AI RESEARCH

DiffATS: Diffusion in Aligned Tensor Space

arXiv CS.LG

ArXi:2605.09275v1 Announce Type: new Direct diffusion modeling of high-resolution spatiotemporal fields is computationally challenging. Parameter-efficient primitives address this by representing high-dimensional data with a compact set of parameters. In this paper, we construct data-dependent tensor primitives without pretrained compression autoencoders. Our construction starts from Tucker decomposition, which captures low-rank multilinear structure through a core tensor and mode-wise factors.