Difference between revisions of "Step 1"
From Research management course
m |
m (→Papers to read) |
||
Line 47: | Line 47: | ||
Can I select any paper from the internet by my own choice? – Yes. Here are the formal requirements. | Can I select any paper from the internet by my own choice? – Yes. Here are the formal requirements. | ||
+ | |||
# A clear message in the area of Theoretical Foundations of Machine Learning. | # A clear message in the area of Theoretical Foundations of Machine Learning. | ||
# Top peer review journals, no ArXiv, better avoid conferences. | # Top peer review journals, no ArXiv, better avoid conferences. |
Revision as of 16:01, 19 September 2024
The seminar
- The warm-up 3-minute test
- Model, Algorithm, Method: Machine learning in a nut-shell
- Step 0 homework results discussion
- Step 1 homework, how to read (how to search is a separate topic)
- Structure of the main message
- Structure of the abstract
- Extracting keywords
- Highlights: compressing the paper
- Instastructure for your homework
- GitHub: organize the repository
- LaTeX: compile your file and commit without temporary files
- The papers to select from
- Optional GPT-role discussion
Resources
Step 1 Youtube video (expected with online version)
Homework
- Set up your GitHub repository using the template
- Select a paper to read from the list below
- Write your own
- Abstract
- Keywords
- Highlights
- Short motivation for why you selected this paper (no templates here it is an extra topic to discuss)
- Compile and upload TEX and PDF to GitHub (no temporary files, please)
- Linear models. Read pages XX from the book XX, for the next warm-up test
Papers to read
Can I select any paper from the internet by my own choice? – Yes. Here are the formal requirements.
- A clear message in the area of Theoretical Foundations of Machine Learning.
- Top peer review journals, no ArXiv, better avoid conferences.
- No overviews, it is another genre.
- No Kaggle-style papers with messages like "It works, but nobody knows how".
- No papers from another field: Linguistics, Medicine, Finance, Physics, etc. There must be only one primary subject: Machine Learning.
Transcript of the video
Appears after the seminar.