Methods for Learning without Annotated Data
||Letitia Parcalabescu, Juri Opitz
Vorlesung / Übung / Seminar
|Time and Place
||Wednesday, 14:15-15:45, Online
Thursday, 14:15-15:45, Online
Prerequisite for Participation
- good knowledge of statistical methods, incl. neural networks
- basic knowledge of linear algebra and calculus
- advanced BA students or MA students
Surpassing 70% of points from exercises to be accepted for the final exam
- Passing the final exam
Machine Learning algorithms (especially in Deep Learning) need large amounts of training data to perform well.
However, high quality manually annotated data is costly and sometimes impossible to collect.
In this course, we want to present an anthology of methods for coping with absent annotation in data.
The course will be organized as a 2h/week lecture and 2h/week tutorial session, where we will discuss general questions and homework assignments. Active participation in the exercises is mandatory for admission to the final exam.
Literature will be made available.