Probabilistic Prediction of Neural Dynamics via Autoregressive Flow Matching
Nicole Rogalla, Yuzhen Qin, Mario Senden, Ahmed El-Gazzar, Marcel van Gerven
TLDR
Introduces Autoregressive Flow Matching (AFM) for probabilistic forecasting of neural dynamics, outperforming baselines on fMRI data.
Key contributions
- Introduces Autoregressive Flow Matching (AFM) for generative, probabilistic neural activity forecasting.
- Models future neural states conditioned on past dynamics and concurrent multimodal sensory input.
- Significantly outperforms non-autoregressive flow matching and GLM baselines on fMRI datasets.
- Demonstrates that past BOLD dynamics are crucial for accurate short-term neural prediction.
Why it matters
This paper introduces a novel autoregressive flow matching framework for predicting neural activity. It significantly improves forecasting accuracy on fMRI data by leveraging past neural dynamics. This advancement is crucial for understanding brain function and developing future closed-loop neurotechnologies.
Original Abstract
Forecasting neural activity in response to naturalistic stimuli remains a key challenge for understanding brain dynamics and enabling downstream neurotechnological applications. Here, we introduce a generative forecasting framework for modeling neural dynamics based on autoregressive flow matching (AFM). Building on recent advances in transport-based generative modeling, our approach probabilistically predicts neural responses at scale from multimodal sensory input. Specifically, we learn the conditional distribution of future neural activity given past neural dynamics and concurrent sensory input, explicitly modeling neural activity as a temporally evolving process in which future states depend on recent neural history. We evaluate our framework on the Algonauts project 2025 challenge functional magnetic resonance imaging dataset using subject-specific models. AFM significantly outperforms both a non-autoregressive flow-matching baseline and the official challenge general linear model baseline in predicting short-term parcel-wise blood oxygenation level-dependent (BOLD) activity, demonstrating improved generalization and widespread cortical prediction performance. Ablation analyses show that access to past BOLD dynamics is a dominant driver of performance, while autoregressive factorization yields consistent, modest gains under short-horizon, context-rich conditions. Together, these findings position autoregressive flow-based generative modeling as an effective approach for short-term probabilistic forecasting of neural dynamics with promising applications in closed-loop neurotechnology.
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