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首页> 外文期刊>SIAM Journal on Matrix Analysis and Applications >COMPUTING A NEAREST CORRELATION MATRIX WITH FACTOR STRUCTURE
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COMPUTING A NEAREST CORRELATION MATRIX WITH FACTOR STRUCTURE

机译:计算具有因子结构的最近关联矩阵

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An nxn correlation matrix has k factor structure if its off-diagonal agrees with that of a rank k matrix. Such correlation matrices arise, for example, in factor models of collateralized debt obligations (CDOs) and multivariate time series. We analyze the properties of these matrices and, in particular, obtain an explicit formula for the rank in the one factor case. Our main focus is on the nearness problem of finding the nearest k factor correlation matrix C(X) = diag(I - XXT) + XXT to a given symmetric matrix, subject to natural nonlinear constraints on the elements of the n x k matrix X, where distance is measured in the Frobenius norm. For a special one parameter case we obtain an explicit solution. For the general k factor case we obtain the gradient and Hessian of the objective function and derive an instructive result on the positive definiteness of the Hessian when k - 1. We investigate several numerical methods for solving the nearness problem: the alternating directions method; a principal factors method used by Anderson, Sidenius, and Basu in the CDO application, which we show is equivalent to the alternating projections method and lacks convergence results; the spectral projected gradient method of Birgin, Martinez, and Raydan; and Newton and sequential quadratic programming methods. The methods differ in whether or not they can take account of the nonlinear constraints and in their convergence properties. Our numerical experiments show that the performance of the methods depends strongly on the problem, but that the spectral projected gradient method is the clear winner.
机译:如果nxn相关矩阵的非对角线与秩k矩阵的对角线一致,则它具有k因子结构。例如,在抵押债务义务(CDO)和多元时间序列的因子模型中会出现这种相关矩阵。我们分析了这些矩阵的性质,尤其是在单因素情况下获得了用于秩的明确公式。我们的主要重点是寻找与给定对称矩阵最接近的k因子相关矩阵C(X)= diag(I-XXT)+ XXT的邻近性问题,其中对nxk矩阵X的元素进行自然非线性约束,其中距离以Frobenius范数衡量。对于特殊的单参数情况,我们获得了一个明确的解决方案。对于一般的k因子情况,我们获得了目标函数的梯度和Hessian,并得出了当k-1时Hessian正定性的指导性结果。我们展示的Anderson,Sidenius和Basu在CDO应用程序中使用的主因子方法等效于交替投影方法,并且缺乏收敛性结果; Birgin,Martinez和Raydan的光谱投影梯度法;牛顿和顺序二次编程方法。这些方法的不同之处在于它们是否可以考虑非线性约束及其收敛特性。我们的数值实验表明,这些方法的性能在很大程度上取决于问题,但是光谱投影梯度法无疑是赢家。

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