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Monitoring Social Media for Vulnerability-Threat Prediction and Topic Analysis

机译:监控漏洞威胁预测和主题分析的社交媒体

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Publicly available software vulnerabilities and exploit code are often abused by malicious actors to launch cyberattacks to vulnerable targets. Organizations not only have to update their software to the latest versions, but do effective patch management and prioritize security-related patching as well. In addition to intelligence sources such as Computer Emergency Response Team (CERT) alerts, cybersecurity news, national vulnerability database (NBD), and commercial cybersecurity vendors, social media is another valuable source that facilitates early stage intelligence gathering. To early detect future cyber threats based on publicly available resources on the Internet, we propose a dynamic vulnerability-threat assessment model to predict the tendency to be exploited for vulnerability entries listed in Common Vulnerability Exposures, and also to analyze social media contents such as Twitter to extract meaningful information. The model takes multiple aspects of vulnerabilities gathered from different sources into consideration. Features range from profile information to contextual information about these vulnerabilities. For the social media data, this study leverages machine learning techniques specially for Twitter which helps to filter out non-cybersecurity-related tweets and also label the topic categories of each tweet. When applied to predict the vulnerabilities exploitation and analyzed the real-world social media discussion data, it showed promising prediction accuracy with purified social media intelligence. Moreover, the AI-enabling modules have been deployed into a threat intelligence platform for further applications.
机译:公开可用的软件漏洞和利用代码通常由恶意演员滥用,以将网络攻击发布到易受攻击的目标。组织不仅必须将其软件更新到最新版本,而且还要执行有效的补丁管理和优先顺序安全相关的修补程序。除了电脑应急响应团队(证书)警报,网络安全新闻,国家漏洞数据库(NBD)和商业网络安全供应商等情报资源之外,社交媒体是另一种有价值的源,促进了早期智力收集。早期检测未来的网络威胁,基于互联网上的公开可用资源,提出了一种动态漏洞 - 威胁评估模型,以预测常见漏洞暴露中列出的漏洞条目的趋势,以及分析诸如Twitter等社交媒体内容提取有意义的信息。该模型考虑了从不同来源收集的漏洞的多个方面。功能范围从配置文件信息到有关这些漏洞的上下文信息。对于社交媒体数据,本研究利用了Twitter的机器学习技术,有助于过滤掉非网络安全相关的推文,并标记每个推文的主题类别。当应用于预测漏洞利用并分析真实世界的社交媒体讨论数据时,它表现出具有纯粹的社交媒体智能的有希望的预测准确性。此外,已将AI启用模块部署到威胁情报平台中,以进行进一步的应用。

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