acBF:基于rDBF的高精度成员过滤器

Ripon Patgiri, Sabuzima Nayak, S. Borgohain
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引用次数: 1

摘要

布隆过滤器是一种用于成员查询的数据结构,用于不同的研究领域,以提高系统性能和降低片上内存消耗。然而,在不影响性能和内存空间的情况下,仍然缺乏高精度的布隆过滤器。此外,可伸缩性会导致更多的内存消耗和时间复杂性。因此,在本文中,我们提出了一种新的布隆滤波器,称为精确布隆滤波器(acBF),其特点是:a)令人印象印象的99.98%的保证精度,b)最大假阳性概率为0.00015,c)较低的碰撞概率,d)无假阴性,e)最优的插入和成员查询成本,g)每项内存消耗≤8 -位。acBF部署了8个多维布隆过滤器。多维bloomfilter在不牺牲系统性能的情况下将误报限制在8级。我们进行了严格的实验,验证了acBF的精度是前所未有的高。并与可扩展布隆滤波器(SBF)和布谷鸟滤波器(CF)进行了比较。实验表明,acBF在准确率和可扩展性方面优于SBF和CF。此外,acBF在查找操作方面的性能优于CF。但是,CF在插入方面优于acBF。然而,acBF的精度是SBF和CF无法比拟的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
acBF: A High Accuracy Membership Filter using rDBF
Bloom Filter is a data structure for membership query which is deployed in diverse research domains to boost up system’s performance and to lower on-chip memory consumption. However, there are still lacking of a high accuracy Bloom Filterwithoutcompromisingtheperformanceandmemoryspace. Moreover, the scalability causes more memory consumption as well as time complexity. Therefore, in this paper, we present a novel Bloom Filter, called accurate Bloom Filter (acBF), which features: a) an impressive guaranteed accuracy of 99.98%, b) a maximum false positive probability of 0.00015, c) lower collision probability, d) free from false negative, e) optimal insertion and membershipquerycost,andg)≤ 8−bits ofmemoryconsumption per item. acBF deploys eight multidimensional Bloom Filter. ThesemultidimensionalBloomFilterseliminatethefalsepositives at eight stages without sacrificing the system performance. We have conducted rigorous experiments to validate the accuracy of acBF which is unprecedentedly high. Also, acBF is compared with Scalable Bloom Filter (SBF) and Cuckoo Filter (CF). Experiments show acBF outperforms SBF and CF in terms of accuracy, and scalability. Moreover, performance of acBF outperforms CF in lookup operation. But, CF outperforms acBF in insertion. However, accuracy of acBF is incomparable with both SBF and CF.
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