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Dimension reconstruction for visual exploration of subspace clusters in high-dimensional data

机译:高维数据中子空间集群视觉探索的维度重建

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Subspace-based analysis has increasingly become the preferred method for clustering high-dimensional data. A visually interactive exploration of subspaces and clusters is a cyclic process. Every meaningful discovery will motivate users to re-search subspaces that can provide improved clustering results and reveal the relationships among clusters that can hardly coexist in the original subspaces. However, the combination of dimensions from the original subspaces is not always effective in finding the expected subspaces. In this study, we present an approach that enables users to reconstruct new dimensions from the data projections of subspaces to preserve interesting cluster information. The reconstructed dimensions are included into an analytical workflow with the original dimensions to help users construct target-oriented subspaces which clearly display informative cluster structures. We also provide a visualization tool that assists users in the exploration of subspace clusters by utilizing dimension reconstruction. Several case studies on synthetic and real-world data sets have been performed to prove the effectiveness of our approach. Lastly, further evaluation of the approach has been conducted via expert reviews.
机译:基于子空间的分析越来越成为聚类高维数据的首选方法。对子空间和集群的视觉互动探索是一种循环过程。每个有意义的发现都将激励用户重新搜索可以提供改进的聚类结果的子空间,并揭示了在原始子空间中几乎不共存的集群之间的关系。然而,来自原始子空间的尺寸的组合在找到预期子空间方面并不总是有效的。在本研究中,我们提出了一种方法,使用户能够从子空间的数据投影重建新尺寸以保护有趣的集群信息。重建尺寸包含在具有原始尺寸的分析工作流程中,以帮助用户构建面向目标的子空间,这些子空间清楚地显示信息丰富的集群结构。我们还提供一种可视化工具,可通过利用尺寸重建,帮助用户探索子空间集群。已经进行了几种关于合成和现实世界数据集的案例研究,以证明我们的方法的有效性。最后,通过专家评论进行了进一步评估该方法。

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