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Horizontal and Vertical Ensemble with Deep Representation for
  Classification

Horizontal and Vertical Ensemble with Deep Representation for Classification

12 June 2013
Jingjing Xie
Bing Xu
Chuang Zhang
    SSL
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Papers citing "Horizontal and Vertical Ensemble with Deep Representation for Classification"

32 / 32 papers shown
Title
A Review of Bayesian Uncertainty Quantification in Deep Probabilistic Image Segmentation
A Review of Bayesian Uncertainty Quantification in Deep Probabilistic Image Segmentation
M. Valiuddin
R. V. Sloun
C.G.A. Viviers
Peter H. N. de With
Fons van der Sommen
UQCV
93
1
0
25 Nov 2024
Towards a Systematic Approach to Design New Ensemble Learning Algorithms
Towards a Systematic Approach to Design New Ensemble Learning Algorithms
João Mendes-Moreira
Tiago Mendes-Neves
FedML
22
1
0
09 Feb 2024
Relearning Forgotten Knowledge: on Forgetting, Overfit and Training-Free
  Ensembles of DNNs
Relearning Forgotten Knowledge: on Forgetting, Overfit and Training-Free Ensembles of DNNs
Uri Stern
D. Weinshall
CLL
29
0
0
17 Oct 2023
Logit-Based Ensemble Distribution Distillation for Robust Autoregressive
  Sequence Uncertainties
Logit-Based Ensemble Distribution Distillation for Robust Autoregressive Sequence Uncertainties
Yassir Fathullah
Guoxuan Xia
Mark Gales
UQCV
35
2
0
17 May 2023
HCE: Improving Performance and Efficiency with Heterogeneously
  Compressed Neural Network Ensemble
HCE: Improving Performance and Efficiency with Heterogeneously Compressed Neural Network Ensemble
Jingchi Zhang
Huanrui Yang
Hai Helen Li
14
1
0
18 Jan 2023
Instability in clinical risk stratification models using deep learning
Instability in clinical risk stratification models using deep learning
D. Martinez
A. Yakubovich
Martin G. Seneviratne
Á. Lelkes
Akshit Tyagi
...
N. L. Downing
Ron C. Li
Keith Morse
N. Shah
Ming-Jun Chen
OOD
31
2
0
20 Nov 2022
A Survey of Computer Vision Technologies In Urban and
  Controlled-environment Agriculture
A Survey of Computer Vision Technologies In Urban and Controlled-environment Agriculture
Jiayun Luo
Boyang Albert Li
Cyril Leung
53
11
0
20 Oct 2022
Boosted Ensemble Learning based on Randomized NNs for Time Series
  Forecasting
Boosted Ensemble Learning based on Randomized NNs for Time Series Forecasting
Grzegorz Dudek
AI4TS
14
1
0
02 Mar 2022
Prune and Tune Ensembles: Low-Cost Ensemble Learning With Sparse
  Independent Subnetworks
Prune and Tune Ensembles: Low-Cost Ensemble Learning With Sparse Independent Subnetworks
Tim Whitaker
L. D. Whitley
UQCV
21
23
0
23 Feb 2022
Learning Proximal Operators to Discover Multiple Optima
Learning Proximal Operators to Discover Multiple Optima
Lingxiao Li
Noam Aigerman
Vladimir G. Kim
Jiajin Li
Kristjan Greenewald
Mikhail Yurochkin
Justin Solomon
47
1
0
28 Jan 2022
High-Dimensional Stock Portfolio Trading with Deep Reinforcement
  Learning
High-Dimensional Stock Portfolio Trading with Deep Reinforcement Learning
Uta Pigorsch
S. Schäfer
AIFin
15
10
0
09 Dec 2021
Explore the Potential Performance of Vision-and-Language Navigation
  Model: a Snapshot Ensemble Method
Explore the Potential Performance of Vision-and-Language Navigation Model: a Snapshot Ensemble Method
Wenda Qin
Teruhisa Misu
Derry Wijaya
UQCV
LM&Ro
27
5
0
28 Nov 2021
Sparse MoEs meet Efficient Ensembles
Sparse MoEs meet Efficient Ensembles
J. Allingham
F. Wenzel
Zelda E. Mariet
Basil Mustafa
J. Puigcerver
...
Balaji Lakshminarayanan
Jasper Snoek
Dustin Tran
Carlos Riquelme Ruiz
Rodolphe Jenatton
MoE
51
21
0
07 Oct 2021
Boost Neural Networks by Checkpoints
Boost Neural Networks by Checkpoints
Feng Wang
Gu-Yeon Wei
Qiao Liu
Jinxiang Ou
Xian Wei
Hairong Lv
FedML
UQCV
29
10
0
03 Oct 2021
Deep Ensembling with No Overhead for either Training or Testing: The
  All-Round Blessings of Dynamic Sparsity
Deep Ensembling with No Overhead for either Training or Testing: The All-Round Blessings of Dynamic Sparsity
Shiwei Liu
Tianlong Chen
Zahra Atashgahi
Xiaohan Chen
Ghada Sokar
Elena Mocanu
Mykola Pechenizkiy
Zhangyang Wang
Decebal Constantin Mocanu
OOD
31
49
0
28 Jun 2021
NeuSE: A Neural Snapshot Ensemble Method for Collaborative Filtering
NeuSE: A Neural Snapshot Ensemble Method for Collaborative Filtering
Dongsheng Li
Haodong Liu
Chao Chen
Yingying Zhao
Stephen M. Chu
Bo Yang
FedML
33
5
0
15 Apr 2021
Efficient Model Performance Estimation via Feature Histories
Efficient Model Performance Estimation via Feature Histories
Shengcao Cao
Xiaofang Wang
Kris Kitani
20
1
0
07 Mar 2021
Twin Neural Network Regression
Twin Neural Network Regression
S. J. Wetzel
Kevin Ryczko
R. Melko
Isaac Tamblyn
UQCV
28
11
0
29 Dec 2020
Feature Space Singularity for Out-of-Distribution Detection
Feature Space Singularity for Out-of-Distribution Detection
Haiwen Huang
Zhihan Li
Lulu Wang
Sishuo Chen
Bin Dong
Xinyu Zhou
OODD
22
65
0
30 Nov 2020
Wisdom of the Ensemble: Improving Consistency of Deep Learning Models
Wisdom of the Ensemble: Improving Consistency of Deep Learning Models
Lijing Wang
Dipanjan Ghosh
Maria Teresa Gonzalez Diaz
Ahmed K. Farahat
M. Alam
Chetan Gupta
Jiangzhuo Chen
Madhav Marathe
20
9
0
13 Nov 2020
ARC-Net: Activity Recognition Through Capsules
ARC-Net: Activity Recognition Through Capsules
H. Damirchi
Rooholla Khorrambakht
H. Taghirad
HAI
8
12
0
06 Jul 2020
ResKD: Residual-Guided Knowledge Distillation
ResKD: Residual-Guided Knowledge Distillation
Xuewei Li
Songyuan Li
Bourahla Omar
Fei Wu
Xi Li
21
47
0
08 Jun 2020
Uncertainty Estimation in Deep 2D Echocardiography Segmentation
Uncertainty Estimation in Deep 2D Echocardiography Segmentation
Lavsen Dahal
Aayush Kafle
Bishesh Khanal
UQCV
17
10
0
19 May 2020
CRYSPNet: Crystal Structure Predictions via Neural Network
CRYSPNet: Crystal Structure Predictions via Neural Network
Haotong Liang
V. Stanev
A. Kusne
Ichiro Takeuchi
19
37
0
31 Mar 2020
Auto-Ensemble: An Adaptive Learning Rate Scheduling based Deep Learning
  Model Ensembling
Auto-Ensemble: An Adaptive Learning Rate Scheduling based Deep Learning Model Ensembling
Jun Yang
Fei Wang
20
32
0
25 Mar 2020
BatchEnsemble: An Alternative Approach to Efficient Ensemble and
  Lifelong Learning
BatchEnsemble: An Alternative Approach to Efficient Ensemble and Lifelong Learning
Yeming Wen
Dustin Tran
Jimmy Ba
OOD
FedML
UQCV
32
483
0
17 Feb 2020
Data Diversification: A Simple Strategy For Neural Machine Translation
Data Diversification: A Simple Strategy For Neural Machine Translation
Xuan-Phi Nguyen
Shafiq Joty
Wu Kui
Ai Ti Aw
17
15
0
05 Nov 2019
MotherNets: Rapid Deep Ensemble Learning
MotherNets: Rapid Deep Ensemble Learning
Abdul Wasay
Brian Hentschel
Yuze Liao
Sanyuan Chen
Stratos Idreos
14
35
0
12 Sep 2018
Loss Surfaces, Mode Connectivity, and Fast Ensembling of DNNs
Loss Surfaces, Mode Connectivity, and Fast Ensembling of DNNs
T. Garipov
Pavel Izmailov
Dmitrii Podoprikhin
Dmitry Vetrov
A. Wilson
UQCV
27
734
0
27 Feb 2018
Snapshot Ensembles: Train 1, get M for free
Snapshot Ensembles: Train 1, get M for free
Gao Huang
Yixuan Li
Geoff Pleiss
Zhuang Liu
J. Hopcroft
Kilian Q. Weinberger
OOD
FedML
UQCV
50
935
0
01 Apr 2017
Combination of Diverse Ranking Models for Personalized Expedia Hotel
  Searches
Combination of Diverse Ranking Models for Personalized Expedia Hotel Searches
Xudong Liu
Bin Xu
Yuyu Zhang
Qiang Yan
Liang Pang
Qiang Li
Hanxiao Sun
Bin Wang
36
5
0
29 Nov 2013
Improving neural networks by preventing co-adaptation of feature
  detectors
Improving neural networks by preventing co-adaptation of feature detectors
Geoffrey E. Hinton
Nitish Srivastava
A. Krizhevsky
Ilya Sutskever
Ruslan Salakhutdinov
VLM
266
7,639
0
03 Jul 2012
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