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Thin Plate Spline Latent Variable Models for dimensionality reduction

机译:薄板样条潜在变量模型用于降维

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Dimensionality reduction (DR) has been considered as one of the most significant tools for data analysis. In this paper we propose a new latent variable model based on the thin plate splines, named Thin Plate Spline Latent Variable Model (TPSLVM). It has strong connection with the so-called Gaussian Process Latent Variable Model (GPLVM). We demonstrate that the proposed TPSLVM can be viewed as the GPLVM with a fairly peculiar covariance function. Moreover, compared to GPLVM, TPSLVM is more powerful especially when the dimensionality of the latent space is very low (e.g., 2D or 3D). One of main purposes of DR algorithms is to visualize data in 2D/3D spaces. Therefore, TPSLVM will benefit this process. Experimental results show that TPSLVM provides better data visualization and more efficient dimensionality reduction than GPLVM.
机译:降维(DR)被认为是用于数据分析的最重要的工具之一。在本文中,我们提出了一个基于薄板样条线的潜在变量模型,称为薄板样条线潜在变量模型(TPSLVM)。它与所谓的高斯过程潜在变量模型(GPLVM)有很强的联系。我们证明了所提出的TPSLVM可以被视为具有相当独特的协方差函数的GPLVM。此外,与GPLVM相比,TPSLVM更强大,尤其是在潜在空间的维数非常低(例如2D或3D)时。 DR算法的主要目的之一是可视化2D / 3D空间中的数据。因此,TPSLVM将使该过程受益。实验结果表明,TPSLVM比GPLVM提供更好的数据可视化和更有效的降维效果。

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