GAP-Satellite-Workshop – Data-Driven Methods for Philosophy

September 12, 2025 - September 13, 2025
Gesellschaft für analytische Philosophie

Düsseldorf
Germany

Speakers:

Universität Hannover
(unaffiliated)

Organisers:

Tilburg University
Utrecht University

Topic areas

Talks at this conference

Add a talk

Details

Computational methods have revolutionized most fields of academic research, including the humanities. More recently, they have also been put to use in the philosophy of science, history of philosophy, and metaphilosophy. In this satellite workshop, we discuss techniques from the digital humanities, network science, and artificial intelligence that can support the study of philosophical corpora.

The workshop comprises keynote lectures by Prof. Catherine Herfeld and Prof. Adrian Wüthrich that showcase computational methods in philosophical research. After these showcases, Gregor Bös and Max Noichl will assist the participants in developing their own initial research questions that make use of digital methods and explore first implementations. The organizers have prepared templates to support participants without programming experience or who have not yet used computational methods in their research. More experienced participants can use the sessions to exchange ideas and develop their own projects, presenting the state of their progress in the concluding session.

If participants already have project ideas when signing up, we encourage them to get in contact with the organizers to discuss potential data sources and methods. Participants are also very welcome to sign up to continue working on existing digital projects and to contribute to the exchange of approaches.

Duration: 1 ½ days

Expected number of participants: 15–25

Supporting material

Add supporting material (slides, programs, etc.)

Reminders

Registration

No

Who is attending?

No one has said they will attend yet.

Will you attend this event?


Let us know so we can notify you of any change of plan.

Custom tags:

#Digital Humanities, #Network analysis, #Data driven methods