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Machine learning / Learning / Artificial intelligence / Applied mathematics / Artificial neural network / Outline of machine learning / Supervised learning / Regularization / Empirical risk minimization / Backpropagation / Poisson regression / Parametric model
Date: 2018-07-28 17:09:48
Machine learning
Learning
Artificial intelligence
Applied mathematics
Artificial neural network
Outline of machine learning
Supervised learning
Regularization
Empirical risk minimization
Backpropagation
Poisson regression
Parametric model

Mathematics of Machine Learning: An introduction Sanjeev Arora Princeton University Computer Science Institute for Advanced Study

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