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Analyzing biological and artificial neural networks: challenges with
  opportunities for synergy?

Analyzing biological and artificial neural networks: challenges with opportunities for synergy?

31 October 2018
David Barrett
Ari S. Morcos
Jakob H. Macke
    AI4CE
ArXivPDFHTML

Papers citing "Analyzing biological and artificial neural networks: challenges with opportunities for synergy?"

34 / 34 papers shown
Title
Emergent representations in networks trained with the Forward-Forward algorithm
Emergent representations in networks trained with the Forward-Forward algorithm
Niccolo Tosato
Lorenzo Basile
Emanuele Ballarin
Giuseppe de Alteriis
Alberto Cazzaniga
A. Ansuini
46
9
0
26 May 2023
Untangling in Invariant Speech Recognition
Untangling in Invariant Speech Recognition
Cory Stephenson
J. Feather
Suchismita Padhy
Oguz H. Elibol
Hanlin Tang
Josh H. McDermott
SueYeon Chung
SSL
62
31
0
03 Mar 2020
Generalisation in humans and deep neural networks
Generalisation in humans and deep neural networks
Robert Geirhos
Carlos R. Medina Temme
Jonas Rauber
Heiko H. Schutt
Matthias Bethge
Felix Wichmann
OOD
107
606
0
27 Aug 2018
Diverse feature visualizations reveal invariances in early layers of
  deep neural networks
Diverse feature visualizations reveal invariances in early layers of deep neural networks
Santiago A. Cadena
Marissa A. Weis
Leon A. Gatys
Matthias Bethge
Alexander S. Ecker
FAtt
40
28
0
27 Jul 2018
Insights on representational similarity in neural networks with
  canonical correlation
Insights on representational similarity in neural networks with canonical correlation
Ari S. Morcos
M. Raghu
Samy Bengio
DRL
58
446
0
14 Jun 2018
Revisiting the Importance of Individual Units in CNNs via Ablation
Revisiting the Importance of Individual Units in CNNs via Ablation
Bolei Zhou
Yiyou Sun
David Bau
Antonio Torralba
FAtt
82
117
0
07 Jun 2018
Measuring the Intrinsic Dimension of Objective Landscapes
Measuring the Intrinsic Dimension of Objective Landscapes
Chunyuan Li
Heerad Farkhoor
Rosanne Liu
J. Yosinski
78
410
0
24 Apr 2018
Emergence of grid-like representations by training recurrent neural
  networks to perform spatial localization
Emergence of grid-like representations by training recurrent neural networks to perform spatial localization
Christopher J. Cueva
Xue-Xin Wei
43
216
0
21 Mar 2018
On the importance of single directions for generalization
On the importance of single directions for generalization
Ari S. Morcos
David Barrett
Neil C. Rabinowitz
M. Botvinick
64
333
0
19 Mar 2018
Decision-Based Adversarial Attacks: Reliable Attacks Against Black-Box
  Machine Learning Models
Decision-Based Adversarial Attacks: Reliable Attacks Against Black-Box Machine Learning Models
Wieland Brendel
Jonas Rauber
Matthias Bethge
AAML
65
1,345
0
12 Dec 2017
Flexible statistical inference for mechanistic models of neural dynamics
Flexible statistical inference for mechanistic models of neural dynamics
Jan-Matthis Lueckmann
P. J. Gonçalves
Giacomo Bassetto
Kaan Öcal
M. Nonnenmacher
Jakob H. Macke
163
245
0
06 Nov 2017
Extracting low-dimensional dynamics from multiple large-scale neural
  population recordings by learning to predict correlations
Extracting low-dimensional dynamics from multiple large-scale neural population recordings by learning to predict correlations
M. Nonnenmacher
Srinivas C. Turaga
Jakob H. Macke
43
21
0
06 Nov 2017
Fast amortized inference of neural activity from calcium imaging data
  with variational autoencoders
Fast amortized inference of neural activity from calcium imaging data with variational autoencoders
Artur Speiser
Jinyao Yan
Evan Archer
Lars Buesing
Srinivas C. Turaga
Jakob H. Macke
BDL
52
47
0
06 Nov 2017
Classification and Geometry of General Perceptual Manifolds
Classification and Geometry of General Perceptual Manifolds
SueYeon Chung
Daniel D. Lee
H. Sompolinsky
52
154
0
17 Oct 2017
Emergence of Invariance and Disentanglement in Deep Representations
Emergence of Invariance and Disentanglement in Deep Representations
Alessandro Achille
Stefano Soatto
OOD
DRL
88
476
0
05 Jun 2017
Sharp Minima Can Generalize For Deep Nets
Sharp Minima Can Generalize For Deep Nets
Laurent Dinh
Razvan Pascanu
Samy Bengio
Yoshua Bengio
ODL
110
772
0
15 Mar 2017
Understanding the Effective Receptive Field in Deep Convolutional Neural
  Networks
Understanding the Effective Receptive Field in Deep Convolutional Neural Networks
Wenjie Luo
Yujia Li
R. Urtasun
R. Zemel
HAI
92
1,796
0
15 Jan 2017
Understanding deep learning requires rethinking generalization
Understanding deep learning requires rethinking generalization
Chiyuan Zhang
Samy Bengio
Moritz Hardt
Benjamin Recht
Oriol Vinyals
HAI
334
4,625
0
10 Nov 2016
Google's Neural Machine Translation System: Bridging the Gap between
  Human and Machine Translation
Google's Neural Machine Translation System: Bridging the Gap between Human and Machine Translation
Yonghui Wu
M. Schuster
Zhiwen Chen
Quoc V. Le
Mohammad Norouzi
...
Alex Rudnick
Oriol Vinyals
G. Corrado
Macduff Hughes
J. Dean
AIMat
891
6,787
0
26 Sep 2016
The Latin American Giant Observatory: a successful collaboration in
  Latin America based on Cosmic Rays and computer science domains
The Latin American Giant Observatory: a successful collaboration in Latin America based on Cosmic Rays and computer science domains
Hernán Asorey
R. Mayo-García
L. Núñez
M. Pascual
A. J. Rubio-Montero
M. Suárez-Durán
L. A. Torres-Niño
81
5
0
30 May 2016
Linear dynamical neural population models through nonlinear embeddings
Linear dynamical neural population models through nonlinear embeddings
Yuanjun Gao
Evan Archer
Liam Paninski
John P. Cunningham
57
155
0
26 May 2016
Fast $ε$-free Inference of Simulation Models with Bayesian
  Conditional Density Estimation
Fast εεε-free Inference of Simulation Models with Bayesian Conditional Density Estimation
George Papamakarios
Iain Murray
TPM
156
158
0
20 May 2016
Visualizing Deep Convolutional Neural Networks Using Natural Pre-Images
Visualizing Deep Convolutional Neural Networks Using Natural Pre-Images
Aravindh Mahendran
Andrea Vedaldi
FAtt
68
534
0
07 Dec 2015
Convergent Learning: Do different neural networks learn the same
  representations?
Convergent Learning: Do different neural networks learn the same representations?
Yixuan Li
J. Yosinski
Jeff Clune
Hod Lipson
John E. Hopcroft
SSL
83
368
0
24 Nov 2015
Understanding Neural Networks Through Deep Visualization
Understanding Neural Networks Through Deep Visualization
J. Yosinski
Jeff Clune
Anh Totti Nguyen
Thomas J. Fuchs
Hod Lipson
FAtt
AI4CE
122
1,871
0
22 Jun 2015
Deep Learning and the Information Bottleneck Principle
Deep Learning and the Information Bottleneck Principle
Naftali Tishby
Noga Zaslavsky
DRL
189
1,582
0
09 Mar 2015
Understanding Deep Image Representations by Inverting Them
Understanding Deep Image Representations by Inverting Them
Aravindh Mahendran
Andrea Vedaldi
FAtt
109
1,963
0
26 Nov 2014
Demixed principal component analysis of population activity in higher
  cortical areas reveals independent representation of task parameters
Demixed principal component analysis of population activity in higher cortical areas reveals independent representation of task parameters
D. Kobak
Wieland Brendel
C. Constantinidis
C. Feierstein
Adam Kepecs
Z. Mainen
R. Romo
Xue-Lian Qi
N. Uchida
C. Machens
79
466
0
22 Oct 2014
Very Deep Convolutional Networks for Large-Scale Image Recognition
Very Deep Convolutional Networks for Large-Scale Image Recognition
Karen Simonyan
Andrew Zisserman
FAtt
MDE
1.6K
100,330
0
04 Sep 2014
Auto-Encoding Variational Bayes
Auto-Encoding Variational Bayes
Diederik P. Kingma
Max Welling
BDL
439
16,940
0
20 Dec 2013
Visualizing and Understanding Convolutional Networks
Visualizing and Understanding Convolutional Networks
Matthew D. Zeiler
Rob Fergus
FAtt
SSL
587
15,874
0
12 Nov 2013
Predicting Parameters in Deep Learning
Predicting Parameters in Deep Learning
Misha Denil
B. Shakibi
Laurent Dinh
MarcÁurelio Ranzato
Nando de Freitas
OOD
192
1,317
0
03 Jun 2013
Building high-level features using large scale unsupervised learning
Building high-level features using large scale unsupervised learning
Quoc V. Le
MarcÁurelio Ranzato
R. Monga
M. Devin
Kai Chen
G. Corrado
J. Dean
A. Ng
SSL
OffRL
CVBM
116
2,269
0
29 Dec 2011
Online Identification and Tracking of Subspaces from Highly Incomplete
  Information
Online Identification and Tracking of Subspaces from Highly Incomplete Information
Laura Balzano
Robert D. Nowak
Benjamin Recht
112
424
0
21 Jun 2010
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