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Statistical learning theory
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Statistical Learning: Fundamentals
Introduces the fundamentals of statistical learning, covering supervised learning, decision theory, risk minimization, and overfitting.
Do ImageNet Classifiers Generalize?
Examines the generalization of ImageNet classifiers, safety-critical applications, overfitting, and the reliability of machine learning models.
Mathematics of Data: Models and Estimators
Covers the Mathematics of Data, focusing on models, estimators, and practical issues in data analysis.
Evaluating Machine Accuracy and Robustness on ImageNet
Explores the evaluation of machine and human accuracy and robustness on ImageNet, highlighting progress, challenges, and the need for improvement.
Linear Models and Overfitting
Explores linear models, overfitting, and the importance of feature expansion and adding more data to reduce overfitting.
Regularization Methods: Training and Validation Base
Explores regularization methods in neural networks, emphasizing the importance of training and validation bases to prevent overfitting.
Specification Testing and Machine Learning
Explores specification testing, machine learning, overfitting, regularization, prediction tests, and variable selection.
Regression Trees and Ensemble Methods in Machine Learning
Discusses regression trees, ensemble methods, and their applications in predicting used car prices and stock returns.
Bias-Variance Trade-Off
Explores underfitting, overfitting, and the bias-variance trade-off in machine learning models.
Machine Learning Fundamentals: Overfitting and Regularization
Covers overfitting, regularization, and cross-validation in machine learning, exploring polynomial curve fitting, feature expansion, kernel functions, and model selection.