Bulletin of the American Physical Society
APS March Meeting 2020
Volume 65, Number 1
Monday–Friday, March 2–6, 2020; Denver, Colorado
Session M71: Poster Session III (11:15am - 2:15pm)
11:15 AM,
Wednesday, March 4, 2020
Room: Exhibit Hall C/D
Abstract: M71.00351 : System identification in the brain: inferring ARMA dynamics from sensory data
View Presentation Abstract
Presenter:
Tiberiu Tesileanu
(CCB, Flatiron Institute)
Authors:
Tiberiu Tesileanu
(CCB, Flatiron Institute)
Samaneh Nasiri
(Emory University)
Anirvan M Sengupta
(Rutgers University)
Dmitri Chklovskii
(CCB, Flatiron Institute)
Here we present biologically plausible neural networks for performing system identification from time series data. The starting point is the mutual information between the past and the future, which in the case of one-dimensional Gaussian signals is equal to a kind of cepstral norm. By searching for the autoregressive moving-average (ARMA) filter that minimizes this mutual information, we develop algorithms that learn an inverse model to the dynamical system generating the data. Employing update rules based on Givens rotations we ensure that our algorithms work online, an essential ingredient to maintain biological plausibility. We also look for implementations that rely on local learning rules, such that synaptic updates only require information that is available to them from pre- and post- synaptic activity.
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