In preparation for our #CCN2023 @CogCompNeuro GAC next week, I’m going to do some polls here this week to take the temperature of the room. 🌡️

Very curious to see the range of answers so please pass it on 🔁🙏 and feel free to elaborate - we'll try to take any discussion into account at the workshop

📊🧵 #neuroscience #neurobuzz

https://gac.ccneuro.org/gacs-by-year/2023-gacs/2023-1

GACs - 2023-1

Reconciling the dichotomy between Sherringtonian and Hopfieldian views on neural computations Organizers & Speakers at CCN 2023: Dongyan Lin, McGill University Arna Ghosh, McGill University Jonathan Cornford, McGill University James Whittington, Stanford University Tatiana Engel, Princeton

First: cognition is best explained by a ___________ view?

(see: https://www.nature.com/articles/s41583-021-00448-6)

Sherringtonian
2.9%
Hopfieldian
54.3%
Neither
14.3%
Don’t get the difference
28.6%
Poll ended at .
Two views on the cognitive brain - Nature Reviews Neuroscience

Neuroscience can explain cognition by considering single neurons and their connections (a ‘Sherringtonian’ view) or by considering neural spaces constructed by populations of neurons (a ‘Hopfieldian’ view). In this Perspective, Barack and Krakauer argue that the Hopfieldian view has the conceptual resources to explain cognition more fully the Sherringtonian view.

Nature
The best explanations of cognitive phenomena will involve circuits made up of particular neuron to neuron connections realized by specific neurons with fixed biophysical identities and utilizing particular neurotransmitters to pass signals between them.
Agree
15.4%
Disagree
84.6%
Poll ended at .
The best explanations of cognitive phenomena will involve circuits made up of neuron to neuron connections realized by neurons with biophysical identities and utilizing neurotransmitters to pass signals between them.
Agree
29.6%
Disagree
70.4%
Poll ended at .
Cognitive phenomena are well-explained by computations performed by networks of nodes with weighted connections between them.
Agree
26.5%
Disagree
73.5%
Poll ended at .
The best explanations of cognitive phenomena will involve neural spaces that describe the massed activity of e.g. neural ensembles or brain regions, with a low-dimensional representational manifold embedded within them.
Agree
43.8%
Disagree
56.3%
Poll ended at .
Cognitive phenomena are well-explained by movement within representational spaces or transformations from one space to another.
Agree
62.5%
Disagree
37.5%
Poll ended at .
Explanations in terms of computations performed by networks of nodes with weighted connections and explanations in terms of representational spaces are
Complementary
86.2%
Competing
13.8%
Poll ended at .
An explanation for a cognitive phenomenon that appeals to the statistics of neural connections (e.g. low-dimensional connectivity structure) or their intrinsic properties (e.g. mixture of E and I cells) is
Sherringtonian
27.8%
Hopfieldian
33.3%
Either (depends on?…)
27.8%
Neither
11.1%
Poll ended at .
Explanations of cognitive phenomena in terms of neural manifolds can be causally tested without understanding their underlying mechanisms
Agree
56.5%
Disagree
43.5%
Poll ended at .
Neural manifolds are produced by circuit mechanisms
Agree
78.9%
Disagree
21.1%
Poll ended at .
Establishing connections between neural connectivity and low-dimensional representational manifolds is possible in _________ of the neural circuits that support cognition.
all
25%
an exemplary subset
33.3%
a too-simple subset
41.7%
none
0%
Poll ended at .
Unifying manifold and circuit approaches is important to causally test theories about the neural computations that underlie behavior.
Agree
54.2%
Disagree
45.8%
Poll ended at .

You may have noticed it's been "circuits day" around here - inspired by @engeltatiana,
@chrismlangdon, and @mgenk's review (https://pubmed.ncbi.nlm.nih.gov/37055616/). So how about a punchy one from their discussion? 📊🧵

Manifold and circuit approaches to cognition are inseparable

Agree
25%
Disagree
75%
Poll ended at .
A unifying perspective on neural manifolds and circuits for cognition - PubMed

Two different perspectives have informed efforts to explain the link between the brain and behaviour. One approach seeks to identify neural circuit elements that carry out specific functions, emphasizing connectivity between neurons as a substrate for neural computations. Another approach centres on …

PubMed
An explanation for a cognitive phenomenon that appeals to learning an unspecified neural circuit is
Sherringtonian
20%
Hopfieldian
30%
Either (depends on?...)
20%
Neither
30%
Poll ended at .
The best explanations of cognitive phenomena will involve accounts of how they are learned, developed, or evolved, without necessarily specifying their implementation.
Agree
52.9%
Disagree
47.1%
Poll ended at .
If learning to perform a cognitive task reliably produces a circuit in which neurons respond to single cognitive or task variables, this would support adopting a ________ view.
Sherringtonian
33.3%
Hopfieldian
11.1%
Either (depends on?...)
33.3%
Neither
22.2%
Poll ended at .
If learning to perform a cognitive task reliably produces a similar neural manifold, but possibly with different circuit implementations across networks, this would support adopting a ________ view.
Sherringtonian
16.7%
Hopfieldian
16.7%
Either (depends on?…)
33.3%
Neither
33.3%
Poll ended at .
If learning to perform a cognitive task produces circuits that perform similar cognitive operations using different neural manifolds, this would support adopting a ________ view.
Sherringtonian
0%
Hopfieldian
20%
Either (depends on?…)
60%
Neither
20%
Poll ended at .
If learning to perform a cognitive task reliably produces a similar neural manifold with similar circuit implementations across networks, this would support adopting a ________ view.
Sherringtonian
20%
Hopfieldian
20%
Either (depends on?…)
40%
Neither
20%
Poll ended at .

You maybe saw overlap today with @djcrw work w/ @behrenstimb, so let’s go with something directly re: https://arxiv.org/abs/2210.01768

If cells that respond to single cognitive variables naturally emerge in neural circuits, and are useful to support cognition, this would support adopting a ______ view.

Sherringtonian
50%
Hopfieldian
0%
Either (depends on?…)
50%
Neither
0%
Poll ended at .
Disentanglement with Biological Constraints: A Theory of Functional Cell Types

Neurons in the brain are often finely tuned for specific task variables. Moreover, such disentangled representations are highly sought after in machine learning. Here we mathematically prove that simple biological constraints on neurons, namely nonnegativity and energy efficiency in both activity and weights, promote such sought after disentangled representations by enforcing neurons to become selective for single factors of task variation. We demonstrate these constraints lead to disentanglement in a variety of tasks and architectures, including variational autoencoders. We also use this theory to explain why the brain partitions its cells into distinct cell types such as grid and object-vector cells, and also explain when the brain instead entangles representations in response to entangled task factors. Overall, this work provides a mathematical understanding of why single neurons in the brain often represent single human-interpretable factors, and steps towards an understanding task structure shapes the structure of brain representation.

arXiv.org
Due to the details of their implementation, some cognitive phenomena will be best-explained from a Hopfieldian view while others will be best-explained from a Sherringtonian one.
Agree
57.1%
Disagree (only one)
14.3%
Disagree (neither)
28.6%
Poll ended at .
The difference between the Sherringtonian and Hopfieldian views is simply a statement of how much mixed selectivity there is in cognitive circuits.
Agree
0%
Disagree
100%
Poll ended at .
The terms Sherringtonian and Hopfieldian refer to formally different approaches to data analysis or modeling.
Agree
42.9%
Disagree
57.1%
Poll ended at .
Both Sherrintonian and Hopfieldian explanations could (in theory) involve a neural manifold, but differ in their expectations of the relationship between that manifold and individual neurons.
✅ - Agree
100%
❌ - S can’t use manifold
0%
❌ - other difference
0%
Poll ended at .
The Sherringtonian and Hopfieldian views 1) reflect competing scientific theories, which 2) could be compared based on their correspondence to data or ability to make accurate predictions.
✅ - Agree
40%
✅❌ - Agree 1 only
0%
❌✅ - Agree 2 only
20%
❌ - Disagree
40%
Poll ended at .
The Sherringtonian and Hopfieldian views 1) reflect competing scientific theories, which 2) could be compared based on their internal coherence or coherence with other theories.
✅ - Agree
0%
✅❌ - Agree 1 only
25%
❌✅ - Agree 2 only
50%
❌ - Disagree
25%
Poll ended at .
The Sherringtonian and Hopfieldian views 1) reflect competing scientific theories, which 2) could be compared based on their ease of use by e.g. scientists, engineers, or medical professionals.
✅ - Agree
0%
✅❌ - Agree 1 only
66.7%
❌✅ - Agree 2 only
33.3%
❌ - Disagree
0%
Poll ended at .