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MDS_(polar): A New Approach for Dimension Reduction to Visualize High Dimensional Data

机译:MDS_(极态):尺寸减少的新方法以可视化高维数据

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Many applications in science and business such as signal analysis or costumer segmentation deal with large amounts of data which are usually high dimensional in the feature space. As a part of preprocessing and exploratory data analysis, visualization of the data helps to decide which kind of method probably leads to good results. Since the visual assessment of a feature space that has more than three dimensions is not possible, it becomes necessary to find an appropriate visualization scheme for such datasets. In this paper we present a new approach for dimension reduction to visualize high dimensional data. Our algorithm transforms high dimensional feature vectors into two-dimensional feature vectors under the constraints that the length of each vector is preserved and that the angles between vectors approximate the corresponding angles in the high dimensional space as good as possible, enabling us to come up with an efficient computing scheme.
机译:在科学和业务中的许多应用程序,如信号分析或顾客分割符合大量数据,通常在特征空间中的高维度。作为预处理和探索性数据分析的一部分,数据的可视化有助于确定哪种方法可能导致良好的结果。由于不可能对具有超过三维维度的特征空间的视觉评估,因此必须找到这种数据集的适当可视化方案。在本文中,我们提出了一种尺寸减少的新方法,以便可视化高维数据。我们的算法在保留每个向量的长度的约束下将高维特征向量转换为二维特征向量,并且矢量之间的角度近似尽可能好的高维空间中的相应角度,使我们能够提出一种有效的计算方案。

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