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Linear constraints, Feasible directions
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Faster Gradient Descent: Projected Optimization Techniques
Covers faster gradient descent methods and projected gradient descent for constrained optimization in machine learning.
Convex Optimization: Epigraphs
Explores epigraphs, convexity of bivariate functions, and log-sum-exp functions in convex optimization.
Projected Gradient Descent
Explores convex constrained optimization through Projected Gradient Descent, focusing on tangent space and iterative minimization.
Geodesic Convexity: Theory and Applications
Explores geodesic convexity in metric spaces and its applications, discussing properties and the stability of inequalities.
Optimization Techniques: Stochastic Gradient Descent and Beyond
Discusses optimization techniques in machine learning, focusing on stochastic gradient descent and its applications in constrained and non-convex problems.
Proximal and Subgradient Descent: Optimization Techniques
Discusses proximal and subgradient descent methods for optimization in machine learning.
Convex Optimization: Sets and Functions
Introduces convex optimization through sets and functions, covering intersections, examples, operations, gradient, Hessian, and real-world applications.
Proximal Gradient Descent: Optimization Techniques in Machine Learning
Discusses proximal gradient descent and its applications in optimizing machine learning algorithms.