Effective Intrusion Detection System using Hybrid Ensemble Method for Cloud Computing | |
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Author | |
Abstract |
Due to its adaptability and pay-per-use services, cloud computing has grown in popularity among businesses, but security and privacy issues are still very much present. Intruders can exploit vulnerabilities in the open and dispersed nature of cloud environments, leading to attacks that can damage entire projects within a short period of time. To address this issue, organizations need to implement effective intrusion detection systems (IDS) that can detect and alert administrators of any suspicious activities. There are three widely used methods for IDS: signature-based detection, anomaly-based detection, and hybrid detection. Hybrid detection, which combines the strengths of signature-based and anomaly-based detection, has been shown to produce superior results. IDS can be categorized into host- based IDS (HIDS), network-based IDS (NIDS), hypervisor-based IDS, and distributed IDS (DIDS), each with their own unique characteristics and benefits. The CICIDS2017 dataset provides a diverse set of attacks and benign traffic for researchers and practitioners to develop and evaluate IDS systems. Overall, putting in place a strong intrusion detection system is critical for maintaining the security and privacy of cloud-based projects, as well as ensuring their availability. |
Year of Publication |
2023
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Date Published |
dec
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Publisher |
IEEE
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Conference Location |
Puducherry, India
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ISBN Number |
9798350318456
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URL |
https://ieeexplore.ieee.org/document/10435091/
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DOI |
10.1109/ICACIC59454.2023.10435091
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