Affiliation:
1. School of Engineering and Science, Jacobs University Bremen gGmbH, 28759 Bremen, Germany
2. Laboratoire Analyse Géométrie et Applications, Université Paris 13, Villetaneuse, France
Abstract
Identifying, formalizing, and combining biological mechanisms that implement known brain functions, such as prediction, is a main aspect of research in theoretical neuroscience. In this letter, the mechanisms of spike-timing-dependent plasticity and homeostatic plasticity, combined in an original mathematical formalism, are shown to shape recurrent neural networks into predictors. Following a rigorous mathematical treatment, we prove that they implement the online gradient descent of a distance between the network activity and its stimuli. The convergence to an equilibrium, where the network can spontaneously reproduce or predict its stimuli, does not suffer from bifurcation issues usually encountered in learning in recurrent neural networks.
Subject
Cognitive Neuroscience,Arts and Humanities (miscellaneous)
Cited by
12 articles.
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