Skip to main content
Graph
Search
fr
en
Login
Search
All
Categories
Concepts
Courses
Lectures
MOOCs
People
Practice
Publications
Startups
Units
Show all results for
Home
Lecture
Model Assessment: Metrics and Selection
Graph Chatbot
Related lectures (31)
Previous
Page 3 of 4
Next
Model Assessment and Hyperparameter Tuning
Explores model assessment, hyperparameter tuning, and resampling strategies in machine learning.
Model Evaluation
Explores underfitting, overfitting, hyperparameters, bias-variance trade-off, and model evaluation in machine learning.
Data Representation: BoW and Imbalanced Data
Covers overfitting, model selection, validation, cross-validation, regularization, kernel regression, and data representation challenges.
Decision Trees: Classification
Explores decision trees for classification, entropy, information gain, one-hot encoding, hyperparameter optimization, and random forests.
Machine Learning Basics
Introduces machine learning basics, including data collection, model evaluation, and feature normalization.
Regression Trees and Ensemble Methods in Machine Learning
Discusses regression trees, ensemble methods, and their applications in predicting used car prices and stock returns.
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.
Linear Regression: Basics
Covers the basics of linear regression, binary and multi-class classification, and evaluation metrics.
Model Selection: Non-Nested Model Selection
Explores model selection, criteria, bias/variance tradeoff, and cross-validation methods.
Supervised Learning: k-NN and Decision Trees
Introduces supervised learning with k-NN and decision trees, covering techniques, examples, and ensemble methods.