Decentralized Constraint-Coupled Optimization with Inexact Oracle
We propose an inexact decentralized dual gradient tracking method (iDDGT) for decentralized optimization problems with a globally coupled equality constraint. Unlike existing algorithms that rely on either the exact dual gradient or an inexact one obtained through single-step gradient descent, iDDGT...
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Zusammenfassung: | We propose an inexact decentralized dual gradient tracking method (iDDGT) for
decentralized optimization problems with a globally coupled equality
constraint. Unlike existing algorithms that rely on either the exact dual
gradient or an inexact one obtained through single-step gradient descent, iDDGT
introduces a new approach: utilizing an inexact dual gradient with controllable
levels of inexactness. Numerical experiments demonstrate that iDDGT achieves
significantly higher computational efficiency compared to state-of-the-art
methods. Furthermore, it is proved that iDDGT can achieve linear convergence
over directed graphs without imposing any conditions on the constraint matrix.
This expands its applicability beyond existing algorithms that require the
constraint matrix to have full row rank and undirected graphs for achieving
linear convergence. |
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DOI: | 10.48550/arxiv.2309.06330 |