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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Geometrically local embedding in manifolds for dimension reduction
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Geometrically local embedding in manifolds for dimension reduction

机译:在歧管中几何局部嵌入以减少尺寸

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摘要

In this paper, geometrically local embedding (GLE) is presented to discover the intrinsic structure of manifolds as a method in nonlinear dimension reduction. GLE is able to reveal the inner features of the input data in the lower dimension space while suppressing the influence of outliers in the local linear manifold. In addition to feature extraction and representation, GLE behaves as a clustering and classification method by projecting the feature data into low-dimensional separable regions. Through empirical evaluation, the performance of GLE is demonstrated by the visualization of synthetic data in lower dimension, and the comparison with other dimension reduction algorithms with the same data and configuration. Experiments on both pure and noisy data prove the effectiveness of GLE in dimension reduction, feature extraction, data visualization as well as clustering and classification.
机译:本文提出了几何局部嵌入(GLE)技术,以发现流形的内在结构,作为非线性降维的一种方法。 GLE能够在较低维空间中揭示输入数据的内部特征,同时抑制局部线性流形中离群值的影响。除了特征提取和表示外,GLE还通过将特征数据投影到低维可分离区域中而充当聚类和分类方法。通过经验评估,可以通过可视化低维合成数据并与具有相同数据和配置的其他降维算法进行比较来证明GLE的性能。在纯数据和有噪数据上进行的实验证明了GLE在降维,特征提取,数据可视化以及聚类和分类方面的有效性。

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