  <?xml version="1.0"?>
<journal>
 <journal_metadata>
  <full_title>Fusion: Practice and Applications</full_title>
  <abbrev_title>FPA</abbrev_title>
  <issn media_type="print">2692-4048</issn>
  <issn media_type="electronic">2770-0070</issn>
  <doi_data>
   <doi>10.54216/FPA</doi>
   <resource>https://www.americaspg.com/journals/show/3660</resource>
  </doi_data>
 </journal_metadata>
 <journal_issue>
  <publication_date media_type="print">
   <year>2018</year>
  </publication_date>
  <publication_date media_type="online">
   <year>2018</year>
  </publication_date>
 </journal_issue>
 <journal_article publication_type="full_text">
  <titles>
   <title>Hybrid chaotic bat artificial bee colony algorithm assisted hybrid machine learning based intrusion detection system</title>
  </titles>
  <contributors>
   <organization sequence="first" contributor_role="author">Research Scholar, Department of Computer Science and Engineering, Nitte (Deemed to be University) NMAM Institute of Technology, Nitte (DU), SH1, Karkala, Karnataka 574110, India; Department of ISE, Canara Engineering College, Mangaluru, Karnataka 574219, India </organization>
   <person_name sequence="first" contributor_role="author">
    <given_name>Sumathi</given_name>
    <surname>Sumathi</surname>
   </person_name>
   <organization sequence="first" contributor_role="author">Associate Professor, Department of Information Science and Engineering, NMAMIT Nitte (DU), Karkala, Karnataka 574110, India  </organization>
   <person_name sequence="additional" contributor_role="author">
    <given_name>Sumathi</given_name>
    <surname>Pawar</surname>
   </person_name>
   <organization sequence="first" contributor_role="author">Associate Professor, Department of Computer Science and Engineering, Canara Engineering College, Mangaluru, Karnataka 574219, India</organization>
   <person_name sequence="additional" contributor_role="author">
    <given_name>Sunil Kumar B..</given_name>
    <surname>L.</surname>
   </person_name>
  </contributors>
  <jats:abstract xml:lang="en">
   <jats:p>Network intrusions are becoming more common, resulting in significant privacy violations, financial losses, and the illegal transfer of sensitive information. Numerous intrusion strategies pose a threat to data, computer resources, and networks. While hackers may focus on obtaining trade secrets, private information, or confidential data that can then be disclosed for illegal purposes, each type of intrusion aims to achieve a distinct objective. False attack detection by security systems and changing threat environments create challenges such as delayed identification of true attacks and long-term financial harm. This paper presents a novel hybrid optimization algorithm-assisted deep learning model for accurately identifying intrusion types and enhancing network security. Initially, input information is composed from openly obtainable datasets. The input data is cleaned, normalized, and standardized to produce accurate results. An improved synthetic minority oversampling technique (ISMOTE) for data balance reduces the method's overfitting problem. Then, the Chaotic Bat Artificial Bee Colony optimization algorithm (CBABCOA) is used to identify critical features and reduce feature dimensionality issues. HSVM-XGBoost (Hybrid Kernel Support Vector Machine-Extreme Gradient Boosting) is used for intrusion detection and classification. The Chaotic Binary Horse Optimization Algorithm (CBHOA) is used for hyper parameter tuning. This method makes use of the CIC UNSW-NB15 Augmented dataset, the CICIDS 2019 data set, and the NSL-KDD information set. The proposed method achieves better than the other method.</jats:p>
  </jats:abstract>
  <publication_date media_type="print">
   <year>2025</year>
  </publication_date>
  <publication_date media_type="online">
   <year>2025</year>
  </publication_date>
  <pages>
   <first_page>45</first_page>
   <last_page>63</last_page>
  </pages>
  <doi_data>
   <doi>10.54216/FPA.190204</doi>
   <resource>https://www.americaspg.com/articleinfo/3/show/3660</resource>
  </doi_data>
 </journal_article>
</journal>
