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Efficient hybrid rule pruning for intrusion detection using multi-dimensional probability distribution

机译:使用多维概率分布进行入侵检测的有效混合规则修剪

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Evolutionary algorithms for data mining have recently received increased attention due to their performance of the global search. Genetic Network Programming(GNP) has been proposed in recent years as one of the evolutionary algorithms and applied to data mining successfully, because of the prominent representation ability with the compact program derived from the directed graph structure and node reusability of GNP. Conventional GNP-based rule mining focused on binary-valued transaction data. Therefore, Fuzzy GNP based class association rule mining has been proposed to deal with the continuous-valued data types in the real network connection data. In this paper, firstly, many interesting rules are extracted by Fuzzy GNP-based hybrid class association rule mining from training data. Then, a post-processing method is used to prune class association rules. After that, a classifier is modeled based on the multi-dimensional probability distribution for testing data. Experiments on KDDCup 1999 data show the substantial improvement of the detection ability of the proposed method.
机译:数据挖掘的进化算法由于其在全局搜索中的性能,最近受到了越来越多的关注。遗传网络编程(GNP)是近年来发展起来的一种算法,由于其有向图结构和节点可重用性而衍生的紧凑型程序具有突出的表示能力,因此已成功地应用于数据挖掘。基于常规GNP的规则挖掘专注于二值交易数据。因此,提出了基于模糊GNP的类关联规则挖掘技术来处理真实网络连接数据中的连续值数据类型。本文首先通过基于模糊GNP的混合类关联规则挖掘,从训练数据中提取出许多有趣的规则。然后,使用后处理方法修剪类关联规则。之后,基于多维概率分布对分类器进行建模以测试数据。在KDDCup 1999数据上进行的实验表明,该方法的检测能力有了实质性的提高。

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