πŸ“„
Paper

Constrained plasticity reserve as a natural way to control frequency and weights in spiking neural networks

by Oleg Nikitin ID: arxiv-paper--2103.08143

Biological neurons have adaptive nature and perform complex computations involving the filtering of redundant information. However, most common neural cell models, including biologically plausible, such as Hodgkin-Huxley or Izhikevich, do not possess predictive dynamics on a single-cell level. Moreo...

High Impact - Citations
2021 Year
ArXiv Venue
Top 19% FNI Rank
Paper Information Summary
Entity Passport
Registry ID arxiv-paper--2103.08143
Provider arxiv
πŸ“œ

Cite this paper

Academic & Research Attribution

BibTeX
@misc{arxiv_paper__2103.08143,
  author = {Oleg Nikitin},
  title = {Constrained plasticity reserve as a natural way to control frequency and weights in spiking neural networks Paper},
  year = {2026},
  howpublished = {\url{https://arxiv.org/abs/2103.08143v2}},
  note = {Accessed via Free2AITools Knowledge Fortress}
}
APA Style
Oleg Nikitin. (2026). Constrained plasticity reserve as a natural way to control frequency and weights in spiking neural networks [Paper]. Free2AITools. https://arxiv.org/abs/2103.08143v2

πŸ”¬Technical Deep Dive

Full Specifications [+]

βš–οΈ Free2AI Nexus Index

Methodology β†’ πŸ“˜ What is FNI?
0.0
Top 19% Overall Impact
πŸ”₯ Popularity (P) 0
πŸš€ Velocity (V) 0
πŸ›‘οΈ Credibility (C) 0
πŸ”§ Utility (U) 0
Nexus Verified Data

πŸ’¬ Why this score?

The Nexus Index for Constrained plasticity reserve as a natural way to control frequency and weights in spiking neural networks aggregates Popularity (P:0), Velocity (V:0), and Credibility (C:0). The Utility score (U:0) represents deployment readiness, context efficiency, and structural reliability within the Nexus ecosystem.

Data Verified πŸ• Last Updated: Not calculated
Free2AI Nexus Index | Fair Β· Transparent Β· Explainable | Full Methodology

πŸ“ Executive Summary

"Biological neurons have adaptive nature and perform complex computations involving the filtering of redundant information. However, most common neural cell models, including biologically plausible, such as Hodgkin-Huxley or Izhikevich, do not possess predictive dynamics on a single-cell level. Moreover, the modern rules of synaptic plasticity or interconnections weights adaptation also do not provide grounding for the ability of neurons to adapt to the ever-changing input signal intensity. Wh..."

❝ Cite Node

@article{Nikitin2021Constrained,
  title={Constrained plasticity reserve as a natural way to control frequency and weights in spiking neural networks},
  author={Oleg Nikitin and Olga Lukyanova and Alex Kunin},
  journal={arXiv preprint arXiv:arxiv-paper--2103.08143},
  year={2021}
}

πŸ‘₯ Collaborating Minds

Oleg Nikitin Olga Lukyanova Alex Kunin

Abstract & Analysis

Biological neurons have adaptive nature and perform complex computations involving the filtering of redundant information. However, most common neural cell models, including biologically plausible, such as Hodgkin-Huxley or Izhikevich, do not possess predictive dynamics on a single-cell level. Moreover, the modern rules of synaptic plasticity or interconnections weights adaptation also do not provide grounding for the ability of neurons to adapt to the ever-changing input signal intensity. While natural neuron synaptic growth is precisely controlled and restricted by protein supply and recycling, weight correction rules such as widely used STDP are efficiently unlimited in change rate and scale. The present article introduces new mechanics of interconnection between neuron firing rate homeostasis and weight change through STDP growth bounded by abstract protein reserve, controlled by the intracellular optimization algorithm. We show how these cellular dynamics help neurons filter out the intense noise signals to help neurons keep a stable firing rate. We also examine that such filtering does not affect the ability of neurons to recognize the correlated inputs in unsupervised mode. Such an approach might be used in the machine learning domain to improve the robustness of AI systems.

πŸ”„ Daily sync (03:00 UTC)

AI Summary: Based on arXiv metadata. Not a recommendation.

πŸ“Š FNI Methodology πŸ“š Knowledge Baseℹ️ Verify with original source

πŸ›‘οΈ Paper Transparency Report

Verified data manifest for traceability and transparency.

100% Data Disclosure Active

πŸ†” Identity & Source

id
arxiv-paper--2103.08143
source
arxiv
author
Oleg Nikitin
tags
arxiv:q-bio.NCarxiv:cs.AIarxiv:cs.LGarxiv:cs.NEneural

βš™οΈ Technical Specs

architecture
null
params billions
null
context length
null

πŸ“Š Engagement & Metrics

likes
0
downloads
0

Free2AITools Constitutional Data Pipeline: Curated disclosure mode active. (V15.x Standard)