A Bayesian model for identifying hierarchically organised states in neural population activity
Putzky, Patrick, Franzen, Florian, Bassetto, Giacomo, Macke, Jakob H.
–Neural Information Processing Systems
Neural population activity in cortical circuits is not solely driven by external inputs, but is also modulated by endogenous states which vary on multiple time-scales. To understand information processing in cortical circuits, we need to understand the statistical structure of internal states and their interaction with sensory inputs. Here, we present a statistical model for extracting hierarchically organised neural population states from multi-channel recordings of neural spiking activity. Population states are modelled using a hidden Markov decision tree with state-dependent tuning parameters and a generalised linear observation model. We present a variational Bayesian inference algorithm for estimating the posterior distribution over parameters from neural population recordings.
Neural Information Processing Systems
Feb-14-2020, 11:43:24 GMT