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A global geometric framework for nonlinear dimensionality reduction.

机译:用于非线性降维的全局几何框架。

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摘要

Scientists working with large volumes of high-dimensional data, such as global climate patterns, stellar spectra, or human gene distributions, regularly confront the problem of dimensionality reduction: finding meaningful low-dimensional structures hidden in their high-dimensional observations. The human brain confronts the same problem in everyday perception, extracting from its high-dimensional sensory inputs-30,000 auditory nerve fibers or 10(6) optic nerve fibers-a manageably small number of perceptually relevant features. Here we describe an approach to solving dimensionality reduction problems that uses easily measured local metric information to learn the underlying global geometry of a data set. Unlike classical techniques such as principal component analysis (PCA) and multidimensional scaling (MDS), our approach is capable of discovering the nonlinear degrees of freedom that underlie complex natural observations, such as human handwriting or images of a face under different viewing conditions. In contrast to previous algorithms for nonlinear dimensionality reduction, ours efficiently computes a globally optimal solution, and, for an important class of data manifolds, is guaranteed to converge asymptotically to the true structure.
机译:科学家在处理大量高维数据(例如全球气候模式,恒星光谱或人类基因分布)时,经常会遇到降维问题:寻找隐藏在高维观测中的有意义的低维结构。人脑在日常感知中面临着同样的问题,它从其高维感官输入(30,000听觉神经纤维或10(6)视神经纤维)中提取了可感知的少量感知相关特征。在这里,我们描述了一种解决降维问题的方法,该方法使用易于测量的局部度量信息来学习数据集的基础全局几何。与经典技术(例如主成分分析(PCA)和多维缩放(MDS))不同,我们的方法能够发现复杂自然观察基础的非线性自由度,例如人类手写或在不同观看条件下的面部图像。与以前的非线性降维算法相比,我们的算法有效地计算了全局最优解,并且对于一类重要的数据流形,可以保证渐近收敛到真实结构。

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