Fun! 🎉
Don’t forget to try our interactive widget on the project website. Test some of the encoding models in the paper and visualize brain predictivity right in your browser 🤗🧠
@neurotaha.bsky.social
Language processing in Brains vs Machines PhD student Georgia Tech https://tahabinhuraib.github.io/
Fun! 🎉
Don’t forget to try our interactive widget on the project website. Test some of the encoding models in the paper and visualize brain predictivity right in your browser 🤗🧠
This project wouldn’t have happened without Ruimin Gao(@ruimingao.bsky.social) and Anya Ivanova(@neuranna.bsky.social)
A special thank you to Anya, my advisor, mentor, and constant source of encouragement. Your support means the world to me, and I’m so grateful to be learning from you
✨ Takeaway:
LITcoder lowers barriers to reproducible, comparable encoding models and provides infrastructure for methodological rigor.
We also highlight pitfalls & controls:
🚩 Shuffled folds inflate scores due to autocorrelation
✅ Contiguous + trimmed folds give realistic benchmarks
⚠️ Head motion reliably reduces predictivity
📊 Replicating past results
1️⃣ Language models outperform baselines, embeddings, and speech models in predicting the language network
2️⃣ Larger models yield higher predictivity
3️⃣ Downsampling and FIR choices substantially shape results
We showcase LITcoder on 3 story-listening fMRI datasets:
1️⃣ Narratives
2️⃣ Little Prince
3️⃣ LeBel
Comparing features, regions, and temporal modeling strategies.
🛑 Currently, we support language stimuli
But the framework is extensible to other modalities(Video coming soon!)
The library is composed of four main modules:
1️⃣ AssemblyGenerator
2️⃣ FeatureExtractor
3️⃣ Downsampler
4️⃣ Mapping
Why this matters:
Encoding models link AI representations to brain activity, but…
1. Pipelines are often ad hoc
2. Methodological choices vary
3. Results are hard to compare & reproduce
LITcoder fixes this with a general-purpose, modular backend.
🚨 Paper alert:
To appear in the DBM Neurips Workshop
LITcoder: A General-Purpose Library for Building and Comparing Encoding Models
📄 arxiv: arxiv.org/abs/2509.091...
🔗 project: litcoder-brain.github.io
Two computational neuroscientists meet in person after years of remote work and friendship following meeting at the Neuromatch Academy summer school
The Georgia Tech campus is very pretty
The postdoc according to Dickens, by Bob Wilson
Just back from an awesome visit to Georgia Tech to speak at their Computational Cognition Postdoc Day. Very impressed by their community. And really happy to finally have met my good friend and student @neurotaha.bsky.social in person after knowing each other remotely for over 3 years!
05.05.2025 15:01 — 👍 3 🔁 1 💬 0 📌 0🚨 New Preprint!!
LLMs trained on next-word prediction (NWP) show high alignment with brain recordings. But what drives this alignment—linguistic structure or world knowledge? And how does this alignment evolve during training? Our new paper explores these questions. 👇🧵