论文标题

深矩阵因素化

Deep matrix factorizations

论文作者

De Handschutter, Pierre, Gillis, Nicolas, Siebert, Xavier

论文摘要

数十年来,受约束的低级别矩阵近似值已知是有力的线性降低技术,以便能够以相关的方式提取大型数据集中包含的信息。但是,这种低级方法无法挖掘出层次语义基础的复杂,交错的特征。最近,引入了深层矩阵分解(深MF)来处理几层特征的提取,并已证明可以在无监督任务上达到出色的表现。深度学习的激励是深度学习的激励,因为它在概念上接近某些神经网络范例。在本文中,我们通过全面的文献综述介绍了深MF的主要模型,算法和应用。我们还讨论了研究的理论问题和观点。

Constrained low-rank matrix approximations have been known for decades as powerful linear dimensionality reduction techniques to be able to extract the information contained in large data sets in a relevant way. However, such low-rank approaches are unable to mine complex, interleaved features that underlie hierarchical semantics. Recently, deep matrix factorization (deep MF) was introduced to deal with the extraction of several layers of features and has been shown to reach outstanding performances on unsupervised tasks. Deep MF was motivated by the success of deep learning, as it is conceptually close to some neural networks paradigms. In this paper, we present the main models, algorithms, and applications of deep MF through a comprehensive literature review. We also discuss theoretical questions and perspectives of research.

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