Dimensionality Reduction by Unsupervised K-Nearest Neighbor Regression

Oliver Kramer
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引用次数: 45

Abstract

In many scientific disciplines structures in high-dimensional data have to be found, e.g., in stellar spectra, in genome data, or in face recognition tasks. In this work we present a novel approach to non-linear dimensionality reduction. It is based on fitting K-nearest neighbor regression to the unsupervised regression framework for learning of low-dimensional manifolds. Similar to related approaches that are mostly based on kernel methods, unsupervised K-nearest neighbor (UNN) regression optimizes latent variables w.r.t. the data space reconstruction error employing the K-nearest neighbor heuristic. The problem of optimizing latent neighborhoods is difficult to solve, but the UNN formulation allows the design of efficient strategies that iteratively embed latent points to fixed neighborhood topologies. UNN is well appropriate for sorting of high-dimensional data. The iterative variants are analyzed experimentally.
无监督k近邻回归的降维方法
在许多科学学科中,必须找到高维数据中的结构,例如,在恒星光谱中,在基因组数据中,或在人脸识别任务中。在这项工作中,我们提出了一种非线性降维的新方法。它是基于拟合k近邻回归到无监督回归框架学习低维流形。与主要基于核方法的相关方法类似,无监督k近邻(UNN)回归利用k近邻启发法优化潜在变量,而不是数据空间重构误差。优化潜在邻域的问题很难解决,但UNN公式允许设计有效的策略,迭代地将潜在点嵌入到固定的邻域拓扑中。UNN非常适合于高维数据的排序。实验分析了迭代变分。
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