AI RESEARCH

Scalable Gaussian process inference via neural feature maps

arXiv CS.LG

ArXi:2605.10285v1 Announce Type: cross We present a theoretically grounded Gaussian process framework that leverages neural feature maps to construct expressive kernels. We show that the learned feature map can be interpreted as an optimal low-rank approximation to a Gram matrix derived from an implied RKHS, from which we establish consistency of the GP posterior. We further analyse the spectral properties of the induced kernels and