AI RESEARCH

Continual Learning of Feedback-based Molecular Communication

arXiv CS.LG

ArXi:2605.01020v1 Announce Type: new This paper proposes and evaluates a new performance estimation method that leverages continual learning (CL) algorithms to carry out sequential simulation experiments for a feedback-based molecular communication protocol. As the protocol is sequentially examined in various experimental settings, the proposed CL-based performance estimators incrementally learn a series of unexperienced estimation tasks without compromising those that have been learned in the past.