1 | Introduction and Overview | |
2 | Parsing and Syntax I | |
3 | Smoothed Estimation, and Language Modeling | |
4 | Parsing and Syntax II | |
5 | The EM Algorithm | |
6 | The EM Algorithm Part II | |
7 | Lexical Similarity | Homework 1 due |
8 | Lexical Similarity (cont.) | |
9 | Log-Linear Models | |
10 | Tagging and History-based Models | |
11 | Grammar Induction | Homework 2 due |
12 | Computational Modeling of Discourse | |
13 | Text Segmentation | |
| Midterm | |
14 | Local Coherence and Coreference | Homework 3 due |
15 | Machine Translation | |
16 | Machine Translation (cont.) | |
17 | Machine Translation (cont.) | |
18 | Graph-based Methods for NLP Applications | Homework 4 due |
19 | Word Sense Disambiguation | |
20 | Global Linear Models | |
21 | Global Linear Models Part II | Homework 5 due |
22 | Dialogue Processing | |
23 | Dialogue Processing (cont.) | |
24 | Guest Lecture: Stephanie Seneff | Homework 6 due |
25 | Text Summarization | |
| Final Exam | |