Love, Lies, and Language Models: Investigating AI's Role in Romance-Baiting Scams
By: Gilad Gressel , Rahul Pankajakshan , Shir Rozenfeld and more
Potential Business Impact:
Scammers use AI to trick people into losing money.
Romance-baiting scams have become a major source of financial and emotional harm worldwide. These operations are run by organized crime syndicates that traffic thousands of people into forced labor, requiring them to build emotional intimacy with victims over weeks of text conversations before pressuring them into fraudulent cryptocurrency investments. Because the scams are inherently text-based, they raise urgent questions about the role of Large Language Models (LLMs) in both current and future automation. We investigate this intersection by interviewing 145 insiders and 5 scam victims, performing a blinded long-term conversation study comparing LLM scam agents to human operators, and executing an evaluation of commercial safety filters. Our findings show that LLMs are already widely deployed within scam organizations, with 87% of scam labor consisting of systematized conversational tasks readily susceptible to automation. In a week-long study, an LLM agent not only elicited greater trust from study participants (p=0.007) but also achieved higher compliance with requests than human operators (46% vs. 18% for humans). Meanwhile, popular safety filters detected 0.0% of romance baiting dialogues. Together, these results suggest that romance-baiting scams may be amenable to full-scale LLM automation, while existing defenses remain inadequate to prevent their expansion.
Similar Papers
Love, Lies, and Language Models: Investigating AI's Role in Romance-Baiting Scams
Cryptography and Security
AI helps scammers trick people into losing money.
The Imitation Game: Using Large Language Models as Chatbots to Combat Chat-Based Cybercrimes
Cryptography and Security
Fools scammers by pretending to be a victim.
Send to which account? Evaluation of an LLM-based Scambaiting System
Cryptography and Security
Catches scammers by talking to them.