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BI 110 Catherine Stinson and Jessica Thompson: Neuro-AI Explanation

BI 110 Catherine Stinson and Jessica Thompson: Neuro-AI Explanation

FromBrain Inspired


BI 110 Catherine Stinson and Jessica Thompson: Neuro-AI Explanation

FromBrain Inspired

ratings:
Length:
85 minutes
Released:
Jul 6, 2021
Format:
Podcast episode

Description

Catherine, Jess, and I use some of the ideas from their recent papers to discuss how different types of explanations in neuroscience and AI could be unified into explanations of intelligence, natural or artificial. Catherine has written about how models are related to the target system they are built to explain. She suggests both the model and the target system should be considered as instantiations of a specific kind of phenomenon, and explanation is a product of relating the model and the target system to that specific aspect they both share. Jess has suggested we shift our focus of explanation from objects - like a brain area or a deep learning model - to the shared class of phenomenon performed by those objects. Doing so may help bridge the gap between the different forms of explanation currently used in neuroscience and AI. We also discuss Henk de Regt's conception of scientific understanding and its relation to explanation (they're different!), and plenty more.





Catherine's website.Jessica's blog.Twitter: Jess: @tsonj.Related papersFrom Implausible Artificial Neurons to Idealized Cognitive Models: Rebooting Philosophy of Artificial Intelligence - CatherineForms of explanation and understanding for neuroscience and artificial intelligence - JessJess is a postdoc in Chris Summerfield's lab, and Chris and San Gershman were on a recent episode.Understanding Scientific Understanding by Henk de Regt.



Timestamps:
0:00 - Intro
11:11 - Background and approaches
27:00 - Understanding distinct from explanation
36:00 - Explanations as programs (early explanation)
40:42 - Explaining classes of phenomena
52:05 - Constitutive (neuro) vs. etiological (AI) explanations
1:04:04 - Do nonphysical objects count for explanation?
1:10:51 - Advice for early philosopher/scientists
Released:
Jul 6, 2021
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.