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首页> 外文期刊>International journal of machine learning and cybernetics >Toward an efficient fuzziness based instance selection methodology for intrusion detection system
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Toward an efficient fuzziness based instance selection methodology for intrusion detection system

机译:面向入侵检测系统的基于有效模糊性的实例选择方法

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摘要

Building a high quality classifier is one of the key problems in the field of machine learning (ML) and pattern recognition. Many ML algorithms have suffered from high computational power in the presence of large scale data sets. This paper proposes a fuzziness based instance selection technique for the large data sets to increase the efficiency of supervised learning algorithms by improving the shortcomings of designing an effective intrusion detection system (IDS). The proposed methodology is dependent on a new kind of single layer feed-forward neural network (SLFN), called random weight neural network (RWNN). At the first stage, a membership vector corresponding to every training instance is obtained by using RWNN for computing the fuzziness. Secondly, the training instances (along with their fuzziness values) according to the actual class labels are grouped separately. After this, the instances having low fuzziness values in each group are extracted, which are used to build a reduced data set. The instances outputted by the proposed method are used as an input for ML classifiers, which result in reducing the learning time and also increasing the learning capability. The proposed methodology exhibits that the reduced data set can easily learn the boundaries between class labels. The most obvious finding from this study is a considerable increase in the accuracy rate with unseen examples when compared with other instance selection method, i.e., IB2. The proposed method provides the better generalization and fast learning capability. The reasonability of the proposed methodology is theoretically explained and experiments on well known ID data sets support its usefulness.
机译:建立高质量的分类器是机器学习(ML)和模式识别领域的关键问题之一。在存在大规模数据集的情况下,许多机器学习算法都遭受了高计算能力的困扰。本文针对大数据集提出了一种基于模糊度的实例选择技术,以通过改善设计有效入侵检测系统(IDS)的缺点来提高监督学习算法的效率。所提出的方法依赖于一种新型的单层前馈神经网络(SLFN),称为随机权重神经网络(RWNN)。在第一阶段,通过使用RWNN计算模糊度,获得与每个训练实例相对应的隶属度向量。其次,将根据实际班级标签的训练实例(及其模糊度值)分别分组。此后,提取每个组中具有低模糊度值的实例,这些实例用于构建精简数据集。所提出的方法输出的实例用作ML分类器的输入,从而减少了学习时间并提高了学习能力。所提出的方法论表明,简化的数据集可以轻松地学习类标签之间的边界。这项研究最明显的发现是,与其他实例选择方法(即IB2)相比,带有未见示例的准确率有了相当大的提高。所提出的方法具有更好的泛化能力和快速学习能力。理论上解释了所提出方法的合理性,并且对众所周知的ID数据集进行的实验证明了其有效性。

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