230013 Projektseminar: Hate Speech Detection (S) (WiSe 2021/2022)

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Social Media (such as Twitter, Facebook, Reddit, YouTube, and so on) is a big part of our daily lives. It provides big unstructured data for researchers to understand individual and societal tendencies. The field of computational linguistics can provide many tools to use this unstructured data and transform it into manageable and scientific or application-oriented research topics.

After a general introduction and a hands-on primer on programming in Python (e.g., with NumPy, sci-kit-learn), we will dive into several exciting topics, including scraping data from social media and text preprocessing, data exploration, and text classification.

The course will be taught in English.

In this seminar, students learn to

• break down a research question/problem into manageable components
• develop an analytical approach to address a research problem in computational sociolinguistics.
• crawl a linguistically valuable social media data
• experiment with data from popular social media platforms
• differentiate various types of social media data and methods to process/analyze them
• apply different classical machine learning or deep learning algorithms in Python Environment to get insights for specific research questions,
• interpret the result of data analysis,

To successfully pass, we ask participants
• to hand in 2-3 small homework assignments
• to present a paper or Python library/package
• to submit a 1-2 page research question/hypothesis summary

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Subject assignments

Module Course Requirements  
23-CL-BaCL6 Projektmodul Projektseminar Study requirement
Graded examination
Student information
23-CL-BaCL6-KF Projektmodul Kernfach Projektseminar Study requirement
Graded examination
Student information
23-TXT-BaCL6 Projektmodul Projektseminar Graded examination
Student information

The binding module descriptions contain further information, including specifications on the "types of assignments" students need to complete. In cases where a module description mentions more than one kind of assignment, the respective member of the teaching staff will decide which task(s) they assign the students.


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E-Learning Space
E-Learning Space
Registered number: 10
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Limitation of the number of participants:
Limited number of participants: 20
Address:
WS2021_230013@ekvv.uni-bielefeld.de
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Last update basic details/teaching staff:
Wednesday, October 13, 2021 
Last update times:
Friday, September 24, 2021 
Last update rooms:
Friday, September 24, 2021 
Type(s) / SWS (hours per week per semester)
seminar (S) / 4
Language
This lecture is taught in english
Department
Faculty of Linguistics and Literary Studies
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279338398