Title :
Synergistic Coding by Cortical Neural Ensembles
Author :
Aghagolzadeh, Mehdi ; Eldawlatly, Seif ; Oweiss, Karim
Author_Institution :
Dept. of Electr. & Comput. Eng., Michigan State Univ., East Lansing, MI, USA
Abstract :
An essential step towards understanding how the brain orchestrates information processing at the cellular and population levels is to simultaneously observe the spiking activity of cortical neurons that mediate perception, learning, and motor processing. In this paper, we formulate an information theoretic approach to determine whether cooperation among neurons may constitute a governing mechanism of information processing when encoding external covariates. Specifically, we show that conditional independence between neuronal outputs may not provide an optimal encoding strategy when the firing probability of a neuron depends on the history of firing of other neurons connected to it. Rather, cooperation among neurons can provide a ¿message-passing¿ mechanism that preserves most of the information in the covariates under specific constraints governing their connectivity structure. Using a biologically plausible statistical learning model, we demonstrate the performance of the proposed approach in synergistically encoding a motor task using a subset of neurons drawn randomly from a large population. We demonstrate its superiority in approximating the joint density of the population from limited data compared to a statistically independent model and a pairwise maximum entropy (MaxEnt) model.
Keywords :
brain; encoding; maximum entropy methods; neuromuscular stimulation; physiological models; brain; cortical neural ensembles; firing probability; information theory; message passing; pairwise maximum entropy; spiking activity; statistical learning model; synergistic coding; Biological information theory; Biological system modeling; Encoding; Entropy; Fires; History; Information processing; Neurons; Neuroscience; Probability; Cortical networks; graph theory; maximum entropy (MaxEnt); minimum entropy distance (MinED); neural coding; spike trains;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2009.2037057