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New Kurtosis Optimization Schemes for MISO Equalization

机译:用于MISO均衡的新峰度优化方案

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摘要

This paper deals with efficient optimization of cumulant based contrast functions. Such a problem occurs in the blind source separation framework, where contrast functions are criteria to be maximized in order to retrieve the sources. More precisely, we focus on the extraction of one source signal and our method applies in deflation approaches, where the sources are extracted one by one. We propose new methods to maximize the kurtosis contrast function. These methods are intermediate between a gradient and an iterative “fixed-point” optimization of so-called reference contrasts. They rely on iterative updates of the parameters which monotonically increase the contrast function value: we point out the strong similarity with the Expectation-Maximization (EM) method and with recent generalizations referred to as Minimization-Maximization (MM). We also prove the global convergence of the algorithm to a stationary point. Simulations confirm the convergence of our methods to a separating solution. They also show experimentally that our methods have a much lower computational cost than former classical optimization methods. Finally, simulations suggest that the methods remain valid under weaker conditions than those required for proving convergence.
机译:本文讨论了基于累积量的对比度函数的有效优化。这样的问题发生在盲源分离框架中,在该框架中,对比函数是要最大化以检索源的标准。更准确地说,我们专注于一种源信号的提取,并且我们的方法适用于放气方法,在这种方法中,源被一一提取。我们提出了使峰度对比度函数最大化的新方法。这些方法介于梯度和所谓的参考对比度的迭代“定点”优化之间。它们依赖于参数的迭代更新,这些参数单调增加对比度函数值:我们指出与期望最大化(EM)方法以及最近的归纳为最小化(Maximization-Maximization)(MM)有很强的相似性。我们还证明了该算法的全局收敛性。仿真证实了我们方法的收敛性。他们还通过实验表明,我们的方法比以前的经典优化方法具有更低的计算成本。最后,仿真表明,该方法在比证明收敛所需的条件更弱的条件下仍然有效。

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