Matches in SemOpenAlex for { <https://semopenalex.org/work/W3165871547> ?p ?o ?g. }
- W3165871547 endingPage "3553" @default.
- W3165871547 startingPage "3538" @default.
- W3165871547 abstract "Promptly discovering unknown network attacks is critical for reducing the risk of major loss imposed on organizations and information infrastructure. This paper aims at developing an intelligent intrusion detection system capable of classifying known attacks as well as inferring unknown ones. To achieve this, we formulate the problem of fine-grained known/unknown intrusion detection as a two-stage minimization problem, where the first stage is to seek a score measure for minimizing the empirical risk of misclassifying the known attacks, while the second stage is to find another score measure for minimizing the identification risk of inferring unknown attacks. The hierarchical nature of problem formulation allows us to employ the class conditioned auto-encoders to construct a hierarchical intrusion detection framework. Since the reconstruction errors of unknown attacks are generally higher than that of the known attacks, we further employ extreme value theory in the second stage to model the distribution of reconstruction errors for differentiating known/unknown attack. To further reduce the false positive rate, we add a benign clustering module for learning the multimodal distribution of benign traffic. We conduct an experiment on two widely used datasets for assessing intrusion detection. The results show that the proposed method improves the detection rate of unknown attacks while keeping a low false positive rate." @default.
- W3165871547 created "2021-06-07" @default.
- W3165871547 creator A5007310440 @default.
- W3165871547 creator A5045720734 @default.
- W3165871547 creator A5048357184 @default.
- W3165871547 creator A5076768386 @default.
- W3165871547 creator A5088416755 @default.
- W3165871547 date "2021-01-01" @default.
- W3165871547 modified "2023-10-10" @default.
- W3165871547 title "Conditional Variational Auto-Encoder and Extreme Value Theory Aided Two-Stage Learning Approach for Intelligent Fine-Grained Known/Unknown Intrusion Detection" @default.
- W3165871547 cites W1548212946 @default.
- W3165871547 cites W1985987493 @default.
- W3165871547 cites W2008704879 @default.
- W3165871547 cites W2018459374 @default.
- W3165871547 cites W2099940443 @default.
- W3165871547 cites W2119880843 @default.
- W3165871547 cites W2529525882 @default.
- W3165871547 cites W2591712613 @default.
- W3165871547 cites W2604589052 @default.
- W3165871547 cites W2766196489 @default.
- W3165871547 cites W2766702586 @default.
- W3165871547 cites W2772317693 @default.
- W3165871547 cites W2783398758 @default.
- W3165871547 cites W2783741806 @default.
- W3165871547 cites W2789828921 @default.
- W3165871547 cites W2794988934 @default.
- W3165871547 cites W2800094109 @default.
- W3165871547 cites W2807319534 @default.
- W3165871547 cites W2808472075 @default.
- W3165871547 cites W2886020981 @default.
- W3165871547 cites W2890474333 @default.
- W3165871547 cites W2898318153 @default.
- W3165871547 cites W2899948414 @default.
- W3165871547 cites W2907060980 @default.
- W3165871547 cites W2907421153 @default.
- W3165871547 cites W2912327636 @default.
- W3165871547 cites W2926701059 @default.
- W3165871547 cites W2944210580 @default.
- W3165871547 cites W2963197901 @default.
- W3165871547 cites W2963265635 @default.
- W3165871547 cites W3005630930 @default.
- W3165871547 cites W3035240825 @default.
- W3165871547 cites W3047608117 @default.
- W3165871547 cites W3097159718 @default.
- W3165871547 cites W3098878596 @default.
- W3165871547 cites W4205598956 @default.
- W3165871547 cites W572355794 @default.
- W3165871547 doi "https://doi.org/10.1109/tifs.2021.3083422" @default.
- W3165871547 hasPublicationYear "2021" @default.
- W3165871547 type Work @default.
- W3165871547 sameAs 3165871547 @default.
- W3165871547 citedByCount "19" @default.
- W3165871547 countsByYear W31658715472021 @default.
- W3165871547 countsByYear W31658715472022 @default.
- W3165871547 countsByYear W31658715472023 @default.
- W3165871547 crossrefType "journal-article" @default.
- W3165871547 hasAuthorship W3165871547A5007310440 @default.
- W3165871547 hasAuthorship W3165871547A5045720734 @default.
- W3165871547 hasAuthorship W3165871547A5048357184 @default.
- W3165871547 hasAuthorship W3165871547A5076768386 @default.
- W3165871547 hasAuthorship W3165871547A5088416755 @default.
- W3165871547 hasConcept C116834253 @default.
- W3165871547 hasConcept C119857082 @default.
- W3165871547 hasConcept C124101348 @default.
- W3165871547 hasConcept C153180895 @default.
- W3165871547 hasConcept C154945302 @default.
- W3165871547 hasConcept C2780009758 @default.
- W3165871547 hasConcept C35525427 @default.
- W3165871547 hasConcept C41008148 @default.
- W3165871547 hasConcept C50644808 @default.
- W3165871547 hasConcept C59822182 @default.
- W3165871547 hasConcept C73555534 @default.
- W3165871547 hasConcept C86803240 @default.
- W3165871547 hasConcept C95922358 @default.
- W3165871547 hasConceptScore W3165871547C116834253 @default.
- W3165871547 hasConceptScore W3165871547C119857082 @default.
- W3165871547 hasConceptScore W3165871547C124101348 @default.
- W3165871547 hasConceptScore W3165871547C153180895 @default.
- W3165871547 hasConceptScore W3165871547C154945302 @default.
- W3165871547 hasConceptScore W3165871547C2780009758 @default.
- W3165871547 hasConceptScore W3165871547C35525427 @default.
- W3165871547 hasConceptScore W3165871547C41008148 @default.
- W3165871547 hasConceptScore W3165871547C50644808 @default.
- W3165871547 hasConceptScore W3165871547C59822182 @default.
- W3165871547 hasConceptScore W3165871547C73555534 @default.
- W3165871547 hasConceptScore W3165871547C86803240 @default.
- W3165871547 hasConceptScore W3165871547C95922358 @default.
- W3165871547 hasFunder F4320335777 @default.
- W3165871547 hasLocation W31658715471 @default.
- W3165871547 hasOpenAccess W3165871547 @default.
- W3165871547 hasPrimaryLocation W31658715471 @default.
- W3165871547 hasRelatedWork W155571662 @default.
- W3165871547 hasRelatedWork W1999884680 @default.
- W3165871547 hasRelatedWork W2091135350 @default.
- W3165871547 hasRelatedWork W2246669293 @default.
- W3165871547 hasRelatedWork W2360641431 @default.
- W3165871547 hasRelatedWork W2366051640 @default.
- W3165871547 hasRelatedWork W2382568009 @default.