Human Centered Data Science S25
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Description

In recent years, the field of data science has developed rapidly, primarily due to advances in machine learning. This development has opened up new possibilities in a variety of social, scientific, and technological areas. However, based on the experiences of the last few years, it is becoming increasingly clear that a focus on purely statistical and numerical aspects in data science neither captures social nuances nor takes ethical criteria into account. The research area of Human-Centered Data Science closes this gap at the intersection of Human-Computer Interaction (HCI), Computer-Supported Cooperative Work (CSCW), Human Computation, and the statistical and numerical techniques of Data Science.

Human-Centered Data Science (HCDS) focuses on the fundamental principles of Data Science and their impact on people, including research ethics, privacy, legal frameworks, algorithmic bias, transparency, fairness and accountability, as well as data provenance, curation, preservation and reproducibility, user experience design and (re)search of large data sets, human computing, and, in addition, effective oral, written and visual scientific communication and the societal impact of data science.

At the end of this course, students understand the main concepts, theories, practices, and various perspectives from which data can be collected and manipulated. In addition, students are able to recognize the impact of current technological developments on society.

 

Literature

Aragon, C. M., Hutto, C., Echenique, A., Fiore-Gartland, B., Huang, Y., Kim, J., et al. (2016). Developing a Research Agenda for Human-Centered Data Science. CSCW Companion, New York, ACM (pp. 529–535).

Baumer, E. P. (2017). Toward human-centered algorithm design:. Big Data & Society, 4(2).

Kogan, M., Halfaker, A., Guha, S., Aragon, C., Muller, M., & Geiger, S. (2020). Mapping Out Human-Centered Data Science: Methods, Approaches, and Best Practices. ACM International Conference on Supporting Group Work (pp. 151-156).

 

Basic Course Info

Course No Course Type Hours
19331101 Vorlesung 2
19331102 Übung 2

Time Span 15.04.2025 - 22.07.2025
Instructors
Fabrizio Kuruc
Rebecca Merdes
Claudia Müller-Birn
Ulrike Schäfer

Study Regulation

0086c_k150 2014, BSc Informatik (Mono), 150 LPs
0086d_k135 2014, BSc Informatik (Mono), 135 LPs
0087d_k90 2015, BSc Informatik (Kombi), 90 LPs
0088d_m60 2015, MSc Informatik (Kombi), 60 LPs
0089b_MA120 2008, MSc Informatik (Mono), 120 LPs
0089c_MA120 2014, MSc Informatik (Mono), 120 LPs
0207b_m37 2015, MSc Informatik (Lehramt), 37 LPs
0208b_m42 2015, MSc Informatik (Lehramt), 42 LPs
0458a_m37 2015, MSc Informatik (Lehramt), 37 LPs
0471a_m42 2015, MSc Informatik (Lehramt), 42 LPs
0556a_m37 2018, M-Ed Fach 1 Informatik (Lehramt an Integrierten Sekundarschulen und Gymnasien), 37 LPs
0556b_m37 2023, M-Ed Informatik Fach 1 (Lehramt an Integrierten Sekundarschulen und Gymnasien), 37 LP
0557a_m42 2018, M-Ed Fach 2 Informatik (Lehramt an Integrierten Sekundarschulen und Gymnasien), 42 LPs
0557b_m42 2023, M-Ed Informatik Fach 2 Informatik (Lehramt an Integrierten Sekundarschulen und Gymnasien), 42 LPs

Human Centered Data Science S25
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Main Events

Day Time Location Details
Tuesday 14-16 T9/SR 006 Seminarraum 2025-04-15 - 2025-07-15

Accompanying Events

Day Time Location Details
Tuesday 16-18 T9/SR 006 Seminarraum Übung 01

Human Centered Data Science S25
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