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Model Architecture & Evaluation Metric
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Classroom Contents
Towards Better Understanding of Contrastive Learning
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- 1 Intro
- 2 Great Empirical Success of Deep Models
- 3 Self-supervised Learning (SSL)
- 4 Contrastive Learning (CL)
- 5 Formulation of Contrastive Learning
- 6 Understanding of Contrastive Loss
- 7 What Deep Learning Brings?
- 8 Example: InfoNCE
- 9 Coordinate-wise Optimization
- 10 A Surprising Connection to Kernels
- 11 Overview of Nonlinear Analysis
- 12 Nonlinear Setting
- 13 Training Dynamics
- 14 1-layer 1-node nonlinear network
- 15 How to reduce the local roughness p(w)?
- 16 1-layer multiple node nonlinear network
- 17 Assumptions
- 18 Conditional Independence
- 19 What linear network cannot do
- 20 Global modulation
- 21 Feature Emergence
- 22 Experiment Setting
- 23 Model Architecture & Evaluation Metric
- 24 Visualization
- 25 Quadratic Loss versus InfoNCE