Augmented Negative Selection Algorithm with Complete Random Subspace Technique for Anomaly Detection
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[1] Mario Pavone,et al. DENSA: An effective negative selection algorithm with flexible boundaries for self-space and dynamic number of detectors , 2017, Eng. Appl. Artif. Intell..
[2] Zhou Ji,et al. Revisiting Negative Selection Algorithms , 2007, Evolutionary Computation.
[3] Qinghua Hu,et al. A Fitting Model for Feature Selection With Fuzzy Rough Sets , 2017, IEEE Transactions on Fuzzy Systems.
[4] Dong Li,et al. A boundary-fixed negative selection algorithm with online adaptive learning under small samples for anomaly detection , 2016, Eng. Appl. Artif. Intell..
[5] Tao Yang,et al. A Quick Negative Selection Algorithm for One-Class Classification in Big Data Era , 2017 .
[6] Zhou Ji,et al. Estimating the detector coverage in a negative selection algorithm , 2005, GECCO '05.
[7] Hans-Peter Kriegel,et al. Can Shared-Neighbor Distances Defeat the Curse of Dimensionality? , 2010, SSDBM.
[8] George Atia,et al. A Subspace Learning Approach for High Dimensional Matrix Decomposition with Efficient Column/Row Sampling , 2016, ICML.
[9] Charu C. Aggarwal,et al. On the Surprising Behavior of Distance Metrics in High Dimensional Spaces , 2001, ICDT.
[10] Alan S. Perelson,et al. Self-nonself discrimination in a computer , 1994, Proceedings of 1994 IEEE Computer Society Symposium on Research in Security and Privacy.
[11] Hongxia Jin,et al. Efficient Private Empirical Risk Minimization for High-dimensional Learning , 2016, ICML.