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Nonlinear Dimensionality Reduction by Unit Ball Embedding (UBE) and Its Application to Image Clustering

机译:单位球嵌入(UBE)的非线性降维及其在图像聚类中的应用

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The paper presents an unsupervised nonlinear dimensionality reduction algorithm called Unit Ball Embedding (UBE). Many high-dimensional data, such as object or face images, lie on a union of low-dimensional subspaces which are often called manifolds. The proposed method is able to learn the structure of these manifolds by exploiting the local neighborhood arrangement around each point. It tries to preserve the local structure by minimizing a cost function that measures the discrepancy between similarities of points in the high-dimensional data and similarities of points in the low-dimensional embedding. The cost function is proposed in a way that it provides a hyper-spherical representation of points in the low-dimensional embedding. Visualizations of our method on different datasets show that it creates large gaps between the manifolds and maximizes the separability of them. As a result, it notably improves the quality of unsupervised machine learning tasks (e.g. clustering). UBE is successfully applied on image datasets such as faces, handwritten digits, and objects and the results of clustering on the low-dimensional embedding show significant improvement over existing dimensionality reduction methods.
机译:本文提出了一种无监督的非线性降维算法,称为单位球嵌入(UBE)。许多高维数据(例如对象或面部图像)位于低维子空间的并集上,这些低位子空间通常被称为流形。所提出的方法能够通过利用围绕每个点的局部邻域排列来学习这些流形的结构。它试图通过最小化度量高维数据中的点相似度与低维嵌入中的点相似度之间的差异的成本函数来保留局部结构。提出成本函数的方式是,它在低维嵌入中提供了点的超球面表示。我们的方法在不同数据集上的可视化显示,它在流形之间产生了很大的间隙,并使它们的可分离性最大化。结果,它显着提高了无监督机器学习任务(例如集群)的质量。 UBE已成功应用于图像数据集,例如人脸,手写数字和对象,并且在低维嵌入中的聚类结果显示出对现有降维方法的显着改进。

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