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Towards the global solution of the maximal correlation problem

机译:走向最大相关问题的整体解

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The maximal correlation problem (MCP) aiming at optimizing correlation between sets of variables plays a very important role in many areas of statistical applications. Currently, algorithms for the general MCP stop at solutions of the multivariate eigenvalue problem for a related matrix A, which serves as a necessary condition for the global solutions of the MCP. However, the reliability of the statistical prediction in applications relies greatly on the global maximizer of the MCP, and would be significantly impacted if the solution found is a local maximizer. Towards the global solution of the MCP, we have obtained four results in the present paper. First, the sufficient and necessary condition for global optimality of the MCP when A is a positive matrix is extended to the nonnegative case. Secondly, the uniqueness of the multivariate eigenvalues in the global maxima of the MCP is proved either when there are only two sets of variables involved, or when A is nonnegative. The uniqueness of the global maximizer of the MCP for the nonnegative irreducible case is also proved. These theoretical achievements lead to our third result that if A is a nonnegative irreducible matrix, both the Horst-Jacobi algorithm and the Gauss-Seidel algorithm converge globally to the global maximizer of the MCP. Lastly, some new estimates of the multivariate eigenvalues related to the global maxima are obtained.
机译:旨在优化变量集之间的相关性的最大相关性问题(MCP)在许多统计应用领域中发挥着非常重要的作用。当前,用于通用MCP的算法停止在相关矩阵A的多元特征值问题的解上,这是MCP的整体解的必要条件。但是,应用程序中统计预测的可靠性在很大程度上取决于MCP的全局最大化器,如果找到的解决方案是局部最大化器,则将极大地影响其可靠性。针对MCP的全局解决方案,我们在本文中获得了四个结果。首先,当A为正矩阵时,MCP全局最优的充要条件被扩展到非负情况。其次,当仅涉及两组变量时,或者当A为非负数时,证明了MCP全局最大值中多元特征值的唯一性。还证明了MCP全局最大化器在非负不可约情况下的唯一性。这些理论上的成就导致了我们的第三个结果,即如果A是非负不可约矩阵,那么Horst-Jacobi算法和Gauss-Seidel算法都将在全局范围内收敛到MCP的全局最大化器。最后,获得了与全局最大值相关的多元特征值的一些新估计。

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