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Decomposition and Simplification of Multivariate Data using Pareto Sets

机译:使用帕累托集分解和简化多元数据

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Topological and structural analysis of multivariate data is aimed at improving the understanding and usage of such data through identification of intrinsic features and structural relationships among multiple variables. We present two novel methods for simplifying so-called Pareto sets that describe such structural relationships. Such simplification is a precondition for meaningful visualization of structurally rich or noisy data. As a framework for simplification operations, we introduce a decomposition of the data domain into regions of equivalent structural behavior and the reachability graph that describes global connectivity of Pareto extrema. Simplification is then performed as a sequence of edge collapses in this graph; to determine a suitable sequence of such operations, we describe and utilize a comparison measure that reflects the changes to the data that each operation represents. We demonstrate and evaluate our methods on synthetic and real-world examples.
机译:多元数据的拓扑和结构分析旨在通过识别内在特征和多个变量之间的结构关系来提高对此类数据的理解和使用。我们提出了两种新颖的方法来简化描述此类结构关系的所谓Pareto集。这种简化是有意义的可视化结构丰富或嘈杂的数据的前提。作为简化操作的框架,我们将数据域的分解引入等效结构行为的区域以及描述帕累托极值的全局连通性的可及性图。然后,根据该图中的一系列边沿塌陷进行简化;为了确定此类操作的合适顺序,我们描述并利用了一种比较措施,该措施可反映每个操作所代表的数据的变化。我们将在合成和实际示例中论证和评估我们的方法。

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