基于布隆过滤器的IP信誉查找哈希函数的性能评估

Marc Antoine Gosselin-Lavigne, Hugo Gonzalez, Natalia Stakhanova, A. Ghorbani
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引用次数: 7

摘要

IP信誉查找是识别黑名单IP(即已知是垃圾邮件和恶意软件相关威胁的IP地址)的传统方法之一。然而,它的使用已经迅速增加,超出了传统的领域,达到各种IP过滤任务。能够提供必要的可伸缩性的解决方案之一是Bloom过滤器。高效的内存消耗,Bloom过滤器提供了一个快速的成员检查,允许以恒定的误报概率确认数据结构中集合元素的存在。随着IP信誉检查的使用增加和IPv6协议的越来越多的采用,布鲁姆过滤器迅速得到普及。尽管它们被广泛应用,但在实践中使用哪种哈希函数的问题仍然是开放的。在这项工作中,我们研究了10个加密和非加密函数对IP信誉查找的Bloom过滤器分析的适用性。实验使用受控的、随机生成的IP地址以及包含黑名单IP地址的真实数据集进行。根据我们的结果,我们推荐两种散列函数,因为它们的性能和可接受的低误报率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Performance Evaluation of Hash Functions for IP Reputation Lookup Using Bloom Filters
IP reputation lookup is one of the traditional methods for recognition of blacklisted IPs, i.e., IP addresses known to be sources of spam and malware-related threats. Its use however has been rapidly increasing beyond its traditional domain reaching various IP filtering tasks. One of the solutions able to provide a necessary scalability is a Bloom filter. Efficient in memory consumption, Bloom filters provide a fast membership check, allowing to confirm a presence of set elements in a data structure with a constant false positive probability. With the increased usage of IP reputation check and an increasing adoption of IPv6 protocol, Bloom filters quickly gained popularity. In spite of their wide application, the question of what hash functions to use in practice remains open. In this work, we investigate a 10 cryptographic and non-cryptographic functions for on their suitability for Bloom filter analysis for IP reputation lookup. Experiments are performed with controlled, randomly generated IP addresses as well as a real dataset containing blacklisted IP addresses. Based on our results we recommend two hash functions for their performance and acceptably low false positive rate.
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