Graph Constructions for Machine Learning Applications - New Insights and Algorithms
IEEE Signal Processing Society via YouTube
Overview
Syllabus
Introduction
Motivation
Outline
Basic definitions
Graph signal variation
Semisupervised learning
Graph signal sampling
Active semisupervised learning
Graph signal variations
Paper
Theoretical Analysis
Conventional Approach
orthogonalization
linear embeddings
label propagation
deep neural networks
supervised classification
smoothness
regularization
local political interpolation
local nonparametric approach
motor model selection
local interpolation
Geometry of deep learning
Taught by
IEEE Signal Processing Society