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Alternative gradient algorithms for computing the nearest correlation matrix

机译:用于计算最近相关矩阵的替代梯度算法

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The correlation matrix has a wide range of applications in finance and risk management. However, due to the constraints of practical operations, the correlation matrix cannot satisfy the positive semidefinite property in most cases. In this paper, an elementwisely alternative gradient algorithm and a columnwisely alternative gradient algorithm are presented to compute the nearest correlation matrix that satisfies the semidefinite property for a given set of constraints. The convergence properties and the implementation of these two algorithms are discussed. Numerical experiments show that the proposed methods are efficient. Furthermore, the columnwisely alternative gradient algorithm outperforms other algorithms in terms of the number of iterations and the objective value of the cost function.
机译:相关矩阵在金融和风险管理中具有广泛的应用。然而,由于实际操作的限制,在大多数情况下,相关矩阵不能满足正半定性。在本文中,提出了逐元素替代梯度算法和逐列替代梯度算法,以计算满足给定约束集的半确定性质的最近相关矩阵。讨论了这两种算法的收敛性和实现。数值实验表明,该方法是有效的。此外,就迭代次数和成本函数的目标值而言,按列替换梯度算法的性能优于其他算法。

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