Discover this podcast and so much more

Podcasts are free to enjoy without a subscription. We also offer ebooks, audiobooks, and so much more for just $11.99/month.

BI 124 Peter Robin Hiesinger: The Self-Assembling Brain

BI 124 Peter Robin Hiesinger: The Self-Assembling Brain

FromBrain Inspired


BI 124 Peter Robin Hiesinger: The Self-Assembling Brain

FromBrain Inspired

ratings:
Length:
99 minutes
Released:
Jan 5, 2022
Format:
Podcast episode

Description

Support the show to get full episodes and join the Discord community.








Robin and I discuss many of the ideas in his book The Self-Assembling Brain: How Neural Networks Grow Smarter. The premise is that our DNA encodes an algorithmic growth process that unfolds information via time and energy, resulting in a connected neural network (our brains!) imbued with vast amounts of information from the "start". This contrasts with modern deep learning networks, which start with minimal initial information in their connectivity, and instead rely almost solely on learning to gain their function. Robin suggests we won't be able to create anything with close to human-like intelligence unless we build in an algorithmic growth process and an evolutionary selection process to create artificial networks.





Hiesinger Neurogenetics LaboratoryTwitter: @HiesingerLab.Book: The Self-Assembling Brain: How Neural Networks Grow Smarter





0:00 - Intro
3:01 - The Self-Assembling Brain
21:14 - Including growth in networks
27:52 - Information unfolding and algorithmic growth
31:27 - Cellular automata
40:43 - Learning as a continuum of growth
45:01 - Robustness, autonomous agents
49:11 - Metabolism vs. connectivity
58:00 - Feedback at all levels
1:05:32 - Generality vs. specificity
1:10:36 - Whole brain emulation
1:20:38 - Changing view of intelligence
1:26:34 - Popular and wrong vs. unknown and right
Released:
Jan 5, 2022
Format:
Podcast episode

Titles in the series (99)

Neuroscience and artificial intelligence work better together. Brain inspired is a celebration and exploration of the ideas driving our progress to understand intelligence. I interview experts about their work at the interface of neuroscience, artificial intelligence, cognitive science, philosophy, psychology, and more: the symbiosis of these overlapping fields, how they inform each other, where they differ, what the past brought us, and what the future brings. Topics include computational neuroscience, supervised machine learning, unsupervised learning, reinforcement learning, deep learning, convolutional and recurrent neural networks, decision-making science, AI agents, backpropagation, credit assignment, neuroengineering, neuromorphics, emergence, philosophy of mind, consciousness, general AI, spiking neural networks, data science, and a lot more. The podcast is not produced for a general audience. Instead, it aims to educate, challenge, inspire, and hopefully entertain those interested in learning more about neuroscience and AI.