AI RESEARCH

Well-Conditioned Oblivious Perturbations in Linear Space

arXiv CS.LG

ArXi:2604.23193v1 Announce Type: cross Perturbing a deterministic $n$-dimensional matrix with small Gaussian noise is a cornerstone of smoothed analysis of algorithms [Spielman and Teng, JACM 2004], as it reduces the condition number of the input to $O(n)$, and with it the complexity of many matrix algorithms. However, when deployed algorithmically, these perturbations are expensive due to the cost of generating and storing $n^2$ Gaussian random variables.