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Analysis of Approaches to Feature Space Partitioning for Nonlinear Dimensionality Reduction

机译:非线性降维的特征空间划分方法分析

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One of the most effective ways to reduce the computational complexity of nonlinear dimensionality reduction is hierarchical partitioning of the space with the subsequent approximation of calculations. In this paper, the efficiency of two approaches to space partitioning, the partitioning of input and output spaces, is analyzed. In addition, a method for nonlinear dimensionality reduction is proposed. It is based on construction of a partitioning tree of the input multidimensional space and an iterative procedure of the gradient descent with the approximation carried out on the nodes of the constructed space partitioning tree. In the method proposed, the relative position of the corrected objects and partitioning tree nodes in both input and output spaces is taken into account in the approximation. The method developed was analyzed based on publicly available datasets.
机译:减少非线性降维的计算复杂度的最有效方法之一是对空间进行分层划分,随后进行近似计算。本文分析了两种空间划分方法的效率,即输入和输出空间的划分。另外,提出了一种非线性降维的方法。它基于输入多维空间的分区树的构造以及在所构造的空间分区树的节点上进行近似的梯度下降的迭代过程。在提出的方法中,在逼近中考虑了校正对象和分区树节点在输入和输出空间中的相对位置。根据公开的数据集分析了开发的方法。

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