Machine learning and natural language processing
13. Project presentations
Before the presentation (by noon on Monday, 11/12/2023):
- Submit the following into the homework vault of your project
- A file with your presentation (PDF is preferred, but PowerPoint is also OK)
- Your project implementation (ideally, one self-contained Python notebook that loads necessary data from a URL, but an archive with your code and required data resources is also possible, if there is no other option).
Presentation format:
- Project presentation
- Presenting the results of reproducing your chosen piece of research, describing your extension or re-interpretation of the model, and, most importantly, a summary of lessons learned.
- Duration max 10 minutes!!!
- Discussion
- General discussion
- Duration max 5 minutes!!!
Presenting groups:
- Group 1
- Members: Pavel Nedělník, Patrik Begáň, Samuel Gazda
- Topic: Electra: Pre-training text encoders as discriminators rather than generators
- Group 2
- Members: Marc Monfort Muñoz, Aigerim Bilyalova, Arman Sakibekov, Emre Karyagdi
- Topic: Automatic Detection of Fake News
- Group 3
- Members: Jakub Pekár, Jonáš Tichý, Kryštof Zamazal
- Topic: Unsupervised Machine Translation Using Monolingual Corpora Only
- Group 4
- Members: Samuel Šuľan, Heejoo Kim, Muhammad Jazim Ali
- Topic: Optimization and improvement of fake news detection using deep learning approaches for societal benefit
- Group 5
- Members: Nakul Gupta, Tanmay Rakhe, Himanshu Sharma, Himanshu Kasana
- Topic: Support Vector Machines for Spam Categorization
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