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Unsupervised Learning by Competing Hidden Units

Unsupervised Learning by Competing Hidden Units

26 June 2018
Dmitry Krotov
J. Hopfield
    SSL
ArXivPDFHTML

Papers citing "Unsupervised Learning by Competing Hidden Units"

50 / 55 papers shown
Title
From Neurons to Computation: Biological Reservoir Computing for Pattern Recognition
From Neurons to Computation: Biological Reservoir Computing for Pattern Recognition
Ludovico Iannello
Luca Ciampi
Gabriele Lagani
Fabrizio Tonelli
Eleonora Crocco
Lucio Maria Calcagnile
Angelo Di Garbo
F. Cremisi
Giuseppe Amato
49
0
0
06 May 2025
OscNet: Machine Learning on CMOS Oscillator Networks
OscNet: Machine Learning on CMOS Oscillator Networks
Wenxiao Cai
Thomas H. Lee
68
1
0
11 Feb 2025
Comply: Learning Sentences with Complex Weights inspired by Fruit Fly Olfaction
Comply: Learning Sentences with Complex Weights inspired by Fruit Fly Olfaction
Alexei Figueroa
Justus Westerhoff
Golzar Atefi
Dennis Fast
B. Winter
Felix Alexader Gers
Alexander Loser
Wolfang Nejdl
57
0
0
03 Feb 2025
Self-Contrastive Forward-Forward Algorithm
Self-Contrastive Forward-Forward Algorithm
Xing Chen
Dongshu Liu
Jérémie Laydevant
Julie Grollier
49
2
0
17 Sep 2024
Spiking Neural Networks with Consistent Mapping Relations Allow
  High-Accuracy Inference
Spiking Neural Networks with Consistent Mapping Relations Allow High-Accuracy Inference
Yang Li
Xiang He
Qingqun Kong
Yi Zeng
40
0
0
08 Jun 2024
Benchmarking Hebbian learning rules for associative memory
Benchmarking Hebbian learning rules for associative memory
A. Lansner
Naresh B. Ravichandran
Pawel Herman
37
4
0
30 Dec 2023
Representation Learning in a Decomposed Encoder Design for Bio-inspired Hebbian Learning
Representation Learning in a Decomposed Encoder Design for Bio-inspired Hebbian Learning
Achref Jaziri
Sina Ditzel
Iuliia Pliushch
Visvanathan Ramesh
SSL
44
1
0
22 Nov 2023
Synaptic Plasticity Models and Bio-Inspired Unsupervised Deep Learning:
  A Survey
Synaptic Plasticity Models and Bio-Inspired Unsupervised Deep Learning: A Survey
Gabriele Lagani
Fabrizio Falchi
Claudio Gennaro
Giuseppe Amato
AAML
47
6
0
30 Jul 2023
Spiking Neural Networks and Bio-Inspired Supervised Deep Learning: A
  Survey
Spiking Neural Networks and Bio-Inspired Supervised Deep Learning: A Survey
Gabriele Lagani
Fabrizio Falchi
Claudio Gennaro
Giuseppe Amato
28
8
0
30 Jul 2023
Active Inference in Hebbian Learning Networks
Active Inference in Hebbian Learning Networks
A. Safa
Tim Verbelen
Lars Keuninckx
I. Ocket
A. Bourdoux
F. Catthoor
Georges G. E. Gielen
Gert Cauwenberghs
38
2
0
08 Jun 2023
Machine learning in and out of equilibrium
Machine learning in and out of equilibrium
Shishir Adhikari
Alkan Kabakcciouglu
A. Strang
Deniz Yuret
M. Hinczewski
29
4
0
06 Jun 2023
Extracting the Brain-like Representation by an Improved Self-Organizing
  Map for Image Classification
Extracting the Brain-like Representation by an Improved Self-Organizing Map for Image Classification
Jiahong Zhang
Lihong Cao
Moning Zhang
Wenlong Fu
SSL
13
2
0
16 Mar 2023
Neuro-Modulated Hebbian Learning for Fully Test-Time Adaptation
Neuro-Modulated Hebbian Learning for Fully Test-Time Adaptation
Yushun Tang
Ce Zhang
Heng Xu
Shuoshuo Chen
Jie Cheng
Luziwei Leng
Qinghai Guo
Zhihai He
TTA
44
24
0
02 Mar 2023
Is Bio-Inspired Learning Better than Backprop? Benchmarking Bio Learning
  vs. Backprop
Is Bio-Inspired Learning Better than Backprop? Benchmarking Bio Learning vs. Backprop
Manas Gupta
Sarthak Ketanbhai Modi
Hang Zhang
Joon Hei Lee
J. Lim
32
7
0
09 Dec 2022
Multi-level Data Representation For Training Deep Helmholtz Machines
Multi-level Data Representation For Training Deep Helmholtz Machines
J. M. Ramos
Luis Sa-Couto
Andreas Wichert
18
0
0
26 Oct 2022
Activation Learning by Local Competitions
Activation Learning by Local Competitions
Hongchao Zhou
AAML
32
7
0
26 Sep 2022
Hebbian Deep Learning Without Feedback
Hebbian Deep Learning Without Feedback
Adrien Journé
Hector Garcia Rodriguez
Qinghai Guo
Timoleon Moraitis
AAML
33
49
0
23 Sep 2022
Forecasting Evolution of Clusters in Game Agents with Hebbian Learning
Forecasting Evolution of Clusters in Game Agents with Hebbian Learning
Beomseok Kang
Saibal Mukhopadhyay
52
2
0
19 Aug 2022
Toward Transparent AI: A Survey on Interpreting the Inner Structures of
  Deep Neural Networks
Toward Transparent AI: A Survey on Interpreting the Inner Structures of Deep Neural Networks
Tilman Raukur
A. Ho
Stephen Casper
Dylan Hadfield-Menell
AAML
AI4CE
28
125
0
27 Jul 2022
Unsupervised Hebbian Learning on Point Sets in StarCraft II
Unsupervised Hebbian Learning on Point Sets in StarCraft II
Beomseok Kang
H. Kumar
Saurabh Dash
Saibal Mukhopadhyay
SSL
23
6
0
13 Jul 2022
FastHebb: Scaling Hebbian Training of Deep Neural Networks to ImageNet
  Level
FastHebb: Scaling Hebbian Training of Deep Neural Networks to ImageNet Level
Gabriele Lagani
Claudio Gennaro
Hannes Fassold
Giuseppe Amato
31
10
0
07 Jul 2022
Brain-like combination of feedforward and recurrent network components
  achieves prototype extraction and robust pattern recognition
Brain-like combination of feedforward and recurrent network components achieves prototype extraction and robust pattern recognition
Naresh B. Ravichandran
A. Lansner
Pawel Herman
35
4
0
30 Jun 2022
Hebbian Continual Representation Learning
Hebbian Continual Representation Learning
P. Morawiecki
Andrii Krutsylo
Maciej Wołczyk
Marek Śmieja
CLL
30
2
0
28 Jun 2022
Stacked unsupervised learning with a network architecture found by
  supervised meta-learning
Stacked unsupervised learning with a network architecture found by supervised meta-learning
Kyle L. Luther
H. S. Seung
SSL
27
0
0
06 Jun 2022
Revisiting Gaussian Neurons for Online Clustering with Unknown Number of
  Clusters
Revisiting Gaussian Neurons for Online Clustering with Unknown Number of Clusters
O. Eidheim
17
1
0
02 May 2022
Representing Prior Knowledge Using Randomly, Weighted Feature Networks
  for Visual Relationship Detection
Representing Prior Knowledge Using Randomly, Weighted Feature Networks for Visual Relationship Detection
Jinyung Hong
Theodore P. Pavlic
29
3
0
20 Nov 2021
Associative Memories via Predictive Coding
Associative Memories via Predictive Coding
Tommaso Salvatori
Yuhang Song
Yujian Hong
Simon Frieder
Lei Sha
Zhenghua Xu
Rafal Bogacz
Thomas Lukasiewicz
35
62
0
16 Sep 2021
A Biologically Plausible Learning Rule for Perceptual Systems of
  organisms that Maximize Mutual Information
A Biologically Plausible Learning Rule for Perceptual Systems of organisms that Maximize Mutual Information
Tao-Wen Liu
8
0
0
07 Sep 2021
SoftHebb: Bayesian Inference in Unsupervised Hebbian Soft
  Winner-Take-All Networks
SoftHebb: Bayesian Inference in Unsupervised Hebbian Soft Winner-Take-All Networks
Timoleon Moraitis
Dmitry Toichkin
Adrien Journé
Yansong Chua
Qinghai Guo
AAML
BDL
68
28
0
12 Jul 2021
Feature Alignment as a Generative Process
Feature Alignment as a Generative Process
T. S. Farias
Jonas Maziero
DiffM
BDL
28
1
0
23 Jun 2021
Credit Assignment Through Broadcasting a Global Error Vector
Credit Assignment Through Broadcasting a Global Error Vector
David G. Clark
L. F. Abbott
SueYeon Chung
30
23
0
08 Jun 2021
Hebbian Semi-Supervised Learning in a Sample Efficiency Setting
Hebbian Semi-Supervised Learning in a Sample Efficiency Setting
Gabriele Lagani
Fabrizio Falchi
Claudio Gennaro
Giuseppe Amato
SSL
25
22
0
16 Mar 2021
PyTorch-Hebbian: facilitating local learning in a deep learning
  framework
PyTorch-Hebbian: facilitating local learning in a deep learning framework
Jules Talloen
J. Dambre
Alexander Vandesompele
SSL
19
4
0
31 Jan 2021
Can a Fruit Fly Learn Word Embeddings?
Can a Fruit Fly Learn Word Embeddings?
Yuchen Liang
Chaitanya K. Ryali
Benjamin Hoover
Leopold Grinberg
Saket Navlakha
Mohammed J Zaki
Dmitry Krotov
24
20
0
18 Jan 2021
Training Deep Architectures Without End-to-End Backpropagation: A Survey
  on the Provably Optimal Methods
Training Deep Architectures Without End-to-End Backpropagation: A Survey on the Provably Optimal Methods
Shiyu Duan
José C. Príncipe
MQ
38
3
0
09 Jan 2021
Parallel Training of Deep Networks with Local Updates
Parallel Training of Deep Networks with Local Updates
Michael Laskin
Luke Metz
Seth Nabarrao
Mark Saroufim
Badreddine Noune
Carlo Luschi
Jascha Narain Sohl-Dickstein
Pieter Abbeel
FedML
32
26
0
07 Dec 2020
Prototype-based interpretation of the functionality of neurons in
  winner-take-all neural networks
Prototype-based interpretation of the functionality of neurons in winner-take-all neural networks
Ramin Zarei-Sabzevar
Kamaledin Ghiasi-Shirazi
Ahad Harati
AAML
11
9
0
20 Aug 2020
Kernelized information bottleneck leads to biologically plausible
  3-factor Hebbian learning in deep networks
Kernelized information bottleneck leads to biologically plausible 3-factor Hebbian learning in deep networks
Roman Pogodin
P. Latham
27
34
0
12 Jun 2020
Brain-like approaches to unsupervised learning of hidden representations
  -- a comparative study
Brain-like approaches to unsupervised learning of hidden representations -- a comparative study
Naresh B. Ravichandran
A. Lansner
Pawel Herman
BDL
SSL
14
12
0
06 May 2020
Learning representations in Bayesian Confidence Propagation neural
  networks
Learning representations in Bayesian Confidence Propagation neural networks
Naresh B. Ravichandran
A. Lansner
Pawel Herman
BDL
SSL
12
14
0
27 Mar 2020
Plasticity-Enhanced Domain-Wall MTJ Neural Networks for Energy-Efficient
  Online Learning
Plasticity-Enhanced Domain-Wall MTJ Neural Networks for Energy-Efficient Online Learning
Christopher Bennett
T. Xiao
Can Cui
Naimul Hassan
Otitoaleke G. Akinola
J. Incorvia
Alvaro Velasquez
Joseph S. Friedman
M. Marinella
28
1
0
04 Mar 2020
Large-Scale Gradient-Free Deep Learning with Recursive Local
  Representation Alignment
Large-Scale Gradient-Free Deep Learning with Recursive Local Representation Alignment
Alexander Ororbia
A. Mali
Daniel Kifer
C. Lee Giles
23
2
0
10 Feb 2020
CSNNs: Unsupervised, Backpropagation-free Convolutional Neural Networks
  for Representation Learning
CSNNs: Unsupervised, Backpropagation-free Convolutional Neural Networks for Representation Learning
Bonifaz Stuhr
Jürgen Brauer
SSL
28
8
0
28 Jan 2020
Bio-Inspired Hashing for Unsupervised Similarity Search
Bio-Inspired Hashing for Unsupervised Similarity Search
Chaitanya K. Ryali
J. Hopfield
Leopold Grinberg
Dmitry Krotov
11
25
0
14 Jan 2020
On Interpretability of Artificial Neural Networks: A Survey
On Interpretability of Artificial Neural Networks: A Survey
Fenglei Fan
Jinjun Xiong
Mengzhou Li
Ge Wang
AAML
AI4CE
43
301
0
08 Jan 2020
Biologically-Motivated Deep Learning Method using Hierarchical
  Competitive Learning
Biologically-Motivated Deep Learning Method using Hierarchical Competitive Learning
T. Shinozaki
SSL
10
2
0
04 Jan 2020
eBrainII: A 3 kW Realtime Custom 3D DRAM integrated ASIC implementation
  of a Biologically Plausible Model of a Human Scale Cortex
eBrainII: A 3 kW Realtime Custom 3D DRAM integrated ASIC implementation of a Biologically Plausible Model of a Human Scale Cortex
D. Stathis
C. Sudarshan
Yu Yang
Matthias Jung
Syed Asad Mohamad Hasan Jafri
C. Weis
A. Hemani
A. Lansner
Norbert Wehn
27
13
0
03 Nov 2019
Structured and Deep Similarity Matching via Structured and Deep Hebbian
  Networks
Structured and Deep Similarity Matching via Structured and Deep Hebbian Networks
D. Obeid
Hugo Ramambason
Cengiz Pehlevan
FedML
19
20
0
11 Oct 2019
Spiking Neural Predictive Coding for Continual Learning from Data
  Streams
Spiking Neural Predictive Coding for Continual Learning from Data Streams
Alexander Ororbia
23
25
0
23 Aug 2019
Local Unsupervised Learning for Image Analysis
Local Unsupervised Learning for Image Analysis
Leopold Grinberg
J. Hopfield
Dmitry Krotov
SSL
20
18
0
14 Aug 2019
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