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A Visual Analysis of Multi-Attribute Data Using Pixel Matrix Displays

机译:使用像素矩阵显示器对多属性数据进行可视化分析

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摘要

Charts and tables are commonly used to visually analyze data. These graphics are simple and easy to understand, but charts show only highly aggregated data and present only a limited number of data values while tables often show too many data values. As a consequence, these graphics may either lose or obscure important information, so different techniques are required to monitor complex datasets. Users need more powerful visualization techniques to digest and compare detailed multi-attribute data to analyze the health of their business. This paper proposes an innovative solution based on the use of pixel-matrix displays to represent transaction-level information. With pixel-matrices, users can visualize areas of importance at a glance, a capability not provided by common charting techniques. We present our solutions to use colored pixel-matrices in (1) charts for visualizing data patterns and discovering exceptions, (2) tables for visualizing correlations and finding root-causes, and (3) time series for visualizing the evolution of long-running transactions. The solutions have been applied with success to product sales, Internet network performance analysis, and service contract applications demonstrating the benefits of our method over conventional graphics. The method is especially useful when detailed information is a key part of the analysis.
机译:图表通常用于可视化分析数据。这些图形简单易懂,但是图表仅显示高度聚合的数据,并且仅显示有限数量的数据值,而表通常显示太多的数据值。结果,这些图形可能会丢失或模糊重要信息,因此需要不同的技术来监视复杂的数据集。用户需要更强大的可视化技术来消化和比较详细的多属性数据,以分析其业务状况。本文提出了一种创新的解决方案,该解决方案基于使用像素矩阵显示器来表示事务级别的信息。使用像素矩阵,用户可以一目了然地查看重要区域,这是普通图表技术无法提供的功能。我们提出了以下解决方案:在(1)图表中使用彩色像素矩阵可视化数据模式和发现异常,在(2)表格中可视化相关性并查找根本原因,以及(3)时间序列以可视化长时间运行的演变交易。该解决方案已成功应用于产品销售,Internet网络性能分析和服务合同应用程序,证明了我们的方法比传统图形的优势。当详细信息是分析的关键部分时,该方法特别有用。

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