Variational log-Gaussian point-process methods for grid cells.
Michael Everett RulePrannoy Chaudhuri-VayalambroneMarino KrstulovicMarius BauzaJulija KrupicTimothy O'LearyPublished in: Hippocampus (2023)
We present practical solutions to applying Gaussian-process (GP) methods to calculate spatial statistics for grid cells in large environments. GPs are a data efficient approach to inferring neural tuning as a function of time, space, and other variables. We discuss how to design appropriate kernels for grid cells, and show that a variational Bayesian approach to log-Gaussian Poisson models can be calculated quickly. This class of models has closed-form expressions for the evidence lower-bound, and can be estimated rapidly for certain parameterizations of the posterior covariance. We provide an implementation that operates in a low-rank spatial frequency subspace for further acceleration, and demonstrate these methods on experimental data.