L0-Regularized Parametric Non-negative Factorization for Analyzing Composite Signals

Takumi Kobayashi, Kenji Watanabe, N. Otsu
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Abstract

Signal sequences are practically observed as composites in which a few number of factor signals are linearly combined with non-negative weights. Based on prior physical knowledge about the target, the factors can be modeled as parametric functions, and their parameter values benefit further analyses. In this paper, we present a novel factorization method for the composite signals in terms of parametric factor functions. The method optimizes both the factor weights and the parameter values in the factor functions. While the parameter values are simply optimized by gradient descent, we propose L0-regularized non-negative least squares (L0-NNLS) for optimizing the factor weights. In L0-NNLS, both L0 regularization and non-negativity constraint are imposed on the weights in the least squares to enhance the sparsity as much as possible. Since so regularized least squares is NPhard, we propose a stepwise forward/backward optimization to efficiently solve it in an approximated manner. Due to the sparsity by the L0-NNLS, the proposed factorization method can automatically discover the inherent number of factor functions as well as the parametric functions themselves by estimating their parameter values. In the experiments on factorization of simulated signals and practical biological signals, the proposed method exhibits favorable performances.
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l0 -正则化参数非负分解分析复合信号
实际上,信号序列是由若干因子信号以非负权重线性组合而成的复合信号。基于对目标的先验物理知识,可以将这些因素建模为参数函数,其参数值有利于进一步分析。本文提出了一种用参数因子函数分解复合信号的新方法。该方法对因子函数中的因子权重和参数值进行了优化。虽然参数值是简单的梯度下降优化,但我们提出了l0正则化非负最小二乘(L0-NNLS)来优化因子权重。在L0- nnls中,对最小二乘中的权值进行L0正则化和非负性约束,以尽可能地增强稀疏性。由于正则化最小二乘是NPhard,我们提出了一个逐步向前/向后优化,以近似的方式有效地解决它。由于L0-NNLS的稀疏性,本文提出的分解方法可以通过估计因子函数的参数值来自动发现因子函数的固有数量以及参数函数本身。在模拟信号和实际生物信号的分解实验中,该方法均表现出良好的性能。
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