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Lecture
Deep Neural Networks: Optimization and Approximation
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Related lectures (31)
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Neural Networks: Basics and Applications
Explores neural networks basics, XOR problem, classification, and practical applications like weather data prediction.
Neural Networks: Two-layer Networks and Backpropagation
Explores two-layer neural networks and backpropagation for learning feature spaces and approximating continuous functions.
Building Physical Neural Networks
Discusses challenges in building physical neural networks, focusing on depth, connections, and trainability.
Neural Networks: Regression and Classification
Explores neural networks for regression and classification tasks, covering training, regularization, and practical examples.
Neural Networks
Explores neural networks, hidden layers, weight adjustments, activation functions, and the universal approximation theorem.
Monotonicity Criteria in Differentiable Functions
Explores monotonicity criteria, L'Hopital's rule, and Lipschitz continuity in differentiable functions and deep neural networks.
Neural Network Approximation and Learning
Delves into neural network approximation, supervised learning, challenges in high-dimensional learning, and deep learning experimental revolution.
Deep Learning: Data Representations and Neural Networks
Covers data representations, Bag of Words, histograms, data pre-processing, and neural networks.
Convolutional Neural Networks
Explores Convolutional Neural Networks, focusing on layers, filters, pooling, and weight sharing.
Deep Learning: Data Representations and Neural Networks
Explores data representations, histograms, neural networks, and deep learning concepts.