Big Data for Public Policy
ETH Zurich -- Spring Term 2021
Lecture materials for the ETHZ course '860-0033-00L Big Data for Public Policy FS2021' (cf.Course syllabus)
Signing sheet for students presentation
N° | Date | Lecture | Materials |
---|---|---|---|
0 | Feb 25 | Class overview | Slides in html, pdf |
1 | Feb 25 | Statistical Learning [part 1] | Slides in html, pdf |
2 | Mar 4 | Statistical Learning [part 2] | Slides in html, pdf |
3 | Mar 4 | Scraping and APIs | Notebook: .ipynb, html |
4 | Mar 11 | Intro to ML: regressions | Slides in html, pdf; Notebook: .ipynb, html |
5 | Mar 18 | Unsupervised learning | Slides in html, pdf; Notebook: .ipynb, html |
6 | Mar 25 | Classification | Slides in html, pdf; Notebook: .ipynb, html |
7 | Apr 1 | [NLP] Text analysis essentials | Slides in pdf |
9 | Apr 15 | Text analysis | Notebook: .ipynb |
10 | Apr 22 | Advanced ML | Notebook: .ipynb |
11 | Apr 29 | Research design | Slides in pdf; |
12 | Apr 29 | Developing a Dash application | Notebook: .ipynb) |
13 | May 6 | The Limitations of ML | Slides in pdf |
14 | May 20 | Heterogeneous treatment effect | Slides in pdf |
15 | May 27 | Advanced causal methods | Notebook: .ipynb, html |