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SeminarPast EventNeuroscience

Computational Mechanisms of Predictive Processing in Brains and Machines

Dr. Antonino Greco

Hertie Institute for Clinical Brain Research, Germany

Schedule
Wednesday, December 10, 2025

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Schedule

Wednesday, December 10, 2025

4:00 PM Europe/Berlin

Host: LOOPS de Hoz - Hechavarria

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Event Information

Domain

Neuroscience

Original Event

View source

Host

LOOPS de Hoz - Hechavarria

Duration

70 minutes

Abstract

Predictive processing offers a unifying view of neural computation, proposing that brains continuously anticipate sensory input and update internal models based on prediction errors. In this talk, I will present converging evidence for the computational mechanisms underlying this framework across human neuroscience and deep neural networks. I will begin with recent work showing that large-scale distributed prediction-error encoding in the human brain directly predicts how sensory representations reorganize through predictive learning. I will then turn to PredNet, a popular predictive coding inspired deep network that has been widely used to model real-world biological vision systems. Using dynamic stimuli generated with our Spatiotemporal Style Transfer algorithm, we demonstrate that PredNet relies primarily on low-level spatiotemporal structure and remains insensitive to high-level content, revealing limits in its generalization capacity. Finally, I will discuss new recurrent vision models that integrate top-down feedback connections with intrinsic neural variability, uncovering a dual mechanism for robust sensory coding in which neural variability decorrelates unit responses, while top-down feedback stabilizes network dynamics. Together, these results outline how prediction error signaling and top-down feedback pathways shape adaptive sensory processing in biological and artificial systems.

Topics

Neuroscience AI-IntegrationPredNetdeep learningdeep neural networkshuman neurosciencemachine learningneural computationneural variabilityprediction errorspredictive processingsensory inputspatiotemporal structuretop-down feedback

About the Speaker

Dr. Antonino Greco

Hertie Institute for Clinical Brain Research, Germany

Contact & Resources

No additional contact information available

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