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Learning Representations for Neural Network-Based Classification Using
  the Information Bottleneck Principle

Learning Representations for Neural Network-Based Classification Using the Information Bottleneck Principle

27 February 2018
Rana Ali Amjad
Bernhard C. Geiger
ArXivPDFHTML

Papers citing "Learning Representations for Neural Network-Based Classification Using the Information Bottleneck Principle"

50 / 91 papers shown
Title
Generalization Guarantees for Multi-View Representation Learning and Application to Regularization via Gaussian Product Mixture Prior
Generalization Guarantees for Multi-View Representation Learning and Application to Regularization via Gaussian Product Mixture Prior
Milad Sefidgaran
Abdellatif Zaidi
Piotr Krasnowski
44
0
0
25 Apr 2025
Generalization Guarantees for Representation Learning via Data-Dependent Gaussian Mixture Priors
Generalization Guarantees for Representation Learning via Data-Dependent Gaussian Mixture Priors
Milad Sefidgaran
A. Zaidi
Piotr Krasnowski
80
1
0
21 Feb 2025
Task-Augmented Cross-View Imputation Network for Partial Multi-View Incomplete Multi-Label Classification
Task-Augmented Cross-View Imputation Network for Partial Multi-View Incomplete Multi-Label Classification
Xiaohuan Lu
Lian Zhao
Wai Keung Wong
Jie Wen
Jiang Long
Wulin Xie
33
1
0
12 Sep 2024
Enhancing Neural Network Interpretability Through Conductance-Based
  Information Plane Analysis
Enhancing Neural Network Interpretability Through Conductance-Based Information Plane Analysis
J. Dabounou
Amine Baazzouz
FAtt
22
0
0
26 Aug 2024
10 Years of Fair Representations: Challenges and Opportunities
10 Years of Fair Representations: Challenges and Opportunities
Mattia Cerrato
Marius Köppel
Philipp Wolf
Stefan Kramer
FaML
31
1
0
04 Jul 2024
Representation Learning with Conditional Information Flow Maximization
Representation Learning with Conditional Information Flow Maximization
Dou Hu
Lingwei Wei
Wei Zhou
Songlin Hu
SSL
32
1
0
08 Jun 2024
Understanding Encoder-Decoder Structures in Machine Learning Using
  Information Measures
Understanding Encoder-Decoder Structures in Machine Learning Using Information Measures
Jorge F. Silva
Victor Faraggi
Camilo Ramírez
Álvaro F. Egaña
Eduardo Pavez
17
1
0
30 May 2024
Information-Theoretic Generalization Bounds for Deep Neural Networks
Information-Theoretic Generalization Bounds for Deep Neural Networks
Haiyun He
Christina Lee Yu
35
4
0
04 Apr 2024
Information Plane Analysis Visualization in Deep Learning via Transfer
  Entropy
Information Plane Analysis Visualization in Deep Learning via Transfer Entropy
Adrian Moldovan
A. Cataron
Razvan Andonie
FAtt
17
1
0
01 Apr 2024
Privacy for Fairness: Information Obfuscation for Fair Representation
  Learning with Local Differential Privacy
Privacy for Fairness: Information Obfuscation for Fair Representation Learning with Local Differential Privacy
Songjie Xie
Youlong Wu
Jiaxuan Li
Ming Ding
Khaled B. Letaief
AAML
31
1
0
16 Feb 2024
End-to-End Training Induces Information Bottleneck through Layer-Role
  Differentiation: A Comparative Analysis with Layer-wise Training
End-to-End Training Induces Information Bottleneck through Layer-Role Differentiation: A Comparative Analysis with Layer-wise Training
Keitaro Sakamoto
Issei Sato
19
4
0
14 Feb 2024
Tighter Bounds on the Information Bottleneck with Application to Deep
  Learning
Tighter Bounds on the Information Bottleneck with Application to Deep Learning
Nir Weingarten
Z. Yakhini
Moshe Butman
Ran Gilad-Bachrach
AAML
11
1
0
12 Feb 2024
Minimum Description Length and Generalization Guarantees for
  Representation Learning
Minimum Description Length and Generalization Guarantees for Representation Learning
Milad Sefidgaran
Abdellatif Zaidi
Piotr Krasnowski
38
7
0
05 Feb 2024
Flexible Variational Information Bottleneck: Achieving Diverse
  Compression with a Single Training
Flexible Variational Information Bottleneck: Achieving Diverse Compression with a Single Training
Sota Kudo
N. Ono
Shigehiko Kanaya
Ming Huang
11
1
0
02 Feb 2024
TURBO: The Swiss Knife of Auto-Encoders
TURBO: The Swiss Knife of Auto-Encoders
Guillaume Quétant
Yury Belousov
Vitaliy Kinakh
S. Voloshynovskiy
24
6
0
11 Nov 2023
Multi-View Causal Representation Learning with Partial Observability
Multi-View Causal Representation Learning with Partial Observability
Dingling Yao
Danru Xu
Sébastien Lachapelle
Sara Magliacane
Perouz Taslakian
Georg Martius
Julius von Kügelgen
Francesco Locatello
CML
37
30
0
07 Nov 2023
Self-MI: Efficient Multimodal Fusion via Self-Supervised Multi-Task
  Learning with Auxiliary Mutual Information Maximization
Self-MI: Efficient Multimodal Fusion via Self-Supervised Multi-Task Learning with Auxiliary Mutual Information Maximization
Cam-Van Thi Nguyen
Ngoc-Hoa Thi Nguyen
Duc-Trong Le
Quang-Thuy Ha
SSL
24
0
0
07 Nov 2023
How Does Information Bottleneck Help Deep Learning?
How Does Information Bottleneck Help Deep Learning?
Kenji Kawaguchi
Zhun Deng
Xu Ji
Jiaoyang Huang
38
53
0
30 May 2023
Information Bottleneck Analysis of Deep Neural Networks via Lossy
  Compression
Information Bottleneck Analysis of Deep Neural Networks via Lossy Compression
I. Butakov
Alexander Tolmachev
S. Malanchuk
A. Neopryatnaya
Alexey Frolov
K. Andreev
11
4
0
13 May 2023
To Compress or Not to Compress- Self-Supervised Learning and Information
  Theory: A Review
To Compress or Not to Compress- Self-Supervised Learning and Information Theory: A Review
Ravid Shwartz-Ziv
Yann LeCun
SSL
27
71
0
19 Apr 2023
Label Information Bottleneck for Label Enhancement
Label Information Bottleneck for Label Enhancement
Qinghai Zheng
Jihua Zhu
Haoyu Tang
18
6
0
13 Mar 2023
An Information-Theoretic Perspective on Variance-Invariance-Covariance
  Regularization
An Information-Theoretic Perspective on Variance-Invariance-Covariance Regularization
Ravid Shwartz-Ziv
Randall Balestriero
Kenji Kawaguchi
Tim G. J. Rudner
Yann LeCun
30
23
0
01 Mar 2023
Mutual Information Learned Regressor: an Information-theoretic Viewpoint
  of Training Regression Systems
Mutual Information Learned Regressor: an Information-theoretic Viewpoint of Training Regression Systems
Jirong Yi
Q. Zhang
Zhengbo Chen
Qiaoan Liu
Weizhuo Shao
Yusen He
Yao Wang
SSL
28
0
0
23 Nov 2022
Defects of Convolutional Decoder Networks in Frequency Representation
Defects of Convolutional Decoder Networks in Frequency Representation
Ling Tang
Wen Shen
Zhanpeng Zhou
YueFeng Chen
Quanshi Zhang
25
14
0
17 Oct 2022
Augmentation-Free Graph Contrastive Learning of Invariant-Discriminative
  Representations
Augmentation-Free Graph Contrastive Learning of Invariant-Discriminative Representations
Haifeng Li
Jun Cao
Jiawei Zhu
Qinyao Luo
Silu He
Xuying Wang
6
41
0
15 Oct 2022
Variational Graph Generator for Multi-View Graph Clustering
Variational Graph Generator for Multi-View Graph Clustering
Jianpeng Chen
Yawen Ling
Jie Xu
Yazhou Ren
Shudong Huang
X. Pu
Zhifeng Hao
Philip S. Yu
Lifang He
19
5
0
13 Oct 2022
Decoding Visual Neural Representations by Multimodal Learning of
  Brain-Visual-Linguistic Features
Decoding Visual Neural Representations by Multimodal Learning of Brain-Visual-Linguistic Features
Changde Du
Kaicheng Fu
Jinpeng Li
Huiguang He
VLM
26
67
0
13 Oct 2022
What Do We Maximize in Self-Supervised Learning?
What Do We Maximize in Self-Supervised Learning?
Ravid Shwartz-Ziv
Randall Balestriero
Yann LeCun
SSL
21
17
0
20 Jul 2022
Towards Lightweight Super-Resolution with Dual Regression Learning
Towards Lightweight Super-Resolution with Dual Regression Learning
Yong Guo
Mingkui Tan
Zeshuai Deng
Jingdong Wang
Qi Chen
Jiezhang Cao
Yanwu Xu
Jian Chen
SupR
16
11
0
16 Jul 2022
Exploring Adversarial Examples and Adversarial Robustness of
  Convolutional Neural Networks by Mutual Information
Exploring Adversarial Examples and Adversarial Robustness of Convolutional Neural Networks by Mutual Information
Jiebao Zhang
Wenhua Qian
Ren-qi Nie
Jinde Cao
Dan Xu
GAN
AAML
17
0
0
12 Jul 2022
Bottlenecks CLUB: Unifying Information-Theoretic Trade-offs Among
  Complexity, Leakage, and Utility
Bottlenecks CLUB: Unifying Information-Theoretic Trade-offs Among Complexity, Leakage, and Utility
Behrooz Razeghi
Flavio du Pin Calmon
Deniz Gunduz
S. Voloshynovskiy
27
15
0
11 Jul 2022
InfoAT: Improving Adversarial Training Using the Information Bottleneck
  Principle
InfoAT: Improving Adversarial Training Using the Information Bottleneck Principle
Mengting Xu
Tao Zhang
Zhongnian Li
Daoqiang Zhang
AAML
35
16
0
23 Jun 2022
Batch Normalization Is Blind to the First and Second Derivatives of the
  Loss
Batch Normalization Is Blind to the First and Second Derivatives of the Loss
Zhanpeng Zhou
Wen Shen
Huixin Chen
Ling Tang
Quanshi Zhang
26
2
0
30 May 2022
Optimal Randomized Approximations for Matrix based Renyi's Entropy
Optimal Randomized Approximations for Matrix based Renyi's Entropy
Yuxin Dong
Tieliang Gong
Shujian Yu
Chen Li
19
7
0
16 May 2022
Multi-view Information Bottleneck Without Variational Approximation
Multi-view Information Bottleneck Without Variational Approximation
Qi Zhang
Shujian Yu
J. Xin
Badong Chen
12
10
0
22 Apr 2022
R2-Trans:Fine-Grained Visual Categorization with Redundancy Reduction
R2-Trans:Fine-Grained Visual Categorization with Redundancy Reduction
Yu Wang
Shuo Ye
Shujian Yu
Xinge You
22
14
0
21 Apr 2022
Studying the Interplay between Information Loss and Operation Loss in
  Representations for Classification
Studying the Interplay between Information Loss and Operation Loss in Representations for Classification
Jorge F. Silva
Felipe A. Tobar
Mario L. Vicuna
Felipe Cordova
9
2
0
30 Dec 2021
Computationally Efficient Approximations for Matrix-based Renyi's
  Entropy
Computationally Efficient Approximations for Matrix-based Renyi's Entropy
Tieliang Gong
Yuxin Dong
Shujian Yu
B. Dong
59
2
0
27 Dec 2021
PACMAN: PAC-style bounds accounting for the Mismatch between Accuracy
  and Negative log-loss
PACMAN: PAC-style bounds accounting for the Mismatch between Accuracy and Negative log-loss
Matías Vera
L. Rey Vega
Pablo Piantanida
23
0
0
10 Dec 2021
Discovering and Explaining the Representation Bottleneck of DNNs
Discovering and Explaining the Representation Bottleneck of DNNs
Huiqi Deng
Qihan Ren
Hao Zhang
Quanshi Zhang
32
59
0
11 Nov 2021
Gated Information Bottleneck for Generalization in Sequential
  Environments
Gated Information Bottleneck for Generalization in Sequential Environments
Francesco Alesiani
Shujian Yu
Xi Yu
OOD
AAML
11
13
0
12 Oct 2021
Ranking Feature-Block Importance in Artificial Multiblock Neural
  Networks
Ranking Feature-Block Importance in Artificial Multiblock Neural Networks
Anna Jenul
Stefan Schrunner
B. Huynh
Runar Helin
C. Futsaether
K. H. Liland
O. Tomic
FAtt
8
1
0
21 Sep 2021
Improving Multimodal Fusion with Hierarchical Mutual Information
  Maximization for Multimodal Sentiment Analysis
Improving Multimodal Fusion with Hierarchical Mutual Information Maximization for Multimodal Sentiment Analysis
Wei Han
Hui Chen
Soujanya Poria
19
315
0
01 Sep 2021
Learning to Transfer with von Neumann Conditional Divergence
Learning to Transfer with von Neumann Conditional Divergence
Ammar Shaker
Shujian Yu
Daniel Oñoro-Rubio
OOD
DRL
15
1
0
07 Aug 2021
Information Bottleneck: Exact Analysis of (Quantized) Neural Networks
Information Bottleneck: Exact Analysis of (Quantized) Neural Networks
S. Lorenzen
Christian Igel
M. Nielsen
MQ
11
17
0
24 Jun 2021
From Canonical Correlation Analysis to Self-supervised Graph Neural
  Networks
From Canonical Correlation Analysis to Self-supervised Graph Neural Networks
Hengrui Zhang
Qitian Wu
Junchi Yan
David Wipf
Philip S. Yu
SSL
22
210
0
23 Jun 2021
Optimization Induced Equilibrium Networks
Optimization Induced Equilibrium Networks
Xingyu Xie
Qiuhao Wang
Zenan Ling
Xia Li
Yisen Wang
Guangcan Liu
Zhouchen Lin
11
9
0
27 May 2021
Disentangled Variational Information Bottleneck for Multiview
  Representation Learning
Disentangled Variational Information Bottleneck for Multiview Representation Learning
Feng Bao
11
12
0
17 May 2021
Understanding Neural Networks with Logarithm Determinant Entropy
  Estimator
Understanding Neural Networks with Logarithm Determinant Entropy Estimator
Zhanghao Zhouyin
Ding Liu
FAtt
16
8
0
08 May 2021
A Critical Review of Information Bottleneck Theory and its Applications to Deep Learning
Mohammad Ali Alomrani
8
2
0
07 May 2021
12
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