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A Survey of Dimension Reduction Methods for High-dimensional Data Analysis and Visualization

机译:高维数据分析与可视化降维方法综述

摘要

Dimension reduction is commonly defined as the process of mapping high-dimensional data to a lower-dimensional embedding. Applications of dimension reduction include, but are not limited to, filtering, compression, regression, classification, feature analysis, and visualization. We review methods that compute a point-based visual representation of high-dimensional data sets to aid in exploratory data analysis. The aim is not to be exhaustive but to provide an overview of basic approaches, as well as to review select state-of-the-art methods. Our survey paper is an introduction to dimension reduction from a visualization point of view. Subsequently, a comparison of state-of-the-art methods outlines relations and shared research foci.
机译:降维通常定义为将高维数据映射到低维嵌入的过程。降维的应用包括但不限于过滤,压缩,回归,分类,特征分析和可视化。我们回顾了计算高维数据集基于点的视觉表示以辅助探索性数据分析的方法。目的不是要详尽无遗,而是要提供基本方法的概述,并回顾选定的最新方法。我们的调查论文从可视化的角度介绍了降维。随后,对最先进方法的比较概述了关系和共享的研究重点。

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