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Distributed Optimization

The goal of Distributed Optimization is to optimize a certain objective defined over millions of billions of data that is distributed over many machines by utilizing the computational power of these machines.

Source: Analysis of Distributed StochasticDual Coordinate Ascent

Papers

Showing 2650 of 536 papers

TitleStatusHype
Distributed Pose Graph Optimization using the Splitting Method based on the Alternating Direction Method of Multipliers0
From Centralized to Decentralized Federated Learning: Theoretical Insights, Privacy Preservation, and Robustness Challenges0
Opportunistic Routing in Wireless Communications via Learnable State-Augmented PoliciesCode0
Unbiased and Sign Compression in Distributed Learning: Comparing Noise Resilience via SDEs0
Smoothed Normalization for Efficient Distributed Private Optimization0
Fundamental Bias in Inverting Random Sampling Matrices with Application to Sub-sampled Newton0
Sign Operator for Coping with Heavy-Tailed Noise in Non-Convex Optimization: High Probability Bounds Under (L_0, L_1)-Smoothness0
Efficient Distributed Optimization under Heavy-Tailed Noise0
A Survey of Optimization Methods for Training DL Models: Theoretical Perspective on Convergence and Generalization0
Communication-Efficient Distributed Kalman Filtering using ADMM0
Distributed Model Predictive Control Design for Multi-agent Systems via Bayesian Optimization0
Distributed Convex Optimization with State-Dependent (Social) Interactions over Random Networks0
FedCFA: Alleviating Simpson's Paradox in Model Aggregation with Counterfactual Federated LearningCode1
Accelerated Methods with Compressed Communications for Distributed Optimization Problems under Data Similarity0
Towards privacy-preserving cooperative control via encrypted distributed optimization0
Information-Geometric Barycenters for Bayesian Federated Learning0
Deep Distributed Optimization for Large-Scale Quadratic Programming0
Fractional Order Distributed Optimization0
Review of Mathematical Optimization in Federated Learning0
Problem-dependent convergence bounds for randomized linear gradient compression0
Optimization Algorithm Design via Electric CircuitsCode1
Logarithmically Quantized Distributed Optimization over Dynamic Multi-Agent Networks0
Tighter Performance Theory of FedExProx0
Byzantine-Resilient Output Optimization of Multiagent via Self-Triggered Hybrid Detection Approach0
FedECADO: A Dynamical System Model of Federated Learning0
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