex optimization approach by solving one or a sequence of continuously differentiable (but not twice continuously differentiable) convex optimization problems, depending on different stress patterns. This research fully takes advantage of the recently developed theory of strongly semismooth matrix valued functions, which makes fast convergent numerical methods applicable to the underlying unconstrained optimization problem. Promising numerical results on practical data (RiskMetrics database) and randomly generated problems of larger sizes are reported.
机译:相关压力测试在几种金融模型中用于确定金融机构投资组合的风险价值(VaR)。目标相关矩阵中可能缺乏数学一致性(必须为正半定值)通常会导致这些模型崩溃。目标矩阵是通过将一些相关性(通常包含在子矩阵的块中)固定在当前相关性矩阵中,同时将其余相关性强调到一定水平以反映各种强调情况而获得的。固定效果和压力效果的组合通常会导致目标矩阵的数学不一致。然后自然会找到与目标矩阵最接近的相关矩阵,且固定相关不变。然而,固定相关的数量可能非常大,这给现有方法带来了计算上的挑战。在本文中,我们根据不同的应力模式,通过求解一个或一系列连续可微(但不是两次连续可微)凸优化问题,提出了一种无约束凸优化方法。该研究充分利用了最近开发的强半光滑矩阵值函数的理论,该理论使得快速收敛的数值方法适用于基本的无约束优化问题。报告了有关实用数据(RiskMetrics数据库)的有希望的数值结果以及随机生成的较大尺寸问题。

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