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Outlier-Preserving Focus+Context Visualization in Parallel Coordinates

机译:平行坐标中离群值保留焦点+上下文可视化

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Focus+context visualization integrates a visually accentuated representation of selected data items in focus (more details, more opacity, etc.) with a visually deemphasized representation of the rest of the data, i.e., the context. The role of context visualization is to provide an overview of the data for improved user orientation and improved navigation. A good overview comprises the representation of both outliers and trends. Up to now, however, context visualization not really treated outliers sufficiently. In this paper we present a new approach to focus+context visualization in parallel coordinates which is truthful to outliers in the sense that small-scale features are detected before visualization and then treated specially during context visualization. Generally, we present a solution which enables context visualization at several levels of abstraction, both for the representation of outliers and trends. We introduce outlier detection and context generation to parallel coordinates on the basis of a binned data representation. This leads to an output-oriented visualization approach which means that only those parts of the visualization process are executed which actually affect the final rendering. Accordingly, the performance of this solution is much more dependent on the visualization size than on the data size which makes it especially interesting for large datasets. Previous approaches are outperformed, the new solution was successfully applied to datasets with up to 3 million data records and up to 50 dimensions
机译:焦点+上下文可视化将所选数据项在焦点上的视觉强调表示(更多细节,更多不透明性等)与其余数据(即上下文)的视觉强调表示集成在一起。上下文可视化的作用是提供数据概览,以改善用户定位和导航。一个好的概览包括异常值和趋势的表示。但是,到目前为止,上下文可视化还没有真正充分地对待异常值。在本文中,我们提出了一种新的焦点+上下文可视化的并行坐标方法,这种方法对于离群值是真实的,因为在可视化之前先检测到小尺度特征,然后在上下文可视化过程中对其进行特殊处理。通常,我们提供一种解决方案,可以在多个抽象级别上进行上下文可视化,以表示异常值和趋势。我们基于合并的数据表示将异常检测和上下文生成引入并行坐标。这导致了面向输出的可视化方法,这意味着仅执行可视化过程中实际上影响最终渲染的那些部分。因此,此解决方案的性能更多地取决于可视化大小而不是数据大小,这使得它对于大型数据集尤为有趣。以前的方法表现不佳,新解决方案已成功应用于具有多达300万条数据记录和多达50个维度的数据集

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