"From Spiking Predictive Coding to Learning Abstract Object Representation"
- Date: Jun 12, 2025
- Time: 04:00 PM (Local Time Germany)
- Speaker: Prof. Dr. Jochen Triesch
- Frankfurt Institute for Advanced Studies
- Location: Max-Planck-Ring 8
- Room: Room 203 + Zoom: https://eu02web.zoom.us/s/68910614241
- Host: Prof. Dr. Li Zhaoping
- Contact: maria.pavlovic@tuebingen.mpg.de

In a first part of the talk, I will present Predictive Coding Light (PCL), a novel unsupervised learning architecture for spiking neural networks. In contrast to conventional predictive coding approaches, which only transmit prediction errors to higher processing stages, PCL learns inhibitory lateral and top-down connectivity to suppress the most predictable spikes and passes a compressed representation of the input to higher processing stages. We show that PCL reproduces a range of biological findings and exhibits a favorable tradeoff between energy consumption and downstream classification performance on challenging benchmarks.
A second part of the talk will feature our lab’s efforts to explain how infants and toddlers might learn abstract object representations without supervision. I will present deep learning models that exploit the temporal and multimodal structure of their sensory inputs to learn representations of individual objects, object categories, or abstract super-categories such as „kitchen object“ in a fully unsupervised fashion. These models offer a parsimonious account of how abstract semantic knowledge may be rooted in children's embodied first-person experiences.
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