Counting Evolving Data Stream Based on Hierarchical Counting Bloom Filter

Computational Intelligence and Security, 2008. CIS '08. International Conference(2008)

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摘要
In many data stream oriented application circumstances, frequency distribution of elements meets heavy-tailed distribution, which means most elements have small frequencies and few elements have high frequencies. Consequently, traditional counting bloom filters (CBF) and dynamic count filters (DCF) cannot represent the data effectively. In order to improve the data processing efficiency, this paper proposes a novel hierarchical counting bloom filters (HCBF) data structure. We evaluate the performance of HCBF by theoretical analysis and simulation experiments. Both analysis and simulation results show that HCBF significantly reduces space complexity while maintaining better time complexity and error rate according to CBF and DCF.
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关键词
hierarchical,database management systems,statistical distributions,element frequency distribution,simulation experiment,heavy-tailed distribution,data structures,data structure,dynamic count filters,hierarchical counting bloom filter data structure,better time complexity,frequency distribution,element frequency,dynamic count filter,bloom filter,bloom filters,simulation result,data stream,evolving data stream,data processing efficiency,heavy tailed distribution,error rate,time frequency analysis,space complexity,radiation detectors,time complexity,data processing,high frequency
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