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Proportional-Integral Projected Gradient Method for Conic Optimization

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 Added by Yue Yu
 Publication date 2021
and research's language is English




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Conic optimization is the minimization of a differentiable convex objective function subject to conic constraints. We propose a novel primal-dual first-order method for conic optimization, named proportional-integral projected gradient method (PIPG). PIPG ensures that both the primal-dual gap and the constraint violation converge to zero at the rate of (O(1/k)), where (k) is the number of iterations. If the objective function is strongly convex, PIPG improves the convergence rate of the primal-dual gap to (O(1/k^2)). Further, unlike any existing first-order methods, PIPG also improves the convergence rate of the constraint violation to (O(1/k^3)). We demonstrate the application of PIPG in constrained optimal control problems.



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