AI RESEARCH

Riemannian Optimization for Hadamard Products of Low-Rank Matrices

arXiv CS.LG

ArXi:2606.01216v1 Announce Type: new The elementwise Hadamard product of two low-rank matrices provides a parameter-efficient model for data with multiplicative structure, but its modeling is challenging due to the presence of additional symmetries under coupled row/column scalings between the two factors. In order to leverage the geometry of the space, we formulate the learning of such matrices as optimization on a Riemannian quotient manifold. We propose a novel block-diagonal Riemannian metric derived from the pullback of the Frobenius inner product.