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Scalable out-of-sample extension of graph embeddings using deep neural networks

机译:使用深度神经网络的图嵌入的可扩展样本外扩展

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摘要

Several popular graph embedding techniques for representation learning and dimensionality reduction rely on performing computationally expensive eigendecompositions to derive a nonlinear transformation of the input data space. The resulting eigenvectors encode the embedding coordinates for the training samples only, and so the embedding of novel data samples requires further costly computation. In this paper, we present a method for the out-of-sample extension of graph embeddings using deep neural networks (DNNs) to parametrically approximate these nonlinear maps. Compared with traditional non-parametric out-of-sample extension methods, we demonstrate that the DNNs can generalize with equal or better fidelity and require orders of magnitude less computation at test time. Moreover, we find that unsupervised pretraining of the DNNs improves optimization for larger network sizes, thus removing sensitivity to model selection. (C) 2017 Elsevier B.V. All rights reserved.
机译:用于表示学习和降维的几种流行的图形嵌入技术依赖于执行计算量大的特征分解来得出输入数据空间的非线性变换。生成的特征向量仅对训练样本的嵌入坐标进行编码,因此,嵌入新数据样本需要进一步的昂贵计算。在本文中,我们提出了一种使用深度神经网络(DNN)对图形嵌入进行样本外扩展的方法,以参数化方式逼近这些非线性映射。与传统的非参数样本外扩展方法相比,我们证明了DNN可以以相同或更好的保真度进行泛化,并且在测试时所需的计算量减少了几个数量级。此外,我们发现DNN的无监督预训练可改善针对较大网络规模的优化,从而消除了对模型选择的敏感性。 (C)2017 Elsevier B.V.保留所有权利。

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