Latent Graph Learning in Generative Models of Neural Signals
This addresses a key challenge in building generative models for systems neuroscience, though it appears incremental as it evaluates existing hypotheses rather than proposing a new method.
The paper tackled the problem of extracting interpretable latent graph representations from foundation models of neural signals, discovering modest alignment with ground-truth directed graphs and strong alignment in co-input graph representations.
Inferring temporal interaction graphs and higher-order structure from neural signals is a key problem in building generative models for systems neuroscience. Foundation models for large-scale neural data represent shared latent structures of neural signals. However, extracting interpretable latent graph representations in foundation models remains challenging and unsolved. Here we explore latent graph learning in generative models of neural signals. By testing against numerical simulations of neural circuits with known ground-truth connectivity, we evaluate several hypotheses for explaining learned model weights. We discover modest alignment between extracted network representations and the underlying directed graphs and strong alignment in the co-input graph representations. These findings motivate paths towards incorporating graph-based geometric constraints in the construction of large-scale foundation models for neural data.