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
Support Vector Machine: Model Storage, Memory Usage, and Energy Consumption
Graph Chatbot
Related lectures (30)
Previous
Page 1 of 3
Next
Kernel Methods: Neural Networks
Covers the fundamentals of neural networks, focusing on RBF kernels and SVM.
Kernel Methods: SVM and Regression
Introduces kernel methods like SVM and regression, covering concepts such as margin, support vector machine, curse of dimensionality, and Gaussian process regression.
Introduction to Machine Learning: Supervised Learning
Introduces supervised learning, covering classification, regression, model optimization, overfitting, and kernel methods.
Unsupervised Learning: Dimensionality Reduction
Explores unsupervised learning techniques for reducing dimensions in data, emphasizing PCA, LDA, and Kernel PCA.
Support Vector Machines: Theory and Applications
Explores Support Vector Machines theory, parameters, uniqueness, and applications in machine learning.
Neural Networks Recap: Activation Functions
Covers the basics of neural networks, activation functions, training, image processing, CNNs, regularization, and dimensionality reduction methods.
Support Vector Regression: Nu-SVR and RVR
Explores advanced topics in machine learning, focusing on SVR extensions and hyperparameter optimization, including Nu-SVR and RVR.
Classification Algorithms: Generative and Discriminative Approaches
Explores generative and discriminative classification algorithms, emphasizing their applications and differences in machine learning tasks.
Landscape and Generalisation in Deep Learning
Explores the challenges and insights of deep learning, focusing on loss landscape, generalization, and feature learning.
Document Analysis: Topic Modeling
Explores document analysis, topic modeling, and generative models for data generation in machine learning.