正则Tyler估计欠采样配置收缩参数选择的子空间方法

Q. Hoarau, A. Breloy, G. Ginolhac, A. Atto, J. Nicolas
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引用次数: 3

摘要

近年来,正则化泰勒估计(RTE)因其在大范围噪声分布下的良好性能和对异常值的天然鲁棒性而引起了人们的关注。开发正则化参数α的自适应选择方法是目前研究的一个活跃课题。实际上,rte的偏差-性能折衷高度依赖于所考虑的应用程序。因此,找到适合每个标准和/或数据配置的通用规则并不是一件容易的事。本文针对欠采样配置(样本数量低于数据的维度)解决了这个问题。提出了一种基于子空间约简的正则化参数选择方法。从估计精度和自适应检测两方面对该方法在仿真和实际数据上的性能进行了研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A subspace approach for shrinkage parameter selection in undersampled configuration for Regularised Tyler Estimators
Regularized Tyler Estimator's (RTE) have raised attention over the past years due to their attractive performance over a wide range of noise distributions and their natural robustness to outliers. Developing adaptive methods for the selection of the regularisation parameter α is currently an active topic of research. Indeed, the bias-performance compromise of RTEs highly depends on the considered application. Thus, finding a generic rule that is optimal for every criterion and/or data configurations is not straightforward. This issue is addressed in this paper for undersampled configurations (number of samples lower than the dimension of the data). The paper proposes a new regularisation parameter selection based on a subspace reduction approach. The performance of this method is investigated in terms of estimation accuracy and for adaptive detection purposes, both on simulation and real data.
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