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Local tangent space alignment based on Hilbert-Schmidt independence criterion regularization

机译:基于希尔伯特-施密特独立性准则正则化的局部切线空间对齐

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Local tangent space alignment (LTSA) is a famous manifold learning algorithm, and many other manifold learning algorithms are developed based on LTSA. However, from the viewpoint of dimensionality reduction, LTSA is only a local feature preserving algorithm. What the community of dimensionality reduction is now pursuing are those algorithms capable of preserving both local and global features at the same time. In this paper, a new algorithm for dimensionality reduction, called HSIC-regularized LTSA (HSIC-LTSA), is proposed, in which a HSIC regularization term is added to the objective function of LTSA. HSIC is an acronym for Hilbert-Schmidt independence criterion and has been used in many applications of machine learning. However, HSIC has not been directly applied to dimensionality reduction so far, neither used as a regularization term to combine with other machine learning algorithms. Therefore, the proposed HSIC-LTSA is a new try for both HSIC and LTSA. In HSIC-LTSA, HSIC makes the high- and low-dimensional data statistically correlative as much as possible, while LTSA reduces the data dimension under the local homeomorphism-preserving criterion. The experimental results presented in this paper show that, on several commonly used datasets, HSIC-LTSA performs better than LTSA as well as some state-of-the-art local and global preserving algorithms.
机译:局部切线空间对齐(LTSA)是一种著名的流形学习算法,并且基于LTSA开发了许多其他流形学习算法。但是,从降维的角度来看,LTSA只是一种局部特征保留算法。现在,降维社区所追求的是那些能够同时保留局部和全局特征的算法。本文提出了一种新的降维算法,称为HSIC规范化LTSA(HSIC-LTSA),其中将HSIC正则项添加到LTSA的目标函数中。 HSIC是希尔伯特-施密特(Hilbert-Schmidt)独立性标准的首字母缩写,已在许多机器学习应用中使用。但是,到目前为止,HSIC尚未直接应用于降维,也没有用作与其他机器学习算法结合的正则化术语。因此,提出的HSIC-LTSA是HSIC和LTSA的新尝试。在HSIC-LTSA中,HSIC尽可能使高维和低维数据在统计上相关,而LTSA在保留局部同胚性准则下减小了数据维。本文给出的实验结果表明,在几个常用数据集上,HSIC-LTSA的性能优于LTSA,并且具有一些最新的本地和全局保存算法。

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