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Lecture
Gradient Descent Convergence
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Related lectures (26)
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Proximal Gradient Descent: Optimization Techniques in Machine Learning
Discusses proximal gradient descent and its applications in optimizing machine learning algorithms.
Optimization Techniques: Gradient Descent and Convex Functions
Provides an overview of optimization techniques, focusing on gradient descent and properties of convex functions in machine learning.
Faster Gradient Descent: Projected Optimization Techniques
Covers faster gradient descent methods and projected gradient descent for constrained optimization in machine learning.
Convex Optimization: Gradient Descent
Explores VC dimension, gradient descent, convex sets, and Lipschitz functions in convex optimization.
Proximal and Subgradient Descent: Optimization Techniques
Discusses proximal and subgradient descent methods for optimization in machine learning.
Optimal Transport: Rockafellar Theorem
Explores the Rockafellar Theorem in optimal transport, focusing on c-cyclical monotonicity and convex functions.
Gradient Descent: Principles and Applications
Covers gradient descent, its principles, applications, and convergence rates in optimization for machine learning.
Gradient Descent: Lipschitz Continuity
Explores Lipschitz continuity in gradient descent optimization and its implications on function optimization.
Optimization Techniques: Convexity in Machine Learning
Covers optimization techniques in machine learning, focusing on convexity and its implications for efficient problem-solving.
Geodesic Convexity: Theory and Applications
Explores geodesic convexity in metric spaces and its applications, discussing properties and the stability of inequalities.