Last Updated: Fri, 04/10/2026
Syllabus
CSE 8803.pdf (113.77 KB)
General Class Information
Academic year:
2026
Semester:
Fall
Course prefix:
CSE
Course number:
8803
Section:
SRM
CRN
94618
Department (you may add up to three):
Instructor first name:
Bo
Instructor last name:
Dai
Catalog Description

This course develops a principled, unified foundation for representation learning  through the lens of spectral decomposition. Starting from the sufficiency of spectral representations for downstream tasks, we systematically build a framework that connects classical component analysis methods (PCA, CCA, Laplacian Embedding) to modern self-supervised learning algorithms (SimCLR, BYOL, CLIP, DINO) and extends to applications in reinforcement learning, causal inference, and controllable generation.

    The course follows the theoretical backbone of "Spectral Ghost in Representation Learning" (Dai, Li & Schuurmans, 2026), supplemented by the RL-specific treatment in "Spectral Representation-based Reinforcement Learning" (Gao, Sun, Li, Schuurmans &  Dai, 2026).

Administrative Data
Course status
Active