AI RESEARCH

Algorithm and Hardware Co-Design for Efficient Complex-Valued Uncertainty Estimation

arXiv CS.LG

ArXi:2604.19993v1 Announce Type: cross Complex-Valued Neural Networks (CVNNs) have significant advantages in handling tasks that involve complex numbers. However, existing CVNNs are unable to quantify predictive uncertainty. We propose, for the first time, dropout-based Bayesian Complex-Valued Neural Networks (BayesCVNNs) to enable uncertainty quantification for complex-valued applications, exhibiting broad applicability and efficiency for hardware implementation due to modularity.