随机系数测量相关噪声搜索

N. Ronquillo, T. Javidi
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引用次数: 0

摘要

考虑通过随机幅度和加性噪声的线性观测序列恢复未知稀疏单位向量的问题。智能体依次选择测量向量并收集受测量向量影响的噪声观测值。我们提出了两种不同计算复杂度的算法,用于顺序和自适应设计测量向量。提出的算法旨在通过估计随机系数来增强单位公共支持向量的学习。在数值上,我们研究了我们提出的算法在估计支持度时的误差概率,并演示了对先前工作中使用的基于随机编码的策略的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Measurement Dependent Noisy Search with Stochastic Coefficients
Consider the problem of recovering an unknown sparse unit vector via a sequence of linear observations with stochastic magnitude and additive noise. An agent sequentially selects measurement vectors and collects observations subject to noise affected by the measurement vector. We propose two algorithms of varying computational complexity for sequentially and adaptively designing measurement vectors. The proposed algorithms aim to augment the learning of the unit common support vector with an estimate of the stochastic coefficient. Numerically, we study the probability of error in estimating the support achieved by our proposed algorithms and demonstrate improvements over random-coding based strategies utilized in prior works.
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