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Lecture
Kernels: Nonlinear Transformations
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Related lectures (32)
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Introduction to Machine Learning: Linear Models
Introduces linear models for supervised learning, covering overfitting, regularization, and kernels, with applications in machine learning tasks.
Kernel Methods: Recap and Applications
Covers polynomial feature expansion, kernel methods, data representations, normalization, and handling imbalanced data in machine learning.
Kernel Regression: Weighted Average and Feature Maps
Covers kernel regression and feature maps for data separability.
Kernel Methods: Neural Networks
Covers the fundamentals of neural networks, focusing on RBF kernels and SVM.
Support Vector Machines: Basics and Applications
Covers the basics of Support Vector Machines, including linear separability, hyperplanes, margins, and non-linear SVM with kernels.
Kernel Methods: Understanding Overfitting and Model Selection
Discusses kernel methods, focusing on overfitting, model selection, and kernel functions in machine learning.
Kernel Regression
Covers the concept of kernel regression and making data linearly separable by adding features and using local methods.
Kernel Methods: Nonlinear Separation Surfaces
Explores kernel methods for nonlinear separation surfaces using polynomial and Gaussian kernels in Perceptron and SVM algorithms.
Kernel Ridge Regression: Equivalent Formulations and Representer Theorem
Explores Kernel Ridge Regression, equivalent formulations, Representer Theorem, Kernel trick, and predicting with kernels.
Document Analysis: Topic Modeling
Explores document analysis, topic modeling, and generative models for data generation in machine learning.