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Generalized quadratically constrained quadratic programming for signal processing

机译:用于信号处理的广义二次约束二次规划

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In this paper, we introduce and solve a particular generalization of the quadratically constrained quadratic programming (QCQP) problem which is frequently encountered in different fields of signal processing and communications. Specifically, we consider such generalization of the QCQP problem that comprises compositions of one-dimensional convex and quadratic functions in the constraint and the objective functions. We show that this class of problems can be precisely or approximately recast as the difference-of-convex functions (DC) programming problem. Although the DC programming problem can be solved through the branch-and-bound methods, these methods do not have any worst-case polynomial-time complexity guarantees. Therefore, we develop a new approach with worst-case polynomial-time complexity that can solve the corresponding DC problem of a generalized QCQP problem. It is analytically guaranteed that the point obtained by this method satisfies the Karsuh-Kuhn-Tucker (KKT) optimality conditions. Furthermore, the global optimality can be proved analytically under certain conditions. The new proposed method can be interpreted in terms of the Newton's method as applied to a non-constrained optimization problem.
机译:在本文中,我们介绍并解决了在信号处理和通信的不同领域中经常遇到的二次约束二次规划(QCQP)问题的特殊概括。具体来说,我们考虑QCQP问题的这种概括,它包括约束和目标函数中的一维凸函数和二次函数。我们表明,这类问题可以精确地或近似地重铸为凸差函数(DC)编程问题。尽管可以通过分支定界方法解决DC编程问题,但是这些方法没有任何最坏情况的多项式时间复杂度保证。因此,我们开发了一种具有最坏情况多项式时间复杂度的新方法,该方法可以解决广义QCQP问题的相应DC问题。在分析上保证通过该方法获得的点满足Karsuh-Kuhn-Tucker(KKT)最优条件。此外,可以在某些条件下通过分析证明全局最优性。新提出的方法可以用牛顿方法来解释,该方法适用于非约束优化问题。

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