动态数据流中频繁模式发现的负载可控挖掘系统

K. Jea, Chao-Wei Li, Chih-Wei Hsu, Ru-Ping Lin, S. Yen
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引用次数: 7

摘要

在许多应用程序中,数据流源的容量容易出现急剧的峰值,这就需要为数据流处理系统减少负载。在本研究中,我们研究了事务性数据流中频繁模式发现的负载消减问题。提出了一种具有ε-缺陷挖掘算法和三种专用减载方案的负载可控挖掘系统。当系统过载时,将执行一个减载方案来减少一部分未处理的数据。实验结果表明,减载策略确实可以减轻系统工作量,同时使挖掘精度保持在可接受的水平。
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A load-controllable mining system for frequent-pattern discovery in dynamic data streams
In many applications, data-stream sources are prone to dramatic spikes in volume, which necessitates load shedding for data-stream processing systems. In this research, we study the load-shedding problem for frequent-pattern discovery in transactional data streams. A load-controllable mining system with an ε-deficient mining algorithm and three dedicated load-shedding schemes is proposed. When the system is overloaded, a load-shedding scheme is executed to prune a fraction of unprocessed data. From the experimental result, we find that the strategies of load shedding can indeed lighten the system workload while preserving the mining accuracy at an acceptable level.
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