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首页> 外文期刊>EURASIP journal on advances in signal processing >A Metric Multidimensional Scaling-Based Nonlinear Manifold Learning Approach for Unsupervised Data Reduction
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A Metric Multidimensional Scaling-Based Nonlinear Manifold Learning Approach for Unsupervised Data Reduction

机译:一种基于度量尺度的基于非线性流形的无监督数据约简方法

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摘要

Manifold learning may be seen as a procedure aiming at capturing the degrees of freedom and structure characterizing a set of high-dimensional data, such as images or patterns. The usual goals are data understanding, visualization, classification, and the computation of means. In a linear framework, this problem is typically addressed by principal component analysis (PCA). We propose here a nonlinear extension to PCA Firstly, the reduced variables are determined in the metric multidimensional scaling framework. Secondly, regression of the original variables with respect to the reduced variables is achieved considering a piecewise linear model. Both steps parameterize the (noisy) manifold holding the original data. Finally, we address the projection of data onto the manifold. The problem is cast in a Bayesian framework. Application of the proposed approach to standard data sets such as the COIL-20 database is presented.
机译:流形学习可以看作是旨在捕获表征一组高维数据(例如图像或图案)的自由度和结构的过程。通常的目标是数据理解,可视化,分类和均值计算。在线性框架中,通常通过主成分分析(PCA)解决此问题。我们在这里提出对PCA的非线性扩展。首先,减少的变量是在度量多维缩放框架中确定的。其次,考虑分段线性模型,可以实现原始变量相对于简化变量的回归。这两个步骤都将保存原始数据的(嘈杂的)歧管参数化。最后,我们解决了将数据投影到流形上的问题。问题是在贝叶斯框架中提出的。介绍了该方法在标准数据集(例如COIL-20数据库)中的应用。

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