Convex quartic problems: homogenized gradient method and preconditioning
Radu-Alexandru Dragomir, Yurii Nesterov

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Abstract
We consider a convex minimization problem for which the objective is the sum of a homogeneous polynomial of degree four and a linear term. Such task arises as a subproblem in algorithms for quadratic inverse problems with a difference-of-convex structure. We design a first-order method called Homogenized Gradient, along with an accelerated version, which enjoy fast convergence rates of respectively and in relative accuracy, where is the iteration counter. The constant is the quartic condition number of the problem. Then, we show that for a certain class of problems, it is possible to compute a preconditioner for which this condition number is , where is the problem dimension. To establish this, we study the more general problem of finding the best quadratic approximation of an norm composed…
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Taxonomy
TopicsNumerical methods in inverse problems · Matrix Theory and Algorithms · Sparse and Compressive Sensing Techniques
