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Robust Hessian Locally Linear Embedding Techniques for High-Dimensional Data

机译:高维数据的鲁棒Hessian局部线性嵌入技术

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摘要

Recently manifold learning has received extensive interest in the community of pattern recognition. Despite their appealing properties, most manifold learning algorithms are not robust in practical applications. In this paper, we address this problem in the context of the Hessian locally linear embedding (HLLE) algorithm and propose a more robust method, called RHLLE, which aims to be robust against both outliers and noise in the data. Specifically, we first propose a fast outlier detection method for high-dimensional datasets. Then, we employ a local smoothing method to reduce noise. Furthermore, we reformulate the original HLLE algorithm by using the truncation function from differentiable manifolds. In the reformulated framework, we explicitly introduce a weighted global functional to further reduce the undesirable effect of outliers and noise on the embedding result. Experiments on synthetic as well as real datasets demonstrate the effectiveness of our proposed algorithm.
机译:最近,多种学习在模式识别领域引起了广泛的兴趣。尽管它们具有吸引人的特性,但大多数流形学习算法在实际应用中都不可靠。在本文中,我们在Hessian局部线性嵌入(HLLE)算法的背景下解决了这个问题,并提出了一种更健壮的方法,称为RHLLE,其目的是对数据中的异常值和噪声均具有鲁棒性。具体来说,我们首先提出一种针对高维数据集的快速离群值检测方法。然后,我们采用局部平滑方法来减少噪声。此外,我们通过使用可微流形的截断函数来重新构造原始的HLLE算法。在重新制定的框架中,我们明确引入了加权全局函数,以进一步减少离群值和噪声对嵌入结果的不良影响。在合成数据集和真实数据集上的实验证明了我们提出的算法的有效性。

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