SpecNet2: Orthogonalization-free spectral embedding by neural networks

Ziyu Chen, Yingzhou Li, Xiuyuan Cheng
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引用次数: 2

Abstract

Spectral methods which represent data points by eigenvectors of kernel matrices or graph Laplacian matrices have been a primary tool in unsupervised data analysis. In many application scenarios, parametrizing the spectral embedding by a neural network that can be trained over batches of data samples gives a promising way to achieve automatic out-of-sample extension as well as computational scalability. Such an approach was taken in the original paper of SpectralNet (Shaham et al. 2018), which we call SpecNet1. The current paper introduces a new neural network approach, named SpecNet2, to compute spectral embedding which optimizes an equivalent objective of the eigen-problem and removes the orthogonalization layer in SpecNet1. SpecNet2 also allows separating the sampling of rows and columns of the graph affinity matrix by tracking the neighbors of each data point through the gradient formula. Theoretically, we show that any local minimizer of the new orthogonalization-free objective reveals the leading eigenvectors. Furthermore, global convergence for this new orthogonalization-free objective using a batch-based gradient descent method is proved. Numerical experiments demonstrate the improved performance and computational efficiency of SpecNet2 on simulated data and image datasets.
SpecNet2:基于神经网络的无正交化谱嵌入
用核矩阵或图拉普拉斯矩阵的特征向量表示数据点的谱方法已经成为无监督数据分析的主要工具。在许多应用场景中,利用神经网络对谱嵌入进行参数化是实现自动样本外扩展和计算可扩展性的一种很有前途的方法。SpectralNet的原始论文(Shaham et al. 2018)采用了这种方法,我们称之为SpecNet1。本文引入了一种新的神经网络方法SpecNet2来计算谱嵌入,该方法优化了特征问题的等效目标,并去除了SpecNet1中的正交化层。SpecNet2还允许通过梯度公式跟踪每个数据点的邻居来分离图亲和矩阵的行和列的采样。从理论上讲,我们证明了新的无正交目标的任何局部极小值都揭示了主要特征向量。此外,利用基于批处理的梯度下降方法证明了该算法的全局收敛性。数值实验证明了SpecNet2在模拟数据和图像数据集上的性能和计算效率的提高。
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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