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Robust fitting of multilinear models with application to blind multiuser receivers: iterative weighted median filtering approach

机译:多线性模型的稳健拟合及其在盲多用户接收机中的应用:迭代加权中值滤波方法

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PARAllel FACtor (PARAFAC) analysis is an extension of low-rank matrix decomposition to higher-way arrays. It decomposes a given array in a sum of multilinear terms. PARAFAC analysis generalizes and unifies common array processing models, like joint diagonalization and ESPRIT. The prevailing fitting algorithm in all these applications is based on alternating least squares (ALS) optimization, which is matched to Gaussian noise. In many cases, however, measurement errors are far from being Gaussian. An iterative algorithm for least absolute error (robust) fitting of general multilinear models based on linear programming (LP) has been recently developed. However, the computational complexity of this method remains high. In this paper, we develop a new iterative algorithm for robust fitting of multilinear models based on iterative weighted median filtering (WMF), which is appealing from a simplicity viewpoint. Performance of the proposed method is illustrated with application to the blind multiuser separation-detection problem, and compared to the performance of trilinear alternating least squares (TALS), trilinear alternating least absolute error based on linear programming (TALAE-LP), and the pertinent Cramer-Rao bounds (CRBs) in Laplacian, Cauchy, and Gaussian noise environments.
机译:PARAllel FACtor(PARAFAC)分析是将低秩矩阵分解扩展为高阶数组的一种方法。它以多线性项的总和分解给定的数组。 PARAFAC分析将通用的阵列处理模型(例如联合对角线化和ESPRIT)概括并统一。在所有这些应用中,最流行的拟合算法是基于交替最小二乘(ALS)优化,它与高斯噪声相匹配。但是,在许多情况下,测量误差远非高斯。最近已经开发了一种基于线性规划(LP)的通用多线性模型的最小绝对误差(鲁棒)拟合的迭代算法。但是,该方法的计算复杂度仍然很高。在本文中,我们开发了一种基于迭代加权中值滤波(WMF)的多线性模型鲁棒拟合的迭代算法,这从简单性的角度来看很有吸引力。将该方法的性能应用于盲多用户分离检测问题,并与三线性交替最小二乘(TALS),基于线性规划的三线性交替最小绝对误差(TALAE-LP)的性能以及相关性进行了比较。拉普拉斯噪声,柯西噪声和高斯噪声环境中的Cramer-Rao边界(CRB)。

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