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1310.2059
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Distributed Coordinate Descent Method for Learning with Big Data
8 October 2013
Peter Richtárik
Martin Takáč
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Papers citing
"Distributed Coordinate Descent Method for Learning with Big Data"
50 / 104 papers shown
Title
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Optimizing the Optimal Weighted Average: Efficient Distributed Sparse Classification
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Estimation Network Design framework for efficient distributed optimization
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Scalable High-Dimensional Multivariate Linear Regression for Feature-Distributed Data
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R. Tsay
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07 Jul 2023
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Batches Stabilize the Minimum Norm Risk in High Dimensional Overparameterized Linear Regression
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Global-QSGD: Practical Floatless Quantization for Distributed Learning with Theoretical Guarantees
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Marco Canini
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Federated Empirical Risk Minimization via Second-Order Method
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Cooperative Coevolution for Non-Separable Large-Scale Black-Box Optimization: Convergence Analyses and Distributed Accelerations
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Chang Shao
Guochen Zhou
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FLECS-CGD: A Federated Learning Second-Order Framework via Compression and Sketching with Compressed Gradient Differences
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Federated Coordinate Descent for Privacy-Preserving Multiparty Linear Regression
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Chenxu Li
Weifeng Xu
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Stability and Generalization for Randomized Coordinate Descent
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Liang Wu
Yunwen Lei
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Shijie Hao
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Multi-Stage Hybrid Federated Learning over Large-Scale D2D-Enabled Fog Networks
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Sheikh Shams Azam
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FedSplit: An algorithmic framework for fast federated optimization
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182
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Sattar Vakili
42
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A Survey on Distributed Machine Learning
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Matthijs Wolting
J. Katzy
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OOD
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SySCD: A System-Aware Parallel Coordinate Descent Algorithm
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D
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Xinran Bian
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Privacy-Preserving Generalized Linear Models using Distributed Block Coordinate Descent
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Convergence Analysis of Block Coordinate Algorithms with Determinantal Sampling
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35
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Decentralized Markov Chain Gradient Descent
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From Server-Based to Client-Based Machine Learning: A Comprehensive Survey
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Federated Learning: Challenges, Methods, and Future Directions
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On Convergence of Distributed Approximate Newton Methods: Globalization, Sharper Bounds and Beyond
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Decentralized Deep Learning with Arbitrary Communication Compression
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Communication-Efficient Accurate Statistical Estimation
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