Pages that link to "Item:Q2280935"
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The following pages link to Distributed approximate Newton algorithms and weight design for constrained optimization (Q2280935):
Displaying 16 items.
- Distributed resource allocation with binary decisions via Newton-like neural network dynamics (Q2021311) (← links)
- Distributed resource allocation via multi-agent systems under time-varying networks (Q2063830) (← links)
- Projected subgradient based distributed convex optimization with transmission noises (Q2073071) (← links)
- Surplus-based accelerated algorithms for distributed optimization over directed networks (Q2097723) (← links)
- Adaptive backstepping for distributed optimization (Q2139422) (← links)
- Convergence analysis of first-order discrete multi-agent systems with cooperative-competitive mechanisms (Q2245077) (← links)
- Distributed Newton methods for strictly convex consensus optimization problems in multi-agent networks (Q2333555) (← links)
- Distributed optimal resource allocation over strongly connected digraphs: a surplus-based approach (Q2663958) (← links)
- Complex group consensus of multi-agent systems with cooperative-competitive mechanisms: acyclic partition method (Q2700408) (← links)
- Distributed Weight Selection in Consensus Protocols by Schatten Norm Minimization (Q2982744) (← links)
- Distributed Adaptive Optimization With Weight-Balancing (Q5092101) (← links)
- Consensus of general linear multi-agent systems based on second-order neighbours' information: directed topology case (Q5095546) (← links)
- Distributed Newton Methods for Deep Neural Networks (Q5157199) (← links)
- Distributed Design for Nuclear Norm Minimization of Linear Matrix Equations With Constraints (Q5854053) (← links)
- Distributed strategy for constrained resource allocation problems of autonomous second-order nonlinear agents and its application to smart grids (Q6059613) (← links)
- Group consensus for multi-agent systems based on acyclic partition and generational partition under DoS attack (Q6601160) (← links)