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A recursive approach for determining matrix inverses as applied to causal time series processes

机译:确定因果时间序列过程的矩阵求逆的递归方法

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摘要

A decomposition of a certain type of positive definite quadratic forms in correlated normal random variables is obtained from successive applications of blockwise inversion to the leading submatrices of a symmetric positive definite matrix. This result can be utilized to determine Mahalanobis-type distances and allows for the calculation of the full likelihood functions in instances where the observations secured from certain causal processes are irregularly spaced or incomplete. Applications to some autoregressive moving-average models are pointed out and an illustrative numerical example is presented.
机译:通过将块状反演应用于对称正定矩阵的前导子矩阵,可以得到相关正态随机变量中某种正定二次型的分解。该结果可用于确定马氏距离,并在某些因果过程保证的观察结果不规则间隔或不完整的情况下,可以计算全似然函数。指出了在一些自回归移动平均模型上的应用,并给出了一个说明性的数值例子。

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