AI RESEARCH

Teacher-Aware Evolution of Heuristic Programs from Learned Optimization Policies

arXiv CS.AI

ArXi:2605.10634v1 Announce Type: new LLM-based automatic heuristic design has shown promise for generating executable heuristics for combinatorial optimization, but existing methods mainly rely on delayed endpoint performance. We propose a \emph{teacher-aware evolutionary framework} that uses independently trained learned optimization policies as behavioral teachers. Instead of deploying or imitating the teacher, our method queries it on states visited by candidate heuristic programs and uses its action preferences as local feedback for evolution.