基于完全随机子空间技术的增广负选择异常检测算法

Yi Wang, Tao Li, Fangdong Zhu
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引用次数: 2

摘要

负选择算法是人工免疫系统中的一种重要算法,其灵感来源于生物免疫系统。传统的负选择算法由于数据稀疏性和距离测量无意义,缺乏在高维空间的自适应学习能力。为了解决这些问题,本文提出了一种改进的负选择算法——完全随机子空间负选择算法(RS-NSA)。该方法采用自举法,降低了正常样本区域覆盖异常导致的误分类率。该算法采用完全随机子空间技术,通过降维来缓解维数的困扰。此外,为了提高准确率,引入了集成学习技术,其中成分分类器可以被任何负选择算法替代。在UCI数据集上的经验评估表明,与v -检测器相比,我们提出的方法不仅可以实现更高的检测率和更低的虚警率,而且可以缩短训练时间。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Augmented Negative Selection Algorithm with Complete Random Subspace Technique for Anomaly Detection
Negative selection algorithm is an important algorithm in the artificial immune system, inspired by the biological immune system. Traditional negative selection algorithms lack adaptive learning ability in high-dimensional space due to data sparsity and meaningless distance measurement. To solve these problems, an improved negative selection algorithm called Negative Selection Algorithm with Complete Random Subspace Technique (RS-NSA), is proposed in this paper. It adopts a bootstrap method to reduce the rate of misclassification resulting from the anomalies covered by the regions of normal samples. By using the complete random subspace technology, it reduces dimensionality to alleviate the curse of dimensionality. In addition, the ensemble learning technique is introduced to improve accuracy, in which component classifiers can be replaced by any negative selection algorithm. Empirical evaluation on UCI datasets reveals that, compared with V-detector, our proposed method can not only achieve a higher detection rate and a lower false alarm rate, but also shorten the training time.
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