AI RESEARCH

Teaching and Learning under Deductive Errors

arXiv CS.LG

ArXi:2605.13384v1 Announce Type: new Most models of machine teaching and learning assume the learner makes no errors in its internal deductive inference. However, humans and large language models in few-shot learning regimes are two important examples of learners where this does not hold. They fail on some consistency checks, and they can fail stochastically. In this paper we