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Bibliographic Details
Main Authors: Ghosh, Partha, Sharma, Joy, Pandey, Nilesh
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2402.02052
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author Ghosh, Partha
Sharma, Joy
Pandey, Nilesh
author_facet Ghosh, Partha
Sharma, Joy
Pandey, Nilesh
contents Cloud computing has high applicability as an Internet based service that relies on sharing computing resources. Cloud computing provides services that are Infrastructure based, Platform based and Software based. The popularity of this technology is due to its superb performance, high level of computing ability, low cost of services, scalability, availability and flexibility. The obtainability and openness of data in cloud environment make it vulnerable to the world of cyber-attacks. To detect the attacks Intrusion Detection System is used, that can identify the attacks and ensure information security. Such a coherent and proficient Intrusion Detection System is proposed in this paper to achieve higher certainty levels regarding safety in cloud environment. In this paper, the mating behavior of peafowl is incorporated into an optimization algorithm which in turn is used as a feature selection algorithm. The algorithm is used to reduce the huge size of cloud data so that the IDS can work efficiently on the cloud to detect intrusions. The proposed model has been experimented with NSL-KDD dataset as well as Kyoto dataset and have proved to be a better as well as an efficient IDS.
format Preprint
id arxiv_https___arxiv_org_abs_2402_02052
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Feature Selection using the concept of Peafowl Mating in IDS
Ghosh, Partha
Sharma, Joy
Pandey, Nilesh
Machine Learning
Cloud computing has high applicability as an Internet based service that relies on sharing computing resources. Cloud computing provides services that are Infrastructure based, Platform based and Software based. The popularity of this technology is due to its superb performance, high level of computing ability, low cost of services, scalability, availability and flexibility. The obtainability and openness of data in cloud environment make it vulnerable to the world of cyber-attacks. To detect the attacks Intrusion Detection System is used, that can identify the attacks and ensure information security. Such a coherent and proficient Intrusion Detection System is proposed in this paper to achieve higher certainty levels regarding safety in cloud environment. In this paper, the mating behavior of peafowl is incorporated into an optimization algorithm which in turn is used as a feature selection algorithm. The algorithm is used to reduce the huge size of cloud data so that the IDS can work efficiently on the cloud to detect intrusions. The proposed model has been experimented with NSL-KDD dataset as well as Kyoto dataset and have proved to be a better as well as an efficient IDS.
title Feature Selection using the concept of Peafowl Mating in IDS
topic Machine Learning
url https://arxiv.org/abs/2402.02052