MD MAHBUBUR RAHMAN
MD MAHBUBUR RAHMAN
Home
Experience
Achievements
Projects
Publications
Posts
CV
Contact
Light
Dark
Automatic
Software Engineering
Empirical Study on DL Models for Code Vulnerability
Surveyed and reproduced 9 state-of-the-art DL models on the Devign and MSR datasets. Investigated model capabilities, training data effects, and interpretability, revealing key insights to improve model robustness and understandability.
PDF
Code
Slice Level Vulnerability Detection
Transformer-based models for detecting software vulnerabilities are limited by their token input size, potentially missing crucial data. This project introduces a slicing method that focuses on relevant program points to improve detection accuracy, yielding better performance metrics compared to traditional function-based approaches.
PDF
Code
Transformer Explainability
Introduced an explanation method for the transformer-based CodeBERT, which factors in the information flow across layers using Markov chains and integrated gradients for better insight into source code vulnerability predictions.
PDF
Code
Cite
×