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Expression of Concern for: Improving Performance of IDS by using Feature Selection with IG-R
As the prevalence of the web PC proceeded to develop and play a vital role in human existence, the security of PC network has become a significant issue in PC security field. The IDS is a framework utilized in PC security for network security. The component determination phase of IDS is viewed as th...
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Main Authors: | , , , , |
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Format: | Conference Proceeding |
Language: | English |
Online Access: | Request full text |
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Summary: | As the prevalence of the web PC proceeded to develop and play a vital role in human existence, the security of PC network has become a significant issue in PC security field. The IDS is a framework utilized in PC security for network security. The component determination phase of IDS is viewed as the most basic stage in IDS. This stage is exorbitant both in endeavors and time. Be that as it may, many AI approaches have been introduced to work on this stage to work on the exhibition of IDS. Nonetheless, these methodologies didn't give positive outcomes regarding the recognition exactness in the IDS. An original procedure is proposed in this paper joining the Information Gain and Ranker (IG+R) technique as the element choice system with NB, SVM) and KNN as the classifiers. The presentation of these IG+R-NB, IG+R-SVM, and IG+R-KNN was assessed on NSLKDD dataset. The exploratory aftereffects of our proposed technique gave high exactness and low bogus alert rate. The outcomes acquired were contrasted and benchmarked with existing research works. The consequences of this paper overcome the drawbacks of the current methodologies as far as the discovery precision. |
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ISSN: | 2768-0673 |
DOI: | 10.1109/I-SMAC52330.2021.10702973 |