AI RESEARCH

Understanding the Emergence of Seemingly Useless Features in Next-Token Predictors

arXiv CS.LG

ArXi:2603.14087v1 Announce Type: new Trained Transformers have been shown to compute abstract features that appear redundant for predicting the immediate next token. We identify which components of the gradient signal from the next-token prediction objective give rise to this phenomenon, and we propose a method to estimate the influence of those components on the emergence of specific features. After validating our approach on toy tasks, we use it to interpret the origins of the world model in OthelloGPT and syntactic features in a small language model.