AI RESEARCH
Sparse Bayesian Deep Functional Learning with Structured Region Selection
arXiv CS.LG
•
ArXi:2602.20651v3 Announce Type: replace In modern applications such as ECG monitoring, neuroimaging, wearable sensing, and industrial equipment diagnostics, complex and continuously structured data are ubiquitous, presenting both challenges and opportunities for functional data analysis. However, existing methods face a critical trade-off: conventional functional models are limited by linearity, whereas deep learning approaches lack interpretable region selection for sparse effects. To bridge these gaps, we propose a sparse Bayesian functional deep neural network (sBay