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Characteristics of sequential activity in networks with temporally asymmetric Hebbian learning

Maxwell Gillett, Ulises Pereira, Nicolas Brunel

2020Proceedings of the National Academy of Sciences63 citationsDOIOpen Access PDF

Abstract

Sequential activity has been observed in multiple neuronal circuits across species, neural structures, and behaviors. It has been hypothesized that sequences could arise from learning processes. However, it is still unclear whether biologically plausible synaptic plasticity rules can organize neuronal activity to form sequences whose statistics match experimental observations. Here, we investigate temporally asymmetric Hebbian rules in sparsely connected recurrent rate networks and develop a theory of the transient sequential activity observed after learning. These rules transform a sequence of random input patterns into synaptic weight updates. After learning, recalled sequential activity is reflected in the transient correlation of network activity with each of the stored input patterns. Using mean-field theory, we derive a low-dimensional description of the network dynamics and compute the storage capacity of these networks. Multiple temporal characteristics of the recalled sequential activity are consistent with experimental observations. We find that the degree of sparseness of the recalled sequences can be controlled by nonlinearities in the learning rule. Furthermore, sequences maintain robust decoding, but display highly labile dynamics, when synaptic connectivity is continuously modified due to noise or storage of other patterns, similar to recent observations in hippocampus and parietal cortex. Finally, we demonstrate that our results also hold in recurrent networks of spiking neurons with separate excitatory and inhibitory populations.

Topics & Concepts

Hebbian theoryComputer scienceLearning ruleSequence (biology)Artificial intelligenceFeature (linguistics)Artificial neural networkPattern recognition (psychology)BiologyLinguisticsPhilosophyGeneticsNeural dynamics and brain functionAdvanced Memory and Neural ComputingNeural Networks and Applications