Descriptif
Kernel Machines
Synopsis
1- Notions on Kernels and Reproducing Kernel Hilbert Space Theory
2- Kernel machines for regression, classification and dimensionality reduction
2- Kernel machines for regression, classification and dimensionality reduction
3- Kernel design and kernel learning
4- Kernel Machines for structured output prediction
5- Scaling up kernel machines
6- Brief overview of relationships between kernel machines and neural networks
The goal of this course is to introduce and deepen kernel methods as a major tool in nonparametric approaches to machine learning.
In this course you will (re)discover that linear methods extend to nonlinear by using the famous kernel trick. Linear regression, linear classification and linear dimensionality reduction approaches will be highlighted as typical examples of this family of approaches. You will also learn how to think about machine learning in terms of hypothesis spaces and regularization choices, by leveraging a unique hyperparameter: the kernel. This will raise the issue of kernel design and learning. We will then show that the kernel trick is also interesting in the output space by tackling multi-task and structured prediction.
Eventually, we will present an overview of the still-open question of scaling up kernel methods and will discuss the links between kernel machines and neural networks.
The course is punctuated by 3 practical sessions (3H00, 1H30, 1H30).
Format des notes
Numérique sur 20Littérale/grade réduitPour les étudiants du diplôme M2 DS - Data Science
L'UE est acquise si Note finale >= 10- Crédits ECTS acquis : 3 ECTS