An improved error analysis of CholeskyQR with the randomized model
Abstract
This work is about an improved error analysis of CholeskyQR with the randomized model for the tall-skinny X ∈ Rm× n. Due to the structure of CholeskyQR, we utilize the randomized model in the first step of CholeskyQR with a weak assumption. We receive a better sufficient condition of 2(X) and a tighter upper bound of residual for CholeskyQR2, together with a probabilistic shifted item s for Shifted CholeskyQR3 based on XF after improved error analysis. Numerical experiments demonstrate the effectiveness of our new theoretical results. The probabilistic s for Shifted CholeskyQR3 can enhance the applicability of Shifted CholeskyQR3 while maintaining numerical stability. It is also robust enough after numerous experiments.
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