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Lecture
Decision Trees and Boosting
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Regression Trees and Ensemble Methods in Machine Learning
Discusses regression trees, ensemble methods, and their applications in predicting used car prices and stock returns.
Structured Classifications: Decision Trees and Boosting
Explores decision trees, overfitting elimination, boosting techniques, and their practical applications in predictive modeling.
Decision Trees and Random Forests: Concepts and Applications
Discusses decision trees and random forests, focusing on their structure, optimization, and application in regression and classification tasks.
Machine Learning Basics: Supervised Learning
Introduces the basics of supervised machine learning, covering types, techniques, bias-variance tradeoff, and model evaluation.
Classification Algorithms: Generative and Discriminative Approaches
Explores generative and discriminative classification algorithms, emphasizing their applications and differences in machine learning tasks.
Machine Learning Basics: Supervised and Unsupervised Learning
Covers the basics of machine learning, supervised and unsupervised learning, various techniques like k-nearest neighbors and decision trees, and the challenges of overfitting.
Decision Trees: Induction & Attributes
Explores decision trees, attribute selection, bias-variance tradeoff, and ensemble methods in machine learning.
Supervised Learning: Regression Methods
Explores supervised learning with a focus on regression methods, including model fitting, regularization, model selection, and performance evaluation.
Introduction to Data Science
Introduces the basics of data science, covering decision trees, machine learning advancements, and deep reinforcement learning.
Decision Trees and Boosting
Explores decision trees in machine learning, their flexibility, impurity criteria, and introduces boosting methods like Adaboost.