As a major component of online crime, email-based fraud is a threat that causes substantial economic losses every year. To counteract these scammers, volunteers called scam-baiters play the roles of victims, reply to scammers, and try to waste their time and attention with long and unproductive conversations. To curb email fraud and magnify the effectiveness of scam-baiting, we developed and deployed an expandable scam-baiting mailserver that can conduct scam-baiting activities automatically. We implemented three reply strategies using three different models and conducted a one-month-long experiment during which we elicited 150 messages from 130 different scammers. We compare the performance of each strategy at attracting and holding the attention of scammers, finding tradeoffs between human-written and automatically-generated response strategies, and we release both our platform and a dataset containing conversations between our automatic scam-baiters and real human scammers, to support future work in preventing online fraud.
翻译:作为网上犯罪的一个主要组成部分,电子邮件欺诈是每年造成重大经济损失的威胁。 为了打击这些诈骗者,志愿者们被称为诈骗犯,他们扮演了受害者的角色,对诈骗犯做出回应,并试图浪费时间和注意力,进行长期和无益的对话。 为了遏制电子邮件欺诈,扩大诈骗行为的效力,我们开发并部署了一个能够自动开展诈骗行为活动的扩大骗骗骗行为邮件服务器。我们运用三种不同的模式实施了三种应对策略,并进行了为期一个月的实验,在此期间我们从130个不同的诈骗犯那里获取了150条信息。我们比较了每项策略在吸引和吸引诈骗犯注意力、在人造和自动生成的应对策略之间寻找取舍方面的表现,并公布了我们的平台和包含自动诈骗行为手和真正的人类诈骗者之间对话的数据集,以支持今后防止网上欺诈的工作。