Intermediate · Fundamentals
Unsupervised Learning
Visual diagram · (in preparation) · Math · (in preparation) · Worked example · 3 difficulty levels.
TL;DR. Learning patterns from data that has no labels — only the inputs.
Technical Definition
Learning patterns from data that has no labels — only the inputs.
How it works
Unsupervised methods uncover hidden structure: clustering groups similar points, dimensionality reduction (PCA, autoencoders) compresses data into a lower-dimensional space, density estimation models the distribution. It is essential when labels are scarce or expensive, and it is the foundation of self-supervised pretraining used in modern LLMs.
Related Concepts
- Autoencoder — A neural network that learns compressed representations by training to reconstruct its own input through a bottleneck layer.
- Self-Supervised Learning — A training paradigm that generates supervisory signals from the data itself, eliminating the need for human labels.
- Clustering — An unsupervised technique that groups similar data points without using labels.