Deep Learning for Cognitive Neuroscience
This work addresses the grand challenge in cognitive neuroscience of understanding how cognition and perception are implemented in the brain, but it is incremental as it builds on existing deep learning tools and theories.
The paper explores how deep learning models, inspired by biological brains, can be used to test cognitive theories and understand the computational requirements of tasks at which brains excel, potentially advancing the understanding of cognition and perception in the brain.
Neural network models can now recognise images, understand text, translate languages, and play many human games at human or superhuman levels. These systems are highly abstracted, but are inspired by biological brains and use only biologically plausible computations. In the coming years, neural networks are likely to become less reliant on learning from massive labelled datasets, and more robust and generalisable in their task performance. From their successes and failures, we can learn about the computational requirements of the different tasks at which brains excel. Deep learning also provides the tools for testing cognitive theories. In order to test a theory, we need to realise the proposed information-processing system at scale, so as to be able to assess its feasibility and emergent behaviours. Deep learning allows us to scale up from principles and circuit models to end-to-end trainable models capable of performing complex tasks. There are many levels at which cognitive neuroscientists can use deep learning in their work, from inspiring theories to serving as full computational models. Ongoing advances in deep learning bring us closer to understanding how cognition and perception may be implemented in the brain -- the grand challenge at the core of cognitive neuroscience.