A foundation model of vision, audition, and language for in-silico neuroscience
About
Cognitive neuroscience is fragmented into specialized models, each tailored to specific experimental paradigms, hence preventing a unified model of cognition in the human brain. Here, we introduce TRIBE v2, a tri-modal (video, audio and language) foundation model capable of predicting human brain activity in a variety of naturalistic and experimental conditions. Leveraging a unified dataset of over 1,000 hours of fMRI across 720 subjects, we demonstrate that our model accurately predicts high-resolution brain responses for novel stimuli, tasks and subjects, superseding traditional linear encoding models, delivering several-fold improvements in accuracy. Critically, TRIBE v2 enables in silico experimentation: tested on seminal visual and neuro-linguistic paradigms, it recovers a variety of results established by decades of empirical research. Finally, by extracting interpretable latent features, TRIBE v2 reveals the fine-grained topography of multisensory integration. These results establish artificial intelligence as a unifying framework for exploring the functional organization of the human brain.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Brain response prediction | OOD benchmark | Mean Pearson r0.116 | 13 | |
| Brain response prediction | Friends In-distribution s07 (test) | Mean Pearson r0.187 | 13 | |
| Brain response prediction | Friends s06 (val) | Mean Pearson r0.195 | 7 |