SG
Stochastic Gradient Optimization Techniques
This cluster of papers focuses on the application of optimization methods in machine learning, particularly in the context of stochastic gradient descent, random projections, deep learning, convex optimization, matrix decompositions, and large-scale optimization. The papers explore various algorithms and techniques for improving the efficiency and effectiveness of machine learning models, with a specific emphasis on neural networks and generalization.
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- Peter Richtárik (301)
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- David P. Woodruff (196)
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- Stochastic Gradient Optimization Techniques (57,005)
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