Software Vulnerability Prediction based on Statistical Learning
Author
Abstract

Predictive Security Metrics - Predicting vulnerabilities through source code analysis and using it to guide software maintenance can effectively improve software security. One effective way to predict vulnerabilities is by analyzing library references and function calls used in code. In this paper, we extract library references and function calls from project files through source code analysis, generate sample sets for statistical learning based on these data. Design and train an integrated learning model that can be used for prediction. The designed model has a high accuracy rate and accomplishes the prediction task well. It also proves the correlation between vulnerabilities and library references and function calls.

Year of Publication
2022
Date Published
jun
Publisher
IEEE
Conference Location
Dalian, China
ISBN Number
978-1-66549-991-0
URL
https://ieeexplore.ieee.org/document/9844560/
DOI
10.1109/ICAICA54878.2022.9844560
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