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PhD
University Giessen
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Schedule
Wednesday, November 25, 2020
4:20 PM Europe/Berlin
Seminar location
No geocoded details are available for this content yet.
Format
Past Seminar
Recording
Not available
Host
CompCogSci Darmstadt
Duration
70.00 minutes
Seminar location
No geocoded details are available for this content yet.
Many regions of the human brain conduct highly specific functions, such as recognizing faces, understanding language, and thinking about other people’s thoughts. Why might this domain specific organization be a good design strategy for brains, and what is the origin of domain specificity in the first place? In this talk, I will present recent work testing whether the segregation of face and object perception in human brains emerges naturally from an optimization for both tasks. We trained artificial neural networks on face and object recognition, and found that networks were able to perform both tasks well by spontaneously segregating them into distinct pathways. Critically, networks neither had prior knowledge nor any inductive bias about the tasks. Furthermore, networks optimized on tasks which apparently do not develop specialization in the human brain, such as food or cars, and object categorization showed less task segregation. These results suggest that functional segregation can spontaneously emerge without a task-specific bias, and that the domain-specific organization of the cortex may reflect a computational optimization for the real-world tasks humans solve.
Katharina Dobs
PhD
University Giessen
Contact & Resources
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