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Controlled Forgetting: Targeted Stimulation and Dopaminergic Plasticity
  Modulation for Unsupervised Lifelong Learning in Spiking Neural Networks

Controlled Forgetting: Targeted Stimulation and Dopaminergic Plasticity Modulation for Unsupervised Lifelong Learning in Spiking Neural Networks

8 February 2019
Jason M. Allred
Kaushik Roy
    CLL
ArXivPDFHTML

Papers citing "Controlled Forgetting: Targeted Stimulation and Dopaminergic Plasticity Modulation for Unsupervised Lifelong Learning in Spiking Neural Networks"

6 / 6 papers shown
Title
Three-Factor Learning in Spiking Neural Networks: An Overview of Methods and Trends from a Machine Learning Perspective
Three-Factor Learning in Spiking Neural Networks: An Overview of Methods and Trends from a Machine Learning Perspective
Szymon Mazurek
Jakub Caputa
Jan K. Argasiñski
Maciej Wielgosz
26
0
0
06 Apr 2025
TopSpark: A Timestep Optimization Methodology for Energy-Efficient
  Spiking Neural Networks on Autonomous Mobile Agents
TopSpark: A Timestep Optimization Methodology for Energy-Efficient Spiking Neural Networks on Autonomous Mobile Agents
Rachmad Vidya Wicaksana Putra
Mohamed Bennai
42
12
0
03 Mar 2023
Mantis: Enabling Energy-Efficient Autonomous Mobile Agents with Spiking
  Neural Networks
Mantis: Enabling Energy-Efficient Autonomous Mobile Agents with Spiking Neural Networks
Rachmad Vidya Wicaksana Putra
Mohamed Bennai
40
6
0
24 Dec 2022
Continuous learning of spiking networks trained with local rules
Continuous learning of spiking networks trained with local rules
D. Antonov
K. Sviatov
S. Sukhov
26
12
0
18 Nov 2021
Securing Deep Spiking Neural Networks against Adversarial Attacks
  through Inherent Structural Parameters
Securing Deep Spiking Neural Networks against Adversarial Attacks through Inherent Structural Parameters
Rida El-Allami
Alberto Marchisio
Mohamed Bennai
Ihsen Alouani
AAML
19
38
0
09 Dec 2020
Continuous Learning in a Single-Incremental-Task Scenario with Spike
  Features
Continuous Learning in a Single-Incremental-Task Scenario with Spike Features
Ruthvik Vaila
John N. Chiasson
V. Saxena
CLL
19
5
0
03 May 2020
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