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
PAC learning framework
Graph Chatbot
Related lectures (32)
Previous
Page 1 of 4
Next
Validation and k-Nearest Neighbors Method
Introduces supervised learning concepts and the k-Nearest Neighbors method for classification and regression tasks.
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.
Neural Networks: Multilayer Perceptrons
Covers Multilayer Perceptrons, artificial neurons, activation functions, matrix notation, flexibility, regularization, regression, and classification tasks.
Linear Regression: Statistical Inference and Regularization
Covers the probabilistic model for linear regression and the importance of regularization techniques.
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 Fundamentals: Structure Discovery, Classification, Regression
Covers fundamental machine learning concepts including Structure Discovery, Classification, and Regression.
Kernel Regression: K-nearest Neighbors
Covers the concept of kernel regression and K-nearest neighbors for making data linearly separable.
Neural Network: Random Features and Kernel Regression
Covers random features in neural networks and kernel regression equivalence.
Linear and Weighted Regression: Optimal Parameters and Local Solutions
Covers linear and weighted regression, optimal parameters, local solutions, SVR application, and regression techniques' sensitivity.
Supervised Learning with kNN: Regression Model
Covers a simple mathematical model for supervised learning with k-nearest neighbors in regression.