A Survey-Vulnerability Classification of Bug Reports using Multiple Machine Learning Approach

Authors

  • Patel KA Ipcowala Institute of Engineering and Technology Dharmaj, Anand, Gujarat, India-388430
  • Prajapati RC Ipcowala Institute of Engineering and Technology Dharmaj, Anand, Gujarat, India-388430

Keywords:

Naïve Bayes, classification, bug database mining, text mining

Abstract

As critical and sensitive systems increasingly rely on complex software systems, identifying software vulnerabilities is becoming increasingly important. It has been suggested in previous work that some bugs are only identified as vulnerabilities long after the bug has been made public. These bugs are known as Hidden Impact Bugs (HIBs). This paper presents a hidden impact bug identification methodology by means of text mining bug databases. The presented methodology utilizes the textual description of the bug report for extracting textual information. The text mining process extracts syntactical information of the bug reports and compresses the information for easier manipulation and divided into frequency base and context base bug then give bug ranking.

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Published

2024-02-26

How to Cite

Patel, K. A., & Prajapati, R. C. (2024). A Survey-Vulnerability Classification of Bug Reports using Multiple Machine Learning Approach. COMPUSOFT: An International Journal of Advanced Computer Technology, 5(03), 2071–2073. Retrieved from https://ijact.in/index.php/j/article/view/362

Issue

Section

Review Article

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