@ithobani.bsky.social
15 followers 81 following 11 posts
Neuroscience postdoc at Stanford and Enigma (enigmaproject.ai), previously philosophy of neuroscience PhD. Building large-scale brain models using deep learning.
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ithobani.bsky.social
1/X Our new method, the Inter-Animal Transform Class (IATC), is a principled way to compare neural network models to the brain. It's the first to ensure both accurate brain activity predictions and specific identification of neural mechanisms.

Preprint: arxiv.org/abs/2510.02523
ithobani.bsky.social
10/X Overall, our work provides a principled framework for evaluating brain models, improving on previous approaches and contextualizing prior findings. A huge thanks to my incredible co-authors!
Javier Sagstuy-Brena @anayebi.bsky.social @jacob-prince.bsky.social Rosa Cao @dyamins.bsky.social
ithobani.bsky.social
9/X There’s a lot more to this in the paper, including estimating the IATC on real neural data - a mouse dataset from the Allen Institute and a human fMRI dataset.
ithobani.bsky.social
8/X In fact, while linear regression has been thought to be overly powerful, our work suggests that a *non-linear* mapping is needed to capture the actual relationships between brains in a population.
ithobani.bsky.social
7/X One of the striking takeaways of this work is that stricter mapping methods aren’t necessarily better at mechanism identification, and in fact often perform worse, because they aren’t able to align responses across subjects (as required for the IATC).
ithobani.bsky.social
6/X Our IATC estimate achieves both high accuracy in predicting neural activity and high specificity in mechanism identification. This shows there is no tradeoff between the engineering goal of predicting brain activity and the scientific goal of identifying neural mechanisms.
ithobani.bsky.social
5/X So what is the IATC for the brain? In a simulated setting, we found that the neuronal activation function causes subjects’ activation patterns to diverge at each layer before re-converging. Correctly accounting for this “Zippering Effect” leads to a better IATC estimate.
ithobani.bsky.social
4/X We propose the Inter-Animal Transform Class (IATC)—the strictest set of functions needed to map neural responses accurately between any two actual brains. We can use the IATC to align models to brains, effectively asking if a model can masquerade as a typical subject.
ithobani.bsky.social
3/X On the other hand, more flexible methods like linear regression, while decent for prediction, seem like they may be too flexible to identify the actual neural mechanism. So what's the right "sweet spot" between strict and flexible?
ithobani.bsky.social
2/X A key challenge is that individual brains are all somewhat different. So strict methods that match individual neurons struggle to make accurate predictions when mapping a single model to typical brains.
ithobani.bsky.social
1/X Our new method, the Inter-Animal Transform Class (IATC), is a principled way to compare neural network models to the brain. It's the first to ensure both accurate brain activity predictions and specific identification of neural mechanisms.

Preprint: arxiv.org/abs/2510.02523