Matches in SemOpenAlex for { <https://semopenalex.org/work/W4375851909> ?p ?o ?g. }
Showing items 1 to 90 of
90
with 100 items per page.
- W4375851909 abstract "Industrial Internet of Things (IIoT) is a collaboration of sensors, networking equipment, and devices to collect data from industrial operations. IIoT systems possess numerous security vulnerabilities due to inter-connectivity and limited computational power. Machine learning based intrusion detection system (IDS) is one possible security approach that continuously monitors network data and detects cyberattacks in an automated manner. Hyper-dimensional (HD) computing is a brain-inspired ML method that is sufficiently accurate while being extremely robust, fast, and energy-efficient. Based on these characteristics, HD can be a favorable ML-based IDS solution for IIoT systems. However, its prediction performance is impacted by small perturbations in the input data. To fully evaluate the vulnerabilities of HD, we propose an effective HD-oriented adversarial attack design. We first select the most diverse set of attacks to minimize overhead, and eliminate adversarial redundancy. Then, we perform a real-time attack selection which finds out the most effective attack. Our experiments on a realistic IIoT intrusion data set show the effectiveness of our attack design. Compared to the most effective single attack, our design strategy can improve attack success rate by up to 36%, and F1 score by up to 61%." @default.
- W4375851909 created "2023-05-10" @default.
- W4375851909 creator A5025573294 @default.
- W4375851909 creator A5029850946 @default.
- W4375851909 creator A5067741934 @default.
- W4375851909 date "2023-05-09" @default.
- W4375851909 modified "2023-09-29" @default.
- W4375851909 title "Adversarial-HD: Hyperdimensional Computing Adversarial Attack Design for Secure Industrial Internet of Things" @default.
- W4375851909 cites W2165533158 @default.
- W4375851909 cites W2608911009 @default.
- W4375851909 cites W2772084711 @default.
- W4375851909 cites W2774644650 @default.
- W4375851909 cites W2796296808 @default.
- W4375851909 cites W2803820765 @default.
- W4375851909 cites W2885128583 @default.
- W4375851909 cites W2895400994 @default.
- W4375851909 cites W2896370767 @default.
- W4375851909 cites W2946584982 @default.
- W4375851909 cites W2986387098 @default.
- W4375851909 cites W3044855437 @default.
- W4375851909 cites W3105115497 @default.
- W4375851909 cites W3127943761 @default.
- W4375851909 cites W3129112942 @default.
- W4375851909 cites W3138839836 @default.
- W4375851909 cites W3191884578 @default.
- W4375851909 cites W3212271031 @default.
- W4375851909 cites W4226319939 @default.
- W4375851909 cites W4226524950 @default.
- W4375851909 doi "https://doi.org/10.1145/3576914.3587484" @default.
- W4375851909 hasPublicationYear "2023" @default.
- W4375851909 type Work @default.
- W4375851909 citedByCount "1" @default.
- W4375851909 countsByYear W43758519092023 @default.
- W4375851909 crossrefType "proceedings-article" @default.
- W4375851909 hasAuthorship W4375851909A5025573294 @default.
- W4375851909 hasAuthorship W4375851909A5029850946 @default.
- W4375851909 hasAuthorship W4375851909A5067741934 @default.
- W4375851909 hasBestOaLocation W43758519091 @default.
- W4375851909 hasConcept C110875604 @default.
- W4375851909 hasConcept C111919701 @default.
- W4375851909 hasConcept C120314980 @default.
- W4375851909 hasConcept C136764020 @default.
- W4375851909 hasConcept C152124472 @default.
- W4375851909 hasConcept C154945302 @default.
- W4375851909 hasConcept C177264268 @default.
- W4375851909 hasConcept C199360897 @default.
- W4375851909 hasConcept C202839342 @default.
- W4375851909 hasConcept C2778403875 @default.
- W4375851909 hasConcept C2779960059 @default.
- W4375851909 hasConcept C31258907 @default.
- W4375851909 hasConcept C35525427 @default.
- W4375851909 hasConcept C37736160 @default.
- W4375851909 hasConcept C38652104 @default.
- W4375851909 hasConcept C41008148 @default.
- W4375851909 hasConcept C65856478 @default.
- W4375851909 hasConcept C81860439 @default.
- W4375851909 hasConceptScore W4375851909C110875604 @default.
- W4375851909 hasConceptScore W4375851909C111919701 @default.
- W4375851909 hasConceptScore W4375851909C120314980 @default.
- W4375851909 hasConceptScore W4375851909C136764020 @default.
- W4375851909 hasConceptScore W4375851909C152124472 @default.
- W4375851909 hasConceptScore W4375851909C154945302 @default.
- W4375851909 hasConceptScore W4375851909C177264268 @default.
- W4375851909 hasConceptScore W4375851909C199360897 @default.
- W4375851909 hasConceptScore W4375851909C202839342 @default.
- W4375851909 hasConceptScore W4375851909C2778403875 @default.
- W4375851909 hasConceptScore W4375851909C2779960059 @default.
- W4375851909 hasConceptScore W4375851909C31258907 @default.
- W4375851909 hasConceptScore W4375851909C35525427 @default.
- W4375851909 hasConceptScore W4375851909C37736160 @default.
- W4375851909 hasConceptScore W4375851909C38652104 @default.
- W4375851909 hasConceptScore W4375851909C41008148 @default.
- W4375851909 hasConceptScore W4375851909C65856478 @default.
- W4375851909 hasConceptScore W4375851909C81860439 @default.
- W4375851909 hasLocation W43758519091 @default.
- W4375851909 hasOpenAccess W4375851909 @default.
- W4375851909 hasPrimaryLocation W43758519091 @default.
- W4375851909 hasRelatedWork W123872086 @default.
- W4375851909 hasRelatedWork W3158507034 @default.
- W4375851909 hasRelatedWork W3176065393 @default.
- W4375851909 hasRelatedWork W3196154315 @default.
- W4375851909 hasRelatedWork W4205705013 @default.
- W4375851909 hasRelatedWork W4298217332 @default.
- W4375851909 hasRelatedWork W4306180880 @default.
- W4375851909 hasRelatedWork W4366126803 @default.
- W4375851909 hasRelatedWork W4375851909 @default.
- W4375851909 hasRelatedWork W4382395538 @default.
- W4375851909 isParatext "false" @default.
- W4375851909 isRetracted "false" @default.
- W4375851909 workType "article" @default.