Delay-Tolerant Augmented-Consensus-based Distributed Directed Optimization
By: Mohammadreza Doostmohammadian, Narahari Kasagatta Ramesh, Alireza Aghasi
Potential Business Impact:
Fixes slow computer networks for faster learning.
Distributed optimization finds applications in large-scale machine learning, data processing and classification over multi-agent networks. In real-world scenarios, the communication network of agents may encounter latency that may affect the convergence of the optimization protocol. This paper addresses the case where the information exchange among the agents (computing nodes) over data-transmission channels (links) might be subject to communication time-delays, which is not well addressed in the existing literature. Our proposed algorithm improves the state-of-the-art by handling heterogeneous and arbitrary but bounded and fixed (time-invariant) delays over general strongly-connected directed networks. Arguments from matrix theory, algebraic graph theory, and augmented consensus formulation are applied to prove the convergence to the optimal value. Simulations are provided to verify the results and compare the performance with some existing delay-free algorithms.
Similar Papers
Distributed Optimization with Gradient Tracking over Heterogeneous Delay-Prone Directed Networks
Systems and Control
Fixes computer networks with slow connections.
Distributed Optimization with Efficient Communication, Event-Triggered Solution Enhancement, and Operation Stopping
Systems and Control
Makes many devices work together smarter.
An Optimal Control Interpretation of Augmented Distributed Optimization Algorithms
Optimization and Control
Makes smart networks work better, faster.