Journal article Open Access

Optimization of IDS using Filter-Based Feature Selection and Machine Learning Algorithms

Neha Sharma; Harsh Vardhan Bhandari; Narendra Singh Yadav; Harsh Vardhan Jonathan Shroff

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<oai_dc:dc xmlns:dc="" xmlns:oai_dc="" xmlns:xsi="" xsi:schemaLocation="">
  <dc:contributor>Blue Eyes Intelligence Engineering  and Sciences Publication(BEIESP)</dc:contributor>
  <dc:creator>Neha Sharma</dc:creator>
  <dc:creator>Harsh Vardhan Bhandari</dc:creator>
  <dc:creator>Narendra Singh Yadav</dc:creator>
  <dc:creator>Harsh Vardhan Jonathan  Shroff</dc:creator>
  <dc:description>Nowadays it is imperative to maintain a high level of security to ensure secure communication of information between various institutions and organizations. With the growing use of internet over the years, the number of attacks over the internet have escalated. A powerful Intrusion Detection System (IDS) is required to ensure the security of a network. The aim of an IDS is to monitor the active processes in a network and to detect any deviation from the normal behavior of the system. When it comes to machine learning, optimization is the process of obtaining the maximum accuracy from a model. Optimization is vital for IDSs in order to predict a wide variety of attacks with utmost accuracy. The effectiveness of an IDS is dependent on its ability to correctly predict and classify any anomaly faced by a computer system. During the last two decades, KDD_CUP_99 has been the most widely used data set to evaluate the performance of such systems. In this study, we will apply different Machine Learning techniques on this data set and see which technique yields the best results.</dc:description>
  <dc:source>International Journal of Innovative Technology and Exploring Engineering (IJITEE) 10(2) 96-102</dc:source>
  <dc:subject>Intrusion detection systems, KDDCUP99, Machine Learning, Classification.</dc:subject>
  <dc:subject>Retrieval Number</dc:subject>
  <dc:title>Optimization of IDS using Filter-Based Feature  Selection and Machine Learning Algorithms</dc:title>
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