SILVERBACK:用于柱状概率数据库中时态数据的可扩展关联挖掘

Yusheng Xie, Diana Palsetia, Goce Trajcevski, Ankit Agrawal, A. Choudhary
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引用次数: 9

摘要

我们解决了大规模概率关联规则挖掘的问题,并考虑了挖掘结果的准确性和在适度硬件基础设施上追求可扩展性之间的权衡。我们演示了如何将研究成果的扩展和调整集成到工业应用程序中,并介绍了由Voxsup公司开发的商业部署SILVERBACK框架。SILVERBACK解决了存储效率问题,提出了一个概率柱状基础设施,并使用了Bloom过滤器和储层采样技术。此外,还引入了一种基于Apriori的概率剪枝技术,用于频繁项集的挖掘。所提出的目标驱动技术显著减少了频繁项集候选项的大小。我们提出了广泛的实验评估,证明了将基础设施限制纳入相应研究技术的上下文感知的好处。实验表明,与传统的基于hadoop的方法相比,通过增加更多的主机来提高可伸缩性,SILVERBACK(自2011年5月以来已经在Voxsup Inc.进行了商业部署和开发)具有更好的运行时性能,而精度的牺牲可以忽略不计。
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SILVERBACK: Scalable association mining for temporal data in columnar probabilistic databases
We address the problem of large scale probabilistic association rule mining and consider the trade-offs between accuracy of the mining results and quest of scalability on modest hardware infrastructure. We demonstrate how extensions and adaptations of research findings can be integrated in an industrial application, and we present the commercially deployed SILVERBACK framework, developed at Voxsup Inc. SILVERBACK tackles the storage efficiency problem by proposing a probabilistic columnar infrastructure and using Bloom filters and reservoir sampling techniques. In addition, a probabilistic pruning technique has been introduced based on Apriori for mining frequent item-sets. The proposed target-driven technique yields a significant reduction on the size of the frequent item-set candidates. We present extensive experimental evaluations which demonstrate the benefits of a context-aware incorporation of infrastructure limitations into corresponding research techniques. The experiments indicate that, when compared to the traditional Hadoop-based approach for improving scalability by adding more hosts, SILVERBACK - which has been commercially deployed and developed at Voxsup Inc. since May 2011 - has much better run-time performance with negligible accuracy sacrifices.
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