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Abstract
In today's digital landscape, the importance of timely and accurate
vulnerability detection has significantly increased. This paper presents a
novel approach that leverages transformer-based models and machine learning
techniques to automate the identification of software vulnerabilities by
analyzing GitHub issues. We introduce a new dataset specifically designed for
classifying GitHub issues relevant to vulnerability detection. We then examine
various classification techniques to determine their effectiveness. The results
demonstrate the potential of this approach for real-world application in early
vulnerability detection, which could substantially reduce the window of
exploitation for software vulnerabilities. This research makes a key
contribution to the field by providing a scalable and computationally efficient
framework for automated detection, enabling the prevention of compromised
software usage before official notifications. This work has the potential to
enhance the security of open-source software ecosystems.