

Modeling Human Cognition with RNNs and Curriculum Learning, w/ Kanaka Rajan - #524
15 snips Oct 4, 2021
Kanaka Rajan, an assistant professor at the Icahn School of Medicine, specializes in merging biology with AI. She discusses her innovative 'lego models' of the brain designed to emulate cognitive functions and memory processes. The conversation dives into the potential of recurrent neural networks (RNNs) in simulating complex learning. Rajan also explains curriculum learning, where tasks gradually increase in complexity, and reflects on the relationship between biological cognition and AI, touching on the challenges of understanding memory and its implications for mental health.
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From Experiments to Computation
- Kanaka Rajan initially intended to be an experimental neuroscientist but found designing experiments challenging.
- She transitioned to computational neuroscience, a field better suited to her skills.
Lego Models of the Brain
- Rajan builds simplified "Lego models" of the brain to mimic biological functions.
- She reverse-engineers these models to understand the brain's operating principles.
Bridging Timescales in the Brain
- Neuroscience grapples with bridging the gap between fast neuronal timescales and long-term behaviors like memory.
- Rajan uses RNNs, with their long-range dynamics, to model this interplay of timescales.