Desiderata for Normative Models of Synaptic Plasticity
- PMID: 38776950
- DOI: 10.1162/neco_a_01671
Desiderata for Normative Models of Synaptic Plasticity
Abstract
Normative models of synaptic plasticity use computational rationales to arrive at predictions of behavioral and network-level adaptive phenomena. In recent years, there has been an explosion of theoretical work in this realm, but experimental confirmation remains limited. In this review, we organize work on normative plasticity models in terms of a set of desiderata that, when satisfied, are designed to ensure that a given model demonstrates a clear link between plasticity and adaptive behavior, is consistent with known biological evidence about neural plasticity and yields specific testable predictions. As a prototype, we include a detailed analysis of the REINFORCE algorithm. We also discuss how new models have begun to improve on the identified criteria and suggest avenues for further development. Overall, we provide a conceptual guide to help develop neural learning theories that are precise, powerful, and experimentally testable.
© 2024 Massachusetts Institute of Technology.
Update of
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Desiderata for normative models of synaptic plasticity.ArXiv [Preprint]. 2023 Aug 9:arXiv:2308.04988v1. ArXiv. 2023. Update in: Neural Comput. 2024 Jun 7;36(7):1245-1285. doi: 10.1162/neco_a_01671. PMID: 37608931 Free PMC article. Updated. Preprint.
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