ePoster

A STRUCTURED MODEL SPACE FOR NEURAL POPULATION DYNAMICS IN EEG: FROM CANONICAL MODELS TO GRAMMAR-BASED DISCOVERY

Nina Omejcand 3 co-authors

Jozef Stefan Institute

FENS Forum 2026 (2026)
Barcelona, Spain
Board PS04-08PM-638

Presentation

Date TBA

Board: PS04-08PM-638

Poster preview

A STRUCTURED MODEL SPACE FOR NEURAL POPULATION DYNAMICS IN EEG: FROM CANONICAL MODELS TO GRAMMAR-BASED DISCOVERY poster preview

Event Information

Poster Board

PS04-08PM-638

Abstract

Neural population models are central to interpreting M/EEG signals, yet model choice remains largely ad hoc. The field lacks a principled way to relate, structure, and extend them.
We surveyed seventeen widely used neural mass and phenomenological population models (hereafter, canonical models) and compared them by equation structure and complexity. In parallel, we performed a functional analysis by fitting these single-node models to empirical resting-state and SSVEP EEG independent component time series. We then compared their spectral fits under a unified optimization and evaluation framework. Further, we decomposed the models into shared dynamical building blocks describing population dynamics and their interactions. Leveraging this decomposition, we constructed a domain-informed probabilistic grammar of model components, enabling systematic generation of new candidate models.
Structural analysis revealed six distinct clusters of canonical models that cut across phenomenological versus neural mass distinction (Figure 1A). Model fitting demonstrated systematic differences in how the models reproduce empirical EEG power spectra (Figure 1B), establishing a functional reference for the model space. Across both analyses, phenomenological models (Montbriό) tended to occupy the simplest regions of the model space and achieved the strongest spectral fits. Sampling from the grammar, shown in simplified form in Figure 1C, reproduces known canonical models and generates novel candidates that occupy intermediate and previously unexplored regions of the model space, positioned relative to established clusters by structural distance and complexity (Figure 1D).
Together, our work introduces an EEG-grounded space for principled, comparative, and data-driven exploration of neural population dynamics models.

Figure 1. Organizing the neural population model space. (A) Structural relationships between canonical models reveal distinct model families. (B) Representative spectral fits illustrate systematic differences in EEG reproduction across families. (C) Simplified probabilistic grammar that generates the new candidate population models.(D) Grammar-generated models populate intermediate and novel regions of the model space.

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