AI RESEARCH
A Fast Screening Approach for High-dimensional Outcomes and High-dimensional Predictors
arXiv CS.LG
•
ArXi:2606.03018v1 Announce Type: cross Modeling interactions among multimodal, high-dimensional data is intrinsically challenging due to ultra-high dimensionality and complex dependence structure with high level noise. Screening methods are effective for reducing dimensionality, but most existing approaches shrink only the predictor space while retaining all outcomes. In cross-modal analyses, different outcomes often select different predictor subsets, so the union remains large and the response dimension is unchanged, limiting the practical benefit of screening.