Matches in SemOpenAlex for { <https://semopenalex.org/work/W4285013180> ?p ?o ?g. }
Showing items 1 to 96 of
96
with 100 items per page.
- W4285013180 endingPage "2158" @default.
- W4285013180 startingPage "2158" @default.
- W4285013180 abstract "Recently, artificial intelligence (AI) techniques have been used to describe the characteristics of information, as they help in the process of data mining (DM) to analyze data and reveal rules and patterns. In DM, anomaly detection is an important area that helps discover hidden behavior within the data that is most vulnerable to attack. It also helps detect network intrusion. Algorithms such as hybrid K-mean array and sequential minimal optimization (SMO) rating can be used to improve the accuracy of the anomaly detection rate. This paper presents an anomaly detection model based on the machine learning (ML) technique. ML improves the detection rate, reduces the false-positive alarm rate, and is capable of enhancing the accuracy of intrusion classification. This study used a dataset known as network security-knowledge and data discovery (NSL-KDD) lab to evaluate a proposed hybrid ML technology. K-mean cluster and SMO were used for classification. In the study, the performance of the proposed anomaly detection was tested, and results showed that the use of K-mean and SMO enhances the rate of positive detection besides reducing the rate of false alarms and achieving a high accuracy at the same time. Moreover, the proposed algorithm outperformed recent and close work related to using similar variables and the environment by 14.48% and decreased false alarm probability (FAP) by (12%) in addition to giving a higher accuracy by 97.4%. These outcomes are attributed to the common algorithm providing an appropriate number of detectors to be generated with an acceptable accurate detection and a trivial false alarm probability (FAP). The proposed hybrid algorithm could be considered for anomaly detection in future data mining systems, where processing in real-time is highly likely to be reduced dramatically. The justification is that the hybrid algorithm can provide appropriate detectors numbers that can be generated with an acceptable detection accuracy and trivial FAP. Given to the low FAP, it is highly expected to reduce the time of the preprocessing and processing compared with the other algorithms." @default.
- W4285013180 created "2022-07-12" @default.
- W4285013180 creator A5006999811 @default.
- W4285013180 creator A5021407862 @default.
- W4285013180 creator A5054085960 @default.
- W4285013180 creator A5072565892 @default.
- W4285013180 creator A5074890487 @default.
- W4285013180 creator A5082050794 @default.
- W4285013180 date "2022-07-10" @default.
- W4285013180 modified "2023-10-17" @default.
- W4285013180 title "Machine Learning-Based Anomaly Detection Using K-Mean Array and Sequential Minimal Optimization" @default.
- W4285013180 cites W2098437164 @default.
- W4285013180 cites W2111890927 @default.
- W4285013180 cites W2140711496 @default.
- W4285013180 cites W2751378044 @default.
- W4285013180 cites W2905922589 @default.
- W4285013180 cites W2964036258 @default.
- W4285013180 cites W3012082538 @default.
- W4285013180 cites W3013737783 @default.
- W4285013180 cites W3022349260 @default.
- W4285013180 cites W3042572036 @default.
- W4285013180 cites W3055742330 @default.
- W4285013180 cites W3094517923 @default.
- W4285013180 cites W3115784608 @default.
- W4285013180 cites W3117497069 @default.
- W4285013180 cites W3118432735 @default.
- W4285013180 cites W3135223881 @default.
- W4285013180 cites W3136945043 @default.
- W4285013180 cites W3160352663 @default.
- W4285013180 cites W3160810930 @default.
- W4285013180 cites W3170519614 @default.
- W4285013180 cites W3171009538 @default.
- W4285013180 cites W3172117413 @default.
- W4285013180 cites W3192909153 @default.
- W4285013180 cites W3198461787 @default.
- W4285013180 doi "https://doi.org/10.3390/electronics11142158" @default.
- W4285013180 hasPublicationYear "2022" @default.
- W4285013180 type Work @default.
- W4285013180 citedByCount "9" @default.
- W4285013180 countsByYear W42850131802022 @default.
- W4285013180 countsByYear W42850131802023 @default.
- W4285013180 crossrefType "journal-article" @default.
- W4285013180 hasAuthorship W4285013180A5006999811 @default.
- W4285013180 hasAuthorship W4285013180A5021407862 @default.
- W4285013180 hasAuthorship W4285013180A5054085960 @default.
- W4285013180 hasAuthorship W4285013180A5072565892 @default.
- W4285013180 hasAuthorship W4285013180A5074890487 @default.
- W4285013180 hasAuthorship W4285013180A5082050794 @default.
- W4285013180 hasBestOaLocation W42850131801 @default.
- W4285013180 hasConcept C119857082 @default.
- W4285013180 hasConcept C121332964 @default.
- W4285013180 hasConcept C124101348 @default.
- W4285013180 hasConcept C12997251 @default.
- W4285013180 hasConcept C153180895 @default.
- W4285013180 hasConcept C154945302 @default.
- W4285013180 hasConcept C26873012 @default.
- W4285013180 hasConcept C2776836416 @default.
- W4285013180 hasConcept C35525427 @default.
- W4285013180 hasConcept C41008148 @default.
- W4285013180 hasConcept C739882 @default.
- W4285013180 hasConcept C77052588 @default.
- W4285013180 hasConcept C95922358 @default.
- W4285013180 hasConceptScore W4285013180C119857082 @default.
- W4285013180 hasConceptScore W4285013180C121332964 @default.
- W4285013180 hasConceptScore W4285013180C124101348 @default.
- W4285013180 hasConceptScore W4285013180C12997251 @default.
- W4285013180 hasConceptScore W4285013180C153180895 @default.
- W4285013180 hasConceptScore W4285013180C154945302 @default.
- W4285013180 hasConceptScore W4285013180C26873012 @default.
- W4285013180 hasConceptScore W4285013180C2776836416 @default.
- W4285013180 hasConceptScore W4285013180C35525427 @default.
- W4285013180 hasConceptScore W4285013180C41008148 @default.
- W4285013180 hasConceptScore W4285013180C739882 @default.
- W4285013180 hasConceptScore W4285013180C77052588 @default.
- W4285013180 hasConceptScore W4285013180C95922358 @default.
- W4285013180 hasIssue "14" @default.
- W4285013180 hasLocation W42850131801 @default.
- W4285013180 hasLocation W42850131802 @default.
- W4285013180 hasOpenAccess W4285013180 @default.
- W4285013180 hasPrimaryLocation W42850131801 @default.
- W4285013180 hasRelatedWork W2078868204 @default.
- W4285013180 hasRelatedWork W2121035740 @default.
- W4285013180 hasRelatedWork W2368759418 @default.
- W4285013180 hasRelatedWork W2380006768 @default.
- W4285013180 hasRelatedWork W2390058640 @default.
- W4285013180 hasRelatedWork W2390710607 @default.
- W4285013180 hasRelatedWork W2570004938 @default.
- W4285013180 hasRelatedWork W2982280075 @default.
- W4285013180 hasRelatedWork W4308559069 @default.
- W4285013180 hasRelatedWork W2188735660 @default.
- W4285013180 hasVolume "11" @default.
- W4285013180 isParatext "false" @default.
- W4285013180 isRetracted "false" @default.
- W4285013180 workType "article" @default.