Read Between the Hyperplanes: On Spectral Projection and Sampling Approaches to Randomized Kaczmarz
By: James Nguyen, Oleg Presnyakov, Adityakrishnan Radhakhrishnan
Potential Business Impact:
Speeds up computer problem solving using smarter math.
Among recent developments centered around Randomized Kaczmarz (RK), a row-sampling iterative projection method for large-scale linear systems, several adaptions to the method have inspired faster convergence. Focusing solely on ill-conditioned and overdetermined linear systems, we highlight inter-row relationships that can be leveraged to guide directionally aware projections. In particular, we find that improved convergence rates can be made by (i) projecting onto pairwise row differences, (ii) sampling from partitioned clusters of nearly orthogonal rows, or (iii) more frequently sampling spectrally-diverse rows.
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