Exploring the Effectiveness of Linear Matrix Factorizations After Nonlinear Processing

Bradley M. Whitaker, David V. Anderson
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Abstract

In this paper, we explore the weaknesses of using sparse coding and nonnegative matrix factorization (NMF) on data that has already been processed in a nonlinear manner. The underlying assumption of matrix factorization techniques is that an input signal can be represented as a linear combination of some set of features. This is a valid assumption in many feature extraction tasks, including several audio applications such as source separation and sound scene analysis. However, sparse coding and NMF are often used on data known to be composed of a nonlinear combination of features, such as the magnitude of an audio spectrum. This paper uses two synthetic datasets to probe the ability of linear sparse coding and NMF to discover known features that are combined nonlinearly. Even in a small dataset, common nonlinearities cause interference that prevents the algorithms from recovering the known features. However, we validate the use of NMF and sparse coding in audio applications by demonstrating that the factorization process is more effective at recovering hidden features in a dataset with harmonic structure. Finally, we show that the reconstruction error associated with modeling either dataset can be reduced by taking into account the behavior of a known nonlinearity.
探讨非线性处理后线性矩阵分解的有效性
在本文中,我们探讨了使用稀疏编码和非负矩阵分解(NMF)对已经以非线性方式处理的数据的弱点。矩阵分解技术的基本假设是输入信号可以表示为一些特征集的线性组合。在许多特征提取任务中,这是一个有效的假设,包括一些音频应用程序,如源分离和声音场景分析。然而,稀疏编码和NMF通常用于已知由特征的非线性组合组成的数据,例如音频频谱的幅值。本文使用两个合成数据集来探索线性稀疏编码和NMF发现非线性组合的已知特征的能力。即使在小数据集中,常见的非线性也会导致干扰,从而阻止算法恢复已知特征。然而,我们验证了NMF和稀疏编码在音频应用中的使用,证明了因式分解过程在恢复具有谐波结构的数据集中的隐藏特征方面更有效。最后,我们表明,通过考虑已知非线性的行为,可以减少与建模数据集相关的重建误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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