Date | Topic |
Section I: Introduction / background |
Lecture 1 (Jan 11)
|
Introduction to NLP
|
Lecture 2
|
Basics of Deep Learning: Backpropagation and Neural Networks
|
Section II: NLP core techniques |
Lecture 3
|
Language Modeling and Recurrent Neural Networks
|
Lecture 4
|
Word Meaning and Word Embedding
|
Lecture 5
|
Sentence Embeddings, Convolutional Neural Networks
|
Lecture 6 & 7
|
Graph Representations for NLP, Graph Convolutional Network
|
Lecture 8
|
Machine Translation, Seq2Seq and Attention
|
Lecture 9
|
Transformer and BERT
|
Lecture 10
|
Pre-trained Language Models (student mini lectures)
|
Lecture 11
|
Constituency Parsing
|
Lecture 12
|
Syntactic Dependency Parsing
|
Section III: Cutting-edge research topics. |
Lecture 13
|
Data, Knowledge, and Logic: Modeling and Reasoning for Natural Language Understanding
|
Lecture 14
|
Guest lecture, TBD
|
Lecture 15
|
Knowledge Graph
|
Lecture 16 & 17
|
Conference tutorial, TBD
|
Lecture 18 & 19
|
Conference tutorial, TBD
|
Lecture 20 & 21
|
Conference tutorial, TBD |
Lecture 22 & 23
|
Course project presentations and discussions.
|