

Episode 07: Yujia Huang, Caltech, on neuro-inspired generative models
Mar 18, 2021
Chapters
Transcript
Episode notes
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21
Introduction
00:00 • 2min
How I Got Started in Machine Learning
01:32 • 2min
How to Use Generative Models to Help Classification
03:48 • 6min
The Different Types of Robustness
09:40 • 2min
The Neuroscience of Hallucination
11:49 • 6min
The Effects of Priming on Learning
17:45 • 4min
How to Take Good Things From Neuroscience
22:04 • 3min
How to Take Inspiration From Human Brains
25:10 • 3min
The Future of Artificial Intelligence
28:37 • 2min
The Importance of Self-Supervised Training for Deep Learning Models
30:15 • 3min
How to Make a Neural Network More Robust
33:05 • 2min
The Importance of Continuous Data Collection
34:52 • 4min
Combining Attention Mechanism and Compositionality
39:20 • 2min
Predictive Coding and Varitional Encoder
40:55 • 4min
How to Use Generative Model to Help Discriminative Tasks
44:45 • 3min
How to Train With Less Labels
48:08 • 3min
The Importance of Recurrent Feedback Processing in Learning
50:41 • 3min
How to Be a Successful Machine Learning Researcher
53:37 • 4min
The Importance of Asking the Right Questions
57:08 • 3min
The Future of Reasoning in Deep Learning
01:00:35 • 2min
How to Adapt to Different Goals
01:02:16 • 3min