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首页> 外文期刊>IEEE Transactions on Knowledge and Data Engineering >On change diagnosis in evolving data streams
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On change diagnosis in evolving data streams

机译:关于不断发展的数据流中的变更诊断

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摘要

In recent years, the progress in hardware technology has made it possible for organizations to store and record large streams of transactional data. This results in databases which grow without limit at a rapid rate. This data can often show important changes in trends over time. In such cases, it is useful to understand, visualize, and diagnose the evolution of these trends. In this paper, we introduce the concept of velocity density estimation, a technique used to understand, visualize, and determine trends in the evolution of fast data streams. We show how to use velocity density estimation in order to create both temporal velocity profiles and spatial velocity profiles at periodic instants in time. These profiles are then used in order to predict three kinds of data evolution: dissolution, coagulation, and shift. Methods are proposed to visualize the changing data trends in a single online scan of the data stream and a computational requirement which is linear in the number of data points. The visualization techniques can also be used to provide online animations which show the changes in the data characteristics while they occur. In addition, batch processing techniques are proposed in order to quantify the level of change across different combinations of dimensions. This quantification is then used in order to determine dimensional combinations with significant evolution. The techniques discussed in this paper can be easily extended to spatiotemporal data, changes in data snapshots at fixed instances in time, or any other data which has a temporal component during its evolution.
机译:近年来,硬件技术的进步使组织能够存储和记录大量交易数据。这导致数据库无限制地快速增长。这些数据通常可以显示趋势随时间的重要变化。在这种情况下,了解,可视化和诊断这些趋势的演变非常有用。在本文中,我们介绍了速度密度估计的概念,这是一种用于理解,可视化和确定快速数据流演变趋势的技术。我们展示了如何使用速度密度估计以便在周期性的瞬时时刻创建时间速度剖面和空间速度剖面。然后使用这些配置文件来预测三种数据演变:溶解,凝结和移动。提出了在数据流的单个在线扫描中可视化变化的数据趋势的方法以及在数据点数量上呈线性的计算要求。可视化技术还可以用于提供在线动画,这些动画可以显示数据特征在发生变化时的变化。另外,提出了批处理技术以量化跨不同尺寸组合的变化水平。然后使用此量化来确定具有明显演变的尺寸组合。本文讨论的技术可以轻松扩展到时空数据,固定时间的数据快照在时间上的变化或在其演化过程中具有时间成分的任何其他数据。

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