Home
World Journal of Advanced Research and Reviews
International Journal with High Impact Factor for fast publication of Research and Review articles

Main navigation

  • Home
    • Journal Information
    • Editorial Board Members
    • Reviewer Panel
    • Abstracting and Indexing
    • Journal Policies
    • Our CrossMark Policy
    • Publication Ethics
    • Issue in Progress
    • Current Issue
    • Past Issues
    • Instructions for Authors
    • Article processing fee
    • Track Manuscript Status
    • Get Publication Certificate
    • Join Editorial Board
    • Join Reviewer Panel
  • Contact us
  • Downloads

eISSN: 2581-9615 || CODEN: WJARAI || Impact Factor 8.2 ||  CrossRef DOI

Research and review articles are invited for publication in June 2026 (Volume 30, Issue 3) Submit manuscript

Source code vulnerability identification using machine learning models

Breadcrumb

  • Home
  • Source code vulnerability identification using machine learning models

Utoda Reuben 1, Tom Innocent 1, * and Jerry Ogar 2

1 Department of Computer Science, University of Cross River State Calabar, Nigeria. 
2 Department of Electrical Electronics, University of Cross River State Calabar, Nigeria.
 

Research Article

World Journal of Advanced Research and Reviews, 2026, 30(03), 1372-1391

Article DOI: 10.30574/wjarr.2026.30.3.1713

DOI url: https://doi.org/10.30574/wjarr.2026.30.3.1713

Received on 10 May 2026; revised on 14 June 2026; accepted on 17 June 2026

Software vulnerabilities remain a major challenge in modern software development, frequently leading to security breaches, unauthorized access, service disruption, and financial losses. Although traditional vulnerability detection methods such as static and dynamic analysis are widely used, they often generate excessive false positives and struggle to capture complex patterns within source code. Recent advances in machine learning provide an opportunity to improve vulnerability detection by automatically learning relationships that are difficult to identify using rule-based approaches.
This study presents a machine learning framework for automated source code vulnerability identification using benchmark datasets obtained from the Software Assurance Reference Dataset (SARD) and the National Vulnerability Database (NVD). The framework includes source code preprocessing, feature extraction, model training, hyperparameter optimization, and performance evaluation. Four models Decision Tree, Random Forest, Support Vector Machine, and Long Short-Term Memory (LSTM) were implemented and evaluated using accuracy, precision, recall, and F1-score.
Experimental results show that LSTM achieved the best overall performance with an accuracy of 93.4%, followed by Random Forest at 91.2%. These findings indicate that models capable of learning contextual and sequential information are particularly effective for vulnerability detection. The proposed framework demonstrates how machine learning can support secure software development by reducing manual analysis effort and enabling scalable vulnerability assessment. Its potential application extends to continuous security monitoring and integration within modern software development pipelines.
 

Source Code Security; Vulnerability Detection; Machine Learning; Deep Learning; Software Engineering; Secure Coding

https://wjarr.com/sites/default/files/fulltext_pdf/WJARR-2026-1713.pdf

Preview Article PDF

Utoda Reuben, Tom Innocent and Jerry Ogar. Source code vulnerability identification using machine learning models. World Journal of Advanced Research and Reviews, 2026, 30(03), 1372-1391. Article DOI: https://doi.org/10.30574/wjarr.2026.30.3.1713

Copyright © Author(s). All rights reserved. This article is published under the terms of the Creative Commons Attribution 4.0 International License (CC BY 4.0), which permits use, sharing, adaptation, distribution, and reproduction in any medium or format, as long as appropriate credit is given to the original author(s) and source, a link to the license is provided, and any changes made are indicated.


All statements, opinions, and data contained in this publication are solely those of the individual author(s) and contributor(s). The journal, editors, reviewers, and publisher disclaim any responsibility or liability for the content, including accuracy, completeness, or any consequences arising from its use.

Get Certificates

Get Publication Certificate

Download LoA

Check Corssref DOI details

Issue details

Issue Cover Page

Editorial Board

Table of content

Copyright © 2026 World Journal of Advanced Research and Reviews - All rights reserved

Developed & Designed by VS Infosolution