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Convex optimization learning of faithful Euclidean distance representations in nonlinear dimensionality reduction

机译:非线性降维中忠实欧氏距离表示的凸优化学习

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摘要

Classical multidimensional scaling only works well when the noisy distances observed in a high dimensional space can be faithfully represented by Euclidean distances in a low dimensional space. Advanced models such as Maximum Variance Unfolding (MVU) and Minimum Volume Embedding (MVE) use Semi-Definite Programming (SDP) to reconstruct such faithful representations. While those SDP models are capable of producing high quality configuration numerically, they suffer two major drawbacks. One is that there exist no theoretically guaranteed bounds on the quality of the configuration. The other is that they are slow in computation when the data points are beyond moderate size. In this paper, we propose a convex optimization model of Euclidean distance matrices. We establish a non-asymptotic error bound for the random graph model with sub-Gaussian noise, and prove that our model produces a matrix estimator of high accuracy when the order of the uniform sample size is roughly the degree of freedom of a low-rank matrix up to a logarithmic factor. Our results partially explain why MVU and MVE often work well. Moreover, we develop a fast inexact accelerated proximal gradient method. Numerical experiments show that the model can produce configurations of high quality on large data points that the SDP approach would struggle to cope with.
机译:只有在高维空间中观察到的噪声距离可以由低维空间中的欧几里得距离忠实地表示时,经典多维缩放才能很好地起作用。诸如最大方差展开(MVU)和最小体积嵌入(MVE)之类的高级模型使用半定编程(SDP)来重建这种忠实的表示。尽管那些SDP模型能够在数值上产生高质量的配置,但它们却具有两个主要缺点。一种是在理论上没有保证配置质量的界限。另一个是当数据点超出中等大小时它们的计算速度很慢。在本文中,我们提出了一个欧氏距离矩阵的凸优化模型。我们为具有亚高斯噪声的随机图模型建立了一个非渐近误差界,并证明了当均匀样本量的阶次大致为低秩的自由度时,我们的模型产生了高精度的矩阵估计器矩阵直到对数因子。我们的结果部分解释了为什么MVU和MVE经常运行良好。此外,我们开发了一种快速不精确的加速近端梯度法。数值实验表明,该模型可以在SDP方法难以应对的大数据点上产生高质量的配置。

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  • 作者

    Ding, Chao; Qi, Hou-Duo;

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  • 年度 2017
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  • 原文格式 PDF
  • 正文语种 en
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