3 research outputs found
Accelerating Random Kaczmarz Algorithm Based on Clustering Information
Kaczmarz algorithm is an efficient iterative algorithm to solve
overdetermined consistent system of linear equations. During each updating
step, Kaczmarz chooses a hyperplane based on an individual equation and
projects the current estimate for the exact solution onto that space to get a
new estimate. Many vairants of Kaczmarz algorithms are proposed on how to
choose better hyperplanes. Using the property of randomly sampled data in
high-dimensional space, we propose an accelerated algorithm based on clustering
information to improve block Kaczmarz and Kaczmarz via Johnson-Lindenstrauss
lemma. Additionally, we theoretically demonstrate convergence improvement on
block Kaczmarz algorithm