脑电反问题的结构化稀疏-低秩矩阵分解

Jair Montoya-Martínez, Antonio Artés-Rodríguez, M. Pontil
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摘要

我们考虑从噪声脑电测量中估计脑电源(BES)矩阵,通常称为脑电逆问题。我们提出了一种基于将BES分解为稀疏编码矩阵和密集潜在源矩阵乘积的新方法。这种结构是通过最小化一个正则泛函来实现的,该泛函包含编码矩阵的l21范数和潜在源矩阵的Frobenius范数的平方。我们开发了一种交替优化算法来解决由此产生的非光滑-非凸最小化问题。我们在一个模拟场景下评估了我们的方法,该场景包括估算具有5124个源的合成BES矩阵。我们比较了我们的方法在Lasso、Group Lasso、Sparse Group Lasso和Trace范数正则化方面的性能。
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Structured sparse-low rank matrix factorization for the EEG inverse problem
We consider the estimation of the Brain Electrical Sources (BES) matrix from noisy EEG measurements, commonly named as the EEG inverse problem. We propose a new method based on the factorization of the BES as a product of a sparse coding matrix and a dense latent source matrix. This structure is enforced by minimizing a regularized functional that includes the ℓ21-norm of the coding matrix and the squared Frobenius norm of the latent source matrix. We develop an alternating optimization algorithm to solve the resulting nonsmooth-nonconvex minimization problem. We have evaluated our approach under a simulated scenario consisting on estimating a synthetic BES matrix with 5124 sources. We compare the performance of our method respect to the Lasso, Group Lasso, Sparse Group Lasso and Trace norm regularizers.
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