Detecting Telephone-based Social Engineering Attacks using Scam Signatures

Ali Derakhshan, I. Harris, Mitra Behzadi
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引用次数: 4

Abstract

As social engineering attacks have become prevalent, people are increasingly convinced to give their important personal or financial information to attackers. Telephone scams are common and less well-studied than phishing emails. We have found that social engineering attacks can be characterized by a set of speech acts which are performed as part of the scam. A speech act is statements or utterances expressed by an individual that not only conveys information but also performs an action. Although attackers adjust their delivery and wording on the phone to match the victim, scams can be grouped into classes that all share common speech acts. Each scam type is identified by a set of speech acts that are collectively referred to as a scam signature. We present a social engineering detection approach called the Anti-Social Engineering Tool ASsET, which detects attacks based on the semantic content of the conversation. Our approach uses word embedding techniques from natural language processing to determine if the meaning of a scam signature is contained in a conversation. In order to evaluate our approach, a dataset of telephone scams has been gathered which are written by volunteers based on examples of real scams from official websites. This dataset is the first telephone-based scam dataset, to the best of our knowledge. Our detection method was able to distinguish scam and non-scam calls with high accuracy.
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使用诈骗签名检测基于电话的社会工程攻击
随着社会工程攻击变得普遍,人们越来越倾向于向攻击者提供重要的个人或财务信息。电话诈骗是常见的,而且没有网络钓鱼电子邮件那么深入研究。我们发现,社会工程攻击可以通过一系列作为骗局一部分的言语行为来表现。言语行为是一个人表达的语句或话语,它不仅传达了信息,而且执行了一个动作。尽管攻击者会调整他们在电话中的表达和措辞,以匹配受害者,但诈骗可以被分为几类,这些类都有共同的语言行为。每一种骗局类型都是通过一组语言行为来识别的,这些行为统称为骗局签名。我们提出了一种社会工程检测方法,称为反社会工程工具资产,它根据会话的语义内容检测攻击。我们的方法使用自然语言处理中的词嵌入技术来确定诈骗签名的含义是否包含在对话中。为了评估我们的方法,我们收集了一个电话诈骗的数据集,这些数据集是由志愿者根据官方网站上的真实诈骗案例编写的。据我们所知,这个数据集是第一个基于电话的骗局数据集。我们的检测方法能够以较高的准确率区分诈骗和非诈骗电话。
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