AI RESEARCH

Reflective Context Learning: Studying the Optimization Primitives of Context Space

arXiv CS.AI

ArXi:2604.03189v1 Announce Type: cross Generally capable agents must learn from experience in ways that generalize across tasks and environments. The fundamental problems of learning, including credit assignment, overfitting, forgetting, local optima, and high-variance learning signals, persist whether the learned object lies in parameter space or context space. While these challenges are well understood in classical machine learning optimization, they remain underexplored in context space, leading current methods to be fragmented and ad hoc.