Department of Information Technology, Cape Peninsula University of Technology, Cape Town, South Africa.
Department of Informatics, University of Pretoria, Pretoria, South Africa.
Sci Rep. 2024 Aug 2;14(1):17920. doi: 10.1038/s41598-024-68791-z.
Although chatbots are used a lot for customer relationship management (CRM), there needs to be more data security and privacy control strategies in chatbots, which has become a security concern for financial services institutions. Chatbots gain access to large amounts of vital company information and clients' personal information, which makes them a target of security attacks. The loss of data stored in chatbots can cause major harm to companies and customers. In this study, STRIDE (viz. Spoofing, Tampering, Repudiation, Information disclosure, Denial of service, Elevation of privilege) modelling was applied to identify the data security vulnerabilities and threats that pertain to chatbots used in the insurance industry. To do this, we conducted a case study of a South African insurance organisation. The adopted methodology involved data collection from stakeholders in the insurance organisation to identify chatbot use cases and understand chatbot operations. After that, we conducted a STRIDE-based analysis of the chatbot use cases to elicit security threats and vulnerabilities in the insurance chatbots in the organisation. The results reveal that security vulnerabilities associated with Spoofing, Denial of Service, and Elevation of privilege are more relevant to insurance chatbots. The most security threats stem from Tampering, Elevation of privilege, and Spoofing. The study extends the discussion on chatbot security. It fosters an understanding of security threats and vulnerabilities that pertain to insurance chatbots, which is beneficial for security researchers and practitioners working on the security of chatbots and the insurance industry.
虽然聊天机器人在客户关系管理(CRM)中得到了广泛应用,但在聊天机器人中需要更多的数据安全和隐私控制策略,这已成为金融服务机构的安全关注点。聊天机器人可以访问大量重要的公司信息和客户的个人信息,这使它们成为安全攻击的目标。存储在聊天机器人中的数据丢失可能会对公司和客户造成重大伤害。在本研究中,应用 STRIDE(即欺骗、篡改、抵赖、信息泄露、拒绝服务、权限提升)建模来识别与保险行业中使用的聊天机器人相关的数据安全漏洞和威胁。为此,我们对南非的一家保险公司进行了案例研究。采用的方法涉及从保险组织的利益相关者那里收集数据,以识别聊天机器人用例并了解聊天机器人的操作。之后,我们对聊天机器人用例进行了基于 STRIDE 的分析,以引出组织中保险聊天机器人中的安全威胁和漏洞。结果表明,与欺骗、拒绝服务和权限提升相关的安全漏洞与保险聊天机器人更为相关。最主要的安全威胁源于篡改、权限提升和欺骗。该研究扩展了关于聊天机器人安全的讨论。它促进了对与保险聊天机器人相关的安全威胁和漏洞的理解,这对致力于聊天机器人安全和保险行业安全的安全研究人员和从业者是有益的。