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Improving Projection-based Data Analysis by Feature Space Transformations

机译:通过特征空间变换改进基于投影的数据分析

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Generating effective visual embedding of high-dimensional data is difficult - the analyst expects to see the structure of the data in the visualization, as well as patterns and relations. Given the high dimensionality, noise and imperfect embedding techniques, it is hard to come up with a satisfactory embedding that preserves the data structure well, whilst highlighting patterns and avoiding visual clutters at the same time. In this paper, we introduce a generic framework for improving the quality of an existing embedding in terms of both structural preservation and class separation by feature space transformations. A compound quality measure based on structural preservation and visual clutter avoidance is proposed to access the quality of embeddings. We evaluate the effectiveness of our approach by applying it to several widely used embedding techniques using a set of benchmark data sets and the result looks promising.
机译:生成有效的高维数据可视化嵌入是困难的-分析人员希望在可视化中看到数据的结构以及模式和关系。鉴于高维,噪声和不完美的嵌入技术,很难提出令人满意的嵌入方法来很好地保留数据结构,同时突出显示模式并避免视觉混乱。在本文中,我们介绍了一个通用框架,该框架通过特征空间变换在结构保留和类分离方面提高了现有嵌入的质量。提出了一种基于结构保存和避免视觉混乱的复合质量度量,以获取嵌入的质量。我们通过使用一组基准数据集将其应用到几种广泛使用的嵌入技术中来评估我们方法的有效性,结果看起来很有希望。

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