Coherent noise enables probabilistic sequence replay in spiking neuronal networks
Younes Bouhadjar, Dirk J. Wouters, Markus Diesmann, Tom Tetzlaff

TL;DR
This paper demonstrates how correlated noise in spiking neuronal networks enables flexible probabilistic sequence replay, mimicking decision strategies observed in biological systems, and offers insights into adaptive decision-making mechanisms.
Contribution
The study introduces a novel extension to existing sequence prediction models, showing how correlated noise influences decision strategies in neuronal networks.
Findings
Correlated noise enables probabilistic sequence replay.
Different noise types lead to varied decision strategies.
Model replicates adaptive decision-making observed in animals.
Abstract
Animals rely on different decision strategies when faced with ambiguous or uncertain cues. Depending on the context, decisions may be biased towards events that were most frequently experienced in the past, or be more explorative. A particular type of decision making central to cognition is sequential memory recall in response to ambiguous cues. A previously developed spiking neuronal network implementation of sequence prediction and recall learns complex, high-order sequences in an unsupervised manner by local, biologically inspired plasticity rules. In response to an ambiguous cue, the model deterministically recalls the sequence shown most frequently during training. Here, we present an extension of the model enabling a range of different decision strategies. In this model, explorative behavior is generated by supplying neurons with noise. As the model relies on population encoding,…
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Taxonomy
TopicsNeural dynamics and brain function · Advanced Memory and Neural Computing · Neural Networks and Applications
