Unsupervised Learning (Part 1)
Janusz Przewocki
Mon Apr 20, 10:30-12:30 (3 days ago)
Abstract: This first session introduces the motivations and foundational methods for dimensionality reduction under unsupervised learning. We begin by discussing why dimension reduction matters - especially in high-dimensional data settings - and how it helps address issues like the "curse of dimensionality," multicollinearity, overfitting, and challenges in visualization and interpretation. Then we focus on Principal Component Analysis (PCA): its mathematical foundations, how it identifies dominant modes of variation, how to interpret the principal components, and how to choose the number of components.
Computer scienceMathematics
Audience: general audience
Basic Notions and Applied Topology Seminar
| Organizer: | Julian Brüggemann |
| Curator: | John Rick* |
| *contact for this listing |
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