AI RESEARCH

Induction Meets Biology: Mechanisms of Repeat Detection in Protein Language Models

arXiv CS.LG

ArXi:2602.23179v2 Announce Type: replace Protein sequences are abundant in repeating segments, both as exact copies and as approximate segments with mutations. These repeats are important for protein structure and function, motivating decades of algorithmic work on repeat identification. Recent work has shown that protein language models (PLMs) identify repeats, by examining their behavior in masked-token prediction. To elucidate their internal mechanisms, we investigate how PLMs detect both exact and approximate repeats.