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TPSLVM: A Dimensionality Reduction Algorithm Based On Thin Plate Splines

机译:TPSLVM:一种基于薄板样条的降维算法

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Dimensionality reduction (DR) has been considered as one of the most significant tools for data analysis. One type of DR algorithms is based on latent variable models (LVM). LVM-based models can handle the preimage problem easily. In this paper we propose a new LVM-based DR model, named thin plate spline latent variable model (TPSLVM). Compared to the well-known Gaussian process latent variable model (GPLVM), our proposed TPSLVM is more powerful especially when the dimensionality of the latent space is low. Also, TPSLVM is robust to shift and rotation. This paper investigates two extensions of TPSLVM, i.e., the back-constrained TPSLVM (BC-TPSLVM) and TPSLVM with dynamics (TPSLVM-DM) as well as their combination BC-TPSLVM-DM. Experimental results show that TPSLVM and its extensions provide better data visualization and more efficient dimensionality reduction compared to PCA, GPLVM, ISOMAP, etc.
机译:降维(DR)被认为是用于数据分析的最重要工具之一。一种类型的DR算法基于潜在变量模型(LVM)。基于LVM的模型可以轻松处理原像问题。在本文中,我们提出了一种新的基于LVM的DR模型,称为薄板样条潜变量模型(TPSLVM)。与众所周知的高斯过程潜变量模型(GPLVM)相比,我们提出的TPSLVM更为强大,尤其是在潜空间维数较低的情况下。而且,TPSLVM具有强大的移位和旋转能力。本文研究了TPSLVM的两个扩展,即后约束TPSLVM(BC-TPSLVM)和带动力学的TPSLVM(TPSLVM-DM)以及它们的组合BC-TPSLVM-DM。实验结果表明,与PCA,GPLVM,ISOMAP等相比,TPSLVM及其扩展提供了更好的数据可视化和更有效的降维效果。

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