TY - CONF
AU - Bouss, Peter
AU - Nestler, Sandra
AU - Fischer, Kirsten
AU - Merger, Claudia Lioba
AU - Rene, Alexandre
AU - Helias, Moritz
TI - Employing normalizing flows to examine neural manifold characteristics and curvatures
M1 - FZJ-2025-02376
PY - 2025
AB - Despite the vast number of active neurons, neuronal population activity supposedly lies on low-dimensional manifolds (Gallego et al., 2017). To learn the statistics of neural activity, we use Normalizing Flows (NFs) (Dinh et al., 2014). These neural networks are trained to estimate the probability distribution by learning an invertible map to a latent distribution.We adjust NF’s training objectives to distinguish between relevant and noise dimensions, by using a nested dropout procedure in the latent space (Bekasov & Murray, 2020). An approximation of the network for each mixture component as a quadratic mapping enables us to calculate the Riemannian curvature tensors of the neural manifold. We focus mainly on the directions in the tangent space, in which the sectional curvature shows local extrema.Finally, we apply the method to electrophysiological recordings of the visual cortex in macaques (Chen et al., 2022). We show that manifolds deviate significantly from being flat. Analyzing the curvature of the manifolds yields insights into the regimes where neuron groups interact in a non-linear manner.
T2 - DPG Spring Meeting of the Condensed Matter Section
CY - 16 Mar 2025 - 21 Mar 2025, Regensburg (Germany)
Y2 - 16 Mar 2025 - 21 Mar 2025
M2 - Regensburg, Germany
LB - PUB:(DE-HGF)6
UR - https://juser.fz-juelich.de/record/1041671
ER -