Excited to share that our work โSimultaneous detection and estimation in olfactory sensingโ with @mattyizhenghe.bsky.social, @neurovenki.bsky.social , @cpehlevan.bsky.social, @jzv.bsky.social and @paulmasset.bsky.social has been launched!
1/7
04.11.2025 05:25 โ ๐ 10 ๐ 3 ๐ฌ 1 ๐ 1
The framework thus offers a path towards circuit modelsโfor olfactory sensing and beyondโthat both perform well in naturalistic environments and make experimentally-testable predictions for neural response dynamics.
04.11.2025 16:20 โ ๐ 1 ๐ 0 ๐ฌ 0 ๐ 0
Overall, our model separately infers odor concentration and presence, achieving faster and more robust inference. At the same time, our model is itself a recurrent circuit that demonstrates rich cell-type-specific neural dynamics resembling those that have been observed in the OB.
04.11.2025 16:20 โ ๐ 1 ๐ 0 ๐ฌ 1 ๐ 0
Two simulations were developed: one quantifying the modelโs inference ability on a timescale of hundreds of milliseconds, while the other examining how the required number of OSNs scales with the size of the potential odorant dictionary.
04.11.2025 16:20 โ ๐ 1 ๐ 0 ๐ฌ 1 ๐ 0
Lastly, we evaluate how our model scales with increasing network size and odor dimensionality and how its performance varies with different affinity matrices and priors.
04.11.2025 16:20 โ ๐ 1 ๐ 0 ๐ฌ 1 ๐ 0
Next, we mapped the modelโs inference dynamics on the circuit architecture of the olfactory bulb. Notably, SDEO naturally gives rise to two classes of projection neurons resembling mitral and tufted cells and providing experimentally testable predictions.
04.11.2025 16:20 โ ๐ 1 ๐ 0 ๐ฌ 1 ๐ 0
We then built a biologically plausible recurrent neural network implementing these sampling dynamics. Through simulations, we demonstrated that our SDEO accurately tracks the presence and concentration of changing odorants.
04.11.2025 16:20 โ ๐ 2 ๐ 0 ๐ฌ 1 ๐ 0
MLD performs sampling in an unconstrained dual space and projects samples back to the constrained primal space via an invertible mirror map, therefore obtaining samples from a constrained distribution.
04.11.2025 16:20 โ ๐ 2 ๐ 0 ๐ฌ 1 ๐ 0
To enable rapid inference of binary odor presence in a biologically plausible recurrent network, our model leverages the framework of Mirror Langevin Dynamics (MLD).
04.11.2025 16:20 โ ๐ 1 ๐ 0 ๐ฌ 1 ๐ 0
We proposed โSDEOโ, a model for olfactory compressed sensing inspired by simultaneous localization and mapping (SLAM) algorithms in navigation: the set of odors that are present in a given scene, and the concentration of those present odors, are inferred separately.
04.11.2025 16:20 โ ๐ 1 ๐ 0 ๐ฌ 1 ๐ 0
Thrilled to share our new preprint, now on bioRxiv!! Huge thanks to all collaborators!
For those interested, hereโs a bit more about the work:
04.11.2025 16:20 โ ๐ 2 ๐ 0 ๐ฌ 1 ๐ 0
First paper from the lab!
We propose a model that separates estimation of odor concentration and presence and map it on olfactory bulb circuits
Led by @chenjiang01.bsky.social and @mattyizhenghe.bsky.social joint work with @jzv.bsky.social and with @neurovenki.bsky.social @cpehlevan.bsky.social
04.11.2025 15:40 โ ๐ 34 ๐ 13 ๐ฌ 2 ๐ 1
The framework thus offers a path towards circuit modelsโfor olfactory sensing and beyondโthat both perform well in naturalistic environments and make experimentally-testable predictions for neural response dynamics.
7/7 b
04.11.2025 05:25 โ ๐ 2 ๐ 0 ๐ฌ 0 ๐ 0
Our model, which separately infers odor concentration and presence, performs faster and more robust inference of odorants. At the same time, our model is itself a recurrent circuit that demonstrates rich cell-type-specific neural dynamics resembling those that have been observed in the OB.
7/7 a
04.11.2025 05:25 โ ๐ 3 ๐ 0 ๐ฌ 1 ๐ 0
Two simulations were developed: one quantifying the modelโs inference ability on a timescale of hundreds of milliseconds, while the other examining how the required number of OSNs scales with the size of the potential odorant dictionary.
6/7 b
04.11.2025 05:25 โ ๐ 2 ๐ 0 ๐ฌ 1 ๐ 0
Lastly, we evaluate how our model scales with increasing network size and odor dimensionality and how its performance varies with different affinity matrices and priors.
6/7 a
04.11.2025 05:25 โ ๐ 2 ๐ 0 ๐ฌ 1 ๐ 0
Next, we mapped the modelโs inference dynamics on the circuit architecture of the olfactory bulb. Notably, SDEO naturally gives rise to two classes of projection neurons resembling mitral and tufted cells and providing experimentally testable predictions.
5/7
04.11.2025 05:25 โ ๐ 2 ๐ 0 ๐ฌ 1 ๐ 0
We then built a biologically plausible recurrent neural network implementing these sampling dynamics. Through simulations, we demonstrated that our SDEO accurately tracks the presence and concentration of changing odorants.
4/7
04.11.2025 05:25 โ ๐ 2 ๐ 0 ๐ฌ 1 ๐ 0
MLD performs sampling in an unconstrained dual space and projects samples back to the constrained primal space via an invertible mirror map, therefore obtaining samples from a constrained distribution.
3/7 b
04.11.2025 05:25 โ ๐ 2 ๐ 0 ๐ฌ 1 ๐ 0
To enable rapid inference of binary odor presence in a biologically plausible recurrent network, our model leverages the framework of Mirror Langevin Dynamics (MLD).
3/7 a
04.11.2025 05:25 โ ๐ 2 ๐ 0 ๐ฌ 1 ๐ 0
We proposed โSDEOโ, a model for olfactory compressed sensing inspired by simultaneous localization and mapping (SLAM) algorithms in navigation: the set of odors that are present in a given scene, and the concentration of those present odors, are inferred separately.
2/7
04.11.2025 05:25 โ ๐ 2 ๐ 0 ๐ฌ 1 ๐ 0
Excited to share that our work โSimultaneous detection and estimation in olfactory sensingโ with @mattyizhenghe.bsky.social, @neurovenki.bsky.social , @cpehlevan.bsky.social, @jzv.bsky.social and @paulmasset.bsky.social has been launched!
1/7
04.11.2025 05:25 โ ๐ 10 ๐ 3 ๐ฌ 1 ๐ 1
Simultaneous detection and estimation in olfactory sensing https://www.biorxiv.org/content/10.1101/2025.11.01.686013v1
03.11.2025 23:15 โ ๐ 15 ๐ 6 ๐ฌ 0 ๐ 2
Multi-timescale reinforcement learning in the brain - Nature
Individual dopaminergic neurons encode future rewards over distinct temporal horizons.
Our work with Pablo Tano, @hyunggoo-kim.bsky.social Athar Malik, Alexandre Pouget and @naoshigeuchida.bsky.social exploring how dopamine neurons could enable multi-timescale reinforcement learning in the brain is out in @nature.com
www.nature.com/articles/s41...
04.06.2025 18:11 โ ๐ 111 ๐ 46 ๐ฌ 8 ๐ 2
Ph.D. Student Mila / McGill. Machine learning and Neuroscience, Memory and Hippocampus
MSc. @mila-quebec.bsky.social and @mcgill.ca in the LiNC lab
Fixating on multi-agent RL, Neuro-AI and decisions
ฤka ฤ-akimiht
https://danemalenfant.com/
Husband, dad, computational neuroscientist, @mcgillu.bsky.social and Mila
Studying cognition in humans and machines https://scholar.google.com/citations?user=WCmrJoQAAAAJ&hl=en
Theoretical Neuroscience | Physics PhD candidate at the University of Ottawa ๐จ๐ฆ | Interested in how neural networks encode information and compute | BJJ hobbyist
comp neuro, neural manifolds, neuroAI, physics of learning
assistant professor @ harvard (physics, center for brain science, kempner institute)
proj leader @ Flatiron Institute
https://sites.google.com/site/sueyeonchung/
Computational neuroscience, neuroML, natural behavior. I charge more for miracles. PI @ pearsonlab.github.io. @dukemedschool.bsky.social.
scientist.
tollkuhnlab.org
Principal Researcher @ Microsoft Research.
AI, RL, cog neuro, philosophy.
www.momen-nejad.org
Data science | Neuroscience
Control Systems Engineer. Visiting fellow with NIMH.
Computational Neuroscience at ENS Paris
PhD Candidate in NeuroAI @ McGill | Mila
MSc Student in NeuroAI @ McGill & Mila
w/ Blake Richards & Shahab Bakhtiari
PhD student at Mila โ Quebec AI Institute and University of Montreal. Neural-AI / Brain-compute interface.
PhD student with @glajoie.bsky.social at Mila โ Quebec AI Institute and Universitรฉ de Montrรฉal. Computational Neuroscience + Deep Learning. Homebrew maintainer, open source enthusiast. Website: https://nandahkrishna.com
Postdoctoral researcher at the University of Montreal and Mila - Quebec AI Institute. Amateur writer.
Neuroscience/ML PhD @UCL
โข NeuroAI, navigation, hippocampus, ...
โข Open-source software tools for science (https://github.com/RatInABox-Lab/RatInABox)
โข Co-organiser of TReND CaMinA summer school
๐๐ for a postdoc positionโฆ
PhD Student - Galliano Lab, University of Cambridge
Plasticity, Olfaction, Open Science
Lover of surrealist art, film, and associated activities
Theor/Comp Neuroscientist (postdoc)
Prev @TU Munich
Stochastic&nonlin. dynamics @TU Berlin&@MPIDS
Learning dynamics, plasticity&geometry of representations
https://dimitra-maoutsa.github.io
https://dimitra-maoutsa.github.io/M-Dims-Blog
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