有界数据不确定性的竞争最小二乘问题

N. Kalantarova, Mehmet A. Donmez, S. Kozat
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引用次数: 1

摘要

在竞争算法框架下研究了具有有界数据不确定性的鲁棒最小二乘问题。我们提出了一种竞争最小二乘(LS)方法,该方法最小化了最坏情况下的“遗憾”,即LS估计器的平方数据误差与最小可达到的平方数据误差之间的差异。我们证明了对于结构化和非结构化数据矩阵以及不确定性,鲁棒最小二乘问题都可以化为SDP形式。通过数值算例,我们证明了所提出方法的潜在优点。
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Competitive least squares problem with bounded data uncertainties
We study robust least squares problem with bounded data uncertainties in a competitive algorithm framework. We propose a competitive least squares (LS) approach that minimizes the worst case “regret” which is the difference between the squared data error and the smallest attainable squared data error of an LS estimator. We illustrate that the robust least squares problem can be put in an SDP form for both structured and unstructured data matrices and uncertainties. Through numerical examples we demonstrate the potential merit of the proposed approaches.
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