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A Novel Semi-supervised SVM Based on Tri-training for Intrusition Detection

机译:一种基于Tri-Training进行侵袭检测的新型半监控SVM

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—One of the main difficulties in machine learning is how to solve large-scale problems effectively, and the labeled data are limited and fairly expensive to obtain. In this paper a new semi-supervised SVM algorithm is proposed. It applies tri-training to improve SVM. The semisupervised SVM makes use of the large number of unlabeled data to modify the classifiers iteratively. Although tri-training doesn’t put any constraints on the classifier, the proposed method uses three different SVMs as the classification algorithm. Experiments on UCI datasets and application to the intrusion anomaly detection show that tritraining can improve the classification accuracy of SVM and its improved algorithms. We also find the accuracy of final classifier will be higher by increasing the difference of classifiers. Theoretical analysis and experiments show that the proposed method has excellent accuracy and classification speed.
机译:- 机器学习的主要困难是如何有效解决大规模问题,并且标记的数据是有限的,并且获得相当昂贵的。本文提出了一种新的半监督SVM算法。它适用于改善SVM的三训练。半熟的SVM利用大量未标记的数据来迭代地修改分类器。虽然TRI训练不会对分类器的任何约束施加,但是所提出的方法使用三种不同的SVM作为分类算法。 UCI数据集的实验和对入侵异常检测的应用表明,粉刺可以提高SVM的分类准确性及其改进的算法。我们还发现最终分类器的准确性通过增加分类器的差异将更高。理论分析和实验表明,该方法具有优异的准确性和分类速度。

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