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Related lectures (32)
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Classification: Decision Trees and kNN
Introduces decision trees and k-nearest neighbors for classification tasks, exploring metrics like accuracy and AUC.
Nonlinear Supervised Learning
Explores the inductive bias of different nonlinear supervised learning methods and the challenges of hyper-parameter tuning.
Decision Trees and Boosting
Introduces decision trees as a method for machine learning and explains boosting techniques for combining predictors.
Supervised Learning: Classification Algorithms
Explores supervised learning in financial econometrics, emphasizing classification algorithms like Naive Bayes and Logistic Regression.
Interpretable Machine Learning: Sparse Decision Trees and Interpretable Neural Networks
Explores the extremes of interpretability in machine learning, focusing on sparse decision trees and interpretable neural networks.
Addressing Overfitting in Decision Trees
Explores overfitting in decision trees and introduces random forests as a solution.
Decision Forests: Structure and Training
Covers decision forests, training, weak learners, entropy, boosting, 3D pose estimation, and practical applications.
Support Vector Machines: Soft Margin SVM
Introduces Soft Margin SVM, aiming to balance errors and margin width.
Optimal Decision Analysis
Explores strong duality, complementary slackness, economic interpretation, and stochastic problem scenarios in linear programming.
Decision Trees: Induction and Pruning
Explores Decision Trees, from induction to pruning, emphasizing interpretability and automatic feature selection strengths, while addressing challenges like overfitting.