Matches in SemOpenAlex for { <https://semopenalex.org/work/W3207294822> ?p ?o ?g. }
- W3207294822 abstract "Abstract The pervasiveness of the Internet did not come without security risk. The current threat landscape is characterized by the rise of sophisticated cyber attacks, which target user devices and corporate infrastructure. To tackle the risk of compromise, data‐driven detection strategies have become increasingly mainstream. The relevant literature includes many works that leverage open‐source datasets, supervised learning or, less commonly, unsupervised learning. However, advanced network attacks' spatial and temporal characteristics prove standalone threat detection systems inadequate, especially for detecting a multi‐stage attack and often stealthy techniques. Moreover, attackers have been demonstrating adversarial effects that are caused by deception and contaminating data‐driven methods with adversarial learning. For these reasons, recent research in threat detection is moving away from commonly, and often obsolete, datasets as well as adopting more multi‐layered decision strategies. As such, this article provides a comprehensive review of decision strategies. We also examine their ability to support cyber situational awareness (CSA), providing to security analysts CSA properties such as situation assessment and system refinement. This article is categorized under: Digital and Multimedia Science > Cyber Threat Intelligence" @default.
- W3207294822 created "2021-10-25" @default.
- W3207294822 creator A5019049253 @default.
- W3207294822 creator A5054105998 @default.
- W3207294822 creator A5087363210 @default.
- W3207294822 date "2021-10-14" @default.
- W3207294822 modified "2023-10-16" @default.
- W3207294822 title "Toward situational awareness in threat detection. A survey" @default.
- W3207294822 cites W1489073918 @default.
- W3207294822 cites W1572811218 @default.
- W3207294822 cites W1772700132 @default.
- W3207294822 cites W1972062587 @default.
- W3207294822 cites W1986332411 @default.
- W3207294822 cites W2023294425 @default.
- W3207294822 cites W2043125751 @default.
- W3207294822 cites W2050131929 @default.
- W3207294822 cites W2066843515 @default.
- W3207294822 cites W2100805904 @default.
- W3207294822 cites W2108073531 @default.
- W3207294822 cites W2122301654 @default.
- W3207294822 cites W2122646361 @default.
- W3207294822 cites W2125500141 @default.
- W3207294822 cites W2132870739 @default.
- W3207294822 cites W2133297572 @default.
- W3207294822 cites W2146948159 @default.
- W3207294822 cites W2558017483 @default.
- W3207294822 cites W2739066632 @default.
- W3207294822 cites W2766805006 @default.
- W3207294822 cites W2772356386 @default.
- W3207294822 cites W2783047817 @default.
- W3207294822 cites W2789828921 @default.
- W3207294822 cites W2792581684 @default.
- W3207294822 cites W2794360330 @default.
- W3207294822 cites W2806697149 @default.
- W3207294822 cites W28412257 @default.
- W3207294822 cites W2870670057 @default.
- W3207294822 cites W2887561884 @default.
- W3207294822 cites W2895929873 @default.
- W3207294822 cites W2897924986 @default.
- W3207294822 cites W2899992227 @default.
- W3207294822 cites W2915063521 @default.
- W3207294822 cites W2924689635 @default.
- W3207294822 cites W2942578132 @default.
- W3207294822 cites W2945748508 @default.
- W3207294822 cites W2947334153 @default.
- W3207294822 cites W2947499652 @default.
- W3207294822 cites W2950250245 @default.
- W3207294822 cites W2958285686 @default.
- W3207294822 cites W2958489519 @default.
- W3207294822 cites W2962703433 @default.
- W3207294822 cites W2963857521 @default.
- W3207294822 cites W2964082701 @default.
- W3207294822 cites W2974941966 @default.
- W3207294822 cites W2985244210 @default.
- W3207294822 cites W2986868741 @default.
- W3207294822 cites W2988337058 @default.
- W3207294822 cites W2988790801 @default.
- W3207294822 cites W2988961468 @default.
- W3207294822 cites W2990225485 @default.
- W3207294822 cites W2991507433 @default.
- W3207294822 cites W3017217726 @default.
- W3207294822 cites W3032021129 @default.
- W3207294822 cites W3034995119 @default.
- W3207294822 cites W3045857914 @default.
- W3207294822 cites W3047621094 @default.
- W3207294822 cites W3048764235 @default.
- W3207294822 cites W3048895421 @default.
- W3207294822 cites W3055166465 @default.
- W3207294822 cites W3093410479 @default.
- W3207294822 cites W3095234215 @default.
- W3207294822 cites W3096418565 @default.
- W3207294822 cites W3097730806 @default.
- W3207294822 cites W3105087971 @default.
- W3207294822 cites W3105682467 @default.
- W3207294822 cites W3105780912 @default.
- W3207294822 cites W3109376429 @default.
- W3207294822 cites W3110204761 @default.
- W3207294822 cites W3118111094 @default.
- W3207294822 cites W3118910683 @default.
- W3207294822 cites W3119370674 @default.
- W3207294822 cites W3119693685 @default.
- W3207294822 cites W3119902784 @default.
- W3207294822 cites W3135970545 @default.
- W3207294822 cites W3140476622 @default.
- W3207294822 cites W3143407302 @default.
- W3207294822 cites W3153407530 @default.
- W3207294822 cites W3153580016 @default.
- W3207294822 cites W3158507034 @default.
- W3207294822 cites W3165871547 @default.
- W3207294822 cites W3168730590 @default.
- W3207294822 cites W3177472101 @default.
- W3207294822 cites W3185502221 @default.
- W3207294822 cites W3186874092 @default.
- W3207294822 cites W3190330173 @default.
- W3207294822 cites W3193490676 @default.
- W3207294822 cites W3195631217 @default.
- W3207294822 cites W4247829154 @default.
- W3207294822 doi "https://doi.org/10.1002/wfs2.1448" @default.
- W3207294822 hasPublicationYear "2021" @default.
- W3207294822 type Work @default.