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Recursively global and local discriminant analysis for semi-supervised and unsupervised dimension reduction with image analysis

机译:递归全局和局部判别分析,通过图像分析实现半监督和无监督降维

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Semi-supervised discriminant analysis (SDA) is a recently-developed semi-supervised dimension reduction method for improving the performance of Fisher linear discriminant analysis (FDA), which attempts to mine the local structures of both labeled and unlabeled data. In this paper, we develop new semi-supervised and unsupervised discriminant analysis techniques. Our semi-supervised method, referred as to as recursively global and local discriminant analysis (RGLDA), is modeled based on the characterizations of "locality" and "non-locality", such that the manifold regularization in the formulation has a more direct connection to classification. The objective of RGLDA is a "concave-convex" programming problem based on the hinge loss. Its solution follows from solving multiple related SVM-type problems. In addition, we also propose a simple version (called URGLDA) for unsupervised dimension reduction. The experiments tried out on several image databases show the effectiveness of RGLDA and URGLDA. (C) 2016 Elsevier B.V. All rights reserved.
机译:半监督判别分析(SDA)是最近开发的用于改进Fisher线性判别分析(FDA)性能的半监督降维方法,该方法试图挖掘标记和未标记数据的局部结构。在本文中,我们开发了新的半监督和无监督判别分析技术。我们的半监督方法(称为递归全局和局部判别分析(RGLDA))是基于“局部性”和“非局部性”的特征建模的,因此,配方中的流形正则化具有更直接的联系进行分类。 RGLDA的目标是基于铰链损耗的“凹凸”编程问题。它的解决方案来自解决多个相关的SVM类型问题。此外,我们还提出了一个简单的版本(称为URGLDA),用于无监督降维。在几个图像数据库上进行的实验表明RGLDA和URGLDA的有效性。 (C)2016 Elsevier B.V.保留所有权利。

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