Conjugate gradient methods form a class of iterative algorithms that are highly effective for solving large‐scale unconstrained optimisation problems. They achieve efficiency by constructing search ...
Finding the sparse solution to under-determined or ill-condition equations is a fundamental problem encountered in most applications arising from a linear inverse problem, compressive sensing, machine ...
This is a preview. Log in through your library . Abstract A rate of convergence of the conjugate gradient method for minimizing the convex quadratic functionals in Hilbert space is investigated.
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