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Pairwise Sparsity Preserving Embedding for Unsupervised Subspace Learning and Classification

机译:无监督子空间学习和分类的成对稀疏保留嵌入

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摘要

Two novel unsupervised dimensionality reduction techniques, termed sparse distance preserving embedding (SDPE) and sparse proximity preserving embedding (SPPE), are proposed for feature extraction and classification. SDPE and SPPE perform in the clean data space recovered by sparse representation and enhanced Euclidean distances over noise removed data are employed to measure pairwise similarities of points. In extracting informative features, SDPE and SPPE aim at preserving pairwise similarities between data points in addition to preserving the sparse characteristics. This paper calculates the sparsest representation of all vectors jointly by a convex optimization. The sparsest codes enable certain local information of data to be preserved, and can endow SDPE and SPPE a natural discriminating power, adaptive neighborhood and robust characteristic against noise and errors in delivering low-dimensional embeddings. We also mathematically show SDPE and SPPE can be effectively extended for discriminant learning in a supervised manner. The validity of SDPE and SPPE is examined by extensive simulations. Comparison with other related state-of-the-art unsupervised algorithms show that promising results are delivered by our techniques.
机译:提出了两种新的无监督降维技术:稀疏距离保留嵌入(SDPE)和稀疏邻近保留嵌入(SPPE),用于特征提取和分类。 SDPE和SPPE在通过稀疏表示恢复的干净数据空间中执行,并且在去除噪声的数据上使用增强的欧几里德距离来测量点的成对相似性。在提取信息特征时,SDPE和SPPE除了保留稀疏特征外,还旨在保留数据点之间的成对相似性。本文通过凸优化计算所有向量的最稀疏表示。最稀疏的代码可以保留某些数据本地信息,并且可以使SDPE和SPPE具有自然的识别能力,自适应邻域以及在传递低维嵌入时抵抗噪声和错误的鲁棒特性。我们还从数学上显示了SDPE和SPPE可以有效地扩展用于监督学习的判别式学习。 SDPE和SPPE的有效性通过广泛的模拟进行了检验。与其他相关的最新无监督算法的比较表明,我们的技术可提供令人鼓舞的结果。

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