Visible to the public Predicting severity of software vulnerability based on BERT-CNN

TitlePredicting severity of software vulnerability based on BERT-CNN
Publication TypeConference Paper
Year of Publication2022
AuthorsNi, Xuming, Zheng, Jianxin, Guo, Yu, Jin, Xu, Li, Ling
Conference Name2022 International Conference on Computer Engineering and Artificial Intelligence (ICCEAI)
Date Publishedjul
Keywordsartificial intelligence, authentication, BERT, Bit error rate, CNN, composability, Metrics, Personnel, power grid vulnerability analysis, pubcrawl, resilience, Resiliency, Software, Software Vulnerability, Task Analysis, Text processing, vulnerability severity prediction
AbstractSoftware vulnerabilities threaten the security of computer system, and recently more and more loopholes have been discovered and disclosed. For the detected vulnerabilities, the relevant personnel will analyze the vulnerability characteristics, and combine the vulnerability scoring system to determine their severity level, so as to determine which vulnerabilities need to be dealt with first. In recent years, some characteristic description-based methods have been used to predict the severity level of vulnerability. However, the traditional text processing methods only grasp the superficial meaning of the text and ignore the important contextual information in the text. Therefore, this paper proposes an innovative method, called BERT-CNN, which combines the specific task layer of Bert with CNN to capture important contextual information in the text. First, we use Bert to process the vulnerability description and other information, including Access Gained, Attack Origin and Authentication Required, to generate the feature vectors. Then these feature vectors of vulnerabilities and their severity levels are input into a CNN network, and the parameters of the CNN are gotten. Next, the fine-tuned Bert and the trained CNN are used to predict the severity level of a vulnerability. The results show that our method outperforms the state-of-the-art method with 91.31% on F1-score.
DOI10.1109/ICCEAI55464.2022.00151
Citation Keyni_predicting_2022