AI RESEARCH

Non-Parametric Rehearsal Learning via Conditional Mean Embeddings

arXiv CS.LG

ArXi:2605.08999v1 Announce Type: new In machine learning, a critical class of decision-related problems concerns preventing predicted undesirable outcomes, referred to as the \textit{avoiding undesired future} (AUF) problem. To address this, the \textit{rehearsal learning} framework has been proposed to model influence relations for effective decisions. However, existing rehearsal methods rely on restrictive parametric assumptions such as linear systems or additive noise, limiting their practical applicability.