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Since the frequency of network security incidents is nonlinear, traditional prediction methods such as ARMA, Gray systems are difficult to deal with the problem. When the size of sample is small, methods based on artificial neural network may not reach a high degree of preciseness. Least Squares Support Vector Machines (LSSVM) is a kind of machine learning methods based on the statistics learning theory, it can be applied to solve small sample and non-linear problems very well. This paper applied LSSVM to predict the occur frequency of network security incidents. To improve the accuracy, it used an improved genetic algorithm to optimize the parameters of LSSVM. Verified by real data sets, the improved genetic algorithm (IGA) converges faster than the simple genetic algorithm (SGA), and has a higher efficiency in the optimization procedure. Specially, the optimized LSSVM model worked very well on the prediction of frequency of network security incidents. 相似文献
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多数据库系统中的关键技术 总被引:11,自引:0,他引:11
本文主要介绍多数据库系统(MDBS)中的几个关键技术,包括MDBS的设计原则及体系结构、异构模式消解、查询处理、事务处理等方面的问题。 相似文献
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针对海量文本聚类中面临的海量性、高维性以及聚类结果的可描述性难题,提出了一个并行的文本聚类混合算法parSHDC.该算法采用纵向的方式在多个处理机间划分数据集,根据频繁词集生成粗聚类,然后利用并行k-means算法精化粗聚类从而得到最终结果,并由k个频繁词集对聚簇提供描述.与另外两个并行聚类算法通过实验进行比较,parSHDC具有更好的并行性和对数据规模的适应性,且可以生成更高质量的聚类. 相似文献