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Accelerated Gradient Methods
Accelerated gradient methods, such as gradient descent with momentum, are a class of optimization algorithms that average over past gradients to obtain more stable directions of descent. They are particularly effective for solving ill-conditioned optimization problems, where the objective function landscape resembles a narrow canyon and progress in certain directions is much slower than in others.
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