AI RESEARCH

Emergent Languages in Populations of Language Model Agents: From Token Efficiency to Oversight Evasion

arXiv CS.AI

ArXi:2605.31170v1 Announce Type: cross Monitoring autonomous language model agents currently relies mostly on surface behavior. But what happens when agent populations invent new languages with the goal of avoiding human oversight. Here, we study the emergent languages on Moltbook. For this, we build upon the Moltbook Files dataset and apply a two-stage approach consisting of a rule-based heuristic (about 6000 matches) followed by zero-shot classification (518 kept). The resulting categories include token efficiency (166), new natural languages (106), and oversight evasion (59.