基于里程碑模型的不确定数据流频繁模式挖掘系统

C. Leung, Fan Jiang, Y. Hayduk
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引用次数: 18

摘要

环境监测等应用的传感器产生了大量的流数据。部分由于传感器的固有限制,这些连续流数据可能是不确定的。在过去的几年中,已经提出了应用滑动窗口或时间衰落窗口模型从不确定数据流中挖掘频繁模式的算法。然而,也有其他模型来处理数据流。在本文中,我们提出了一个基于里程碑模型的系统,用于从不确定数据流中挖掘频繁模式。
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A landmark-model based system for mining frequent patterns from uncertain data streams
Huge volumes of streaming data have been generated by sensors for applications such as environment surveillance. Partially due to the inherited limitation of sensors, these continuous streaming data can be uncertain. Over the past few years, algorithms have been proposed to apply the sliding window or time-fading window model to mine frequent patterns from streams of uncertain data. However, there are also other models to process data streams. In this paper, we propose a landmark-model based system for mining frequent patterns from streams of uncertain data.
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