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An Out-of-Sample Extension to Manifold Learning via Meta-Modeling

机译:通过元建模对流形学习进行样本外扩展

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摘要

Unsupervised manifold learning has become accepted as an important tool for reducing dimensionality of a dataset by finding its meaningful low-dimensional representation lying on an unknown nonlinear subspace. Most manifold learning methods only embed an existing dataset but do not provide an explicit mapping function for novel out-of-sample data, thereby potentially resulting in an ineffective tool for classification purposes, particularly for iterative methods, such as active learning. To address this issue, out-of-sample extension methods have been introduced to generalize an existing embedding of new samples. In this paper, a novel out-of-sample method is introduced by utilizing high dimensional model representation (HDMR) as a nonlinear multivariate regression with the Tikhonov regularizer for unsupervised manifold learning algorithms. The proposed method was extensively analyzed using illustrative datasets sampled from known manifolds. Several experiments with 3D synthetic datasets and face recognition datasets were also conducted, and the performance of the proposed method was compared to several well-known out-of-sample methods. The results obtained with locally linear embedding (LLE), Laplacian Eigenmaps (LE), and t-distributed stochastic neighbor embedding (t-SNE) showed that the proposed method achieves competitive even better performance than the other out-of-sample methods.
机译:通过发现位于未知非线性子空间上的有意义的低维表示形式,无监督流形学习已成为减少数据集维数的重要工具。大多数流形学习方法仅嵌入现有数据集,而没有为新颖的样本外数据提供显式映射功能,从而潜在地导致无法有效地实现分类目的的工具,特别是对于迭代方法(例如主动学习)。为了解决这个问题,引入了样本外扩展方法来概括新样本的现有嵌入。在本文中,通过使用高维模型表示(HDMR)作为非多元流学习算法的Tikhonov正则化器,利用高维模型表示(HDMR)作为非线性多元回归,介绍了一种新颖的样本外方法。使用从已知歧管采样的示例性数据集对提议的方法进行了广泛的分析。还使用3D合成数据集和面部识别数据集进行了一些实验,并将该方法的性能与几种众所周知的样本外方法进行了比较。通过局部线性嵌入(LLE),拉普拉斯特征图(LE)和t分布随机邻居嵌入(t-SNE)获得的结果表明,与其他样本外方法相比,该方法具有更好的竞争性能。

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