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Stochastic Configuration Networks: Fundamentals and Algorithms

Stochastic Configuration Networks: Fundamentals and Algorithms

10 February 2017
Dianhui Wang
Ming Li
ArXivPDFHTML

Papers citing "Stochastic Configuration Networks: Fundamentals and Algorithms"

26 / 26 papers shown
Title
Interpretable Recognition of Fused Magnesium Furnace Working Conditions with Deep Convolutional Stochastic Configuration Networks
Interpretable Recognition of Fused Magnesium Furnace Working Conditions with Deep Convolutional Stochastic Configuration Networks
Li Weitao
Zhang Xinru
Wang Dianhui
Tong Qianqian
Chai Tianyou
AI4CE
50
0
0
06 Jan 2025
Recurrent Stochastic Configuration Networks for Temporal Data Analytics
Recurrent Stochastic Configuration Networks for Temporal Data Analytics
Dianhui Wang
Gang Dang
34
4
0
21 Jun 2024
Cloud Ensemble Learning for Fault Diagnosis of Rolling Bearings with
  Stochastic Configuration Networks
Cloud Ensemble Learning for Fault Diagnosis of Rolling Bearings with Stochastic Configuration Networks
Wei Dai
Jiang Liu
Lanhao Wang
29
13
0
02 Jul 2023
Reliable Prediction Intervals with Directly Optimized Inductive
  Conformal Regression for Deep Learning
Reliable Prediction Intervals with Directly Optimized Inductive Conformal Regression for Deep Learning
Haocheng Lei
A. Bellotti
26
6
0
02 Feb 2023
Bort: Towards Explainable Neural Networks with Bounded Orthogonal
  Constraint
Bort: Towards Explainable Neural Networks with Bounded Orthogonal Constraint
Borui Zhang
Wenzhao Zheng
Jie Zhou
Jiwen Lu
AAML
30
7
0
18 Dec 2022
A New Learning Paradigm for Stochastic Configuration Network: SCN+
A New Learning Paradigm for Stochastic Configuration Network: SCN+
Yanshuang Ao
Xinyu Zhou
Wei Dai
15
1
0
11 Mar 2022
Weighting and Pruning based Ensemble Deep Random Vector Functional Link
  Network for Tabular Data Classification
Weighting and Pruning based Ensemble Deep Random Vector Functional Link Network for Tabular Data Classification
Qi-Shi Shi
Ponnuthurai Nagaratnam Suganthan
Rakesh Katuwal
6
22
0
15 Jan 2022
Feature extraction and classification algorithm, which one is more
  essential? An experimental study on a specific task of vibration signal
  diagnosis
Feature extraction and classification algorithm, which one is more essential? An experimental study on a specific task of vibration signal diagnosis
Qiang Liu
Jiade Zhang
Jingna Liu
Zhi-qun Yang
21
13
0
17 Dec 2021
Theory of Deep Convolutional Neural Networks III: Approximating Radial
  Functions
Theory of Deep Convolutional Neural Networks III: Approximating Radial Functions
Tong Mao
Zhongjie Shi
Ding-Xuan Zhou
26
33
0
02 Jul 2021
Demystification of Few-shot and One-shot Learning
Demystification of Few-shot and One-shot Learning
I. Tyukin
A. Gorban
Muhammad H. Alkhudaydi
Qinghua Zhou
29
13
0
25 Apr 2021
A Modified Batch Intrinsic Plasticity Method for Pre-training the Random
  Coefficients of Extreme Learning Machines
A Modified Batch Intrinsic Plasticity Method for Pre-training the Random Coefficients of Extreme Learning Machines
S. Dong
Zongwei Li
33
29
0
14 Mar 2021
Cluster-based Input Weight Initialization for Echo State Networks
Cluster-based Input Weight Initialization for Echo State Networks
Peter Steiner
A. Jalalvand
P. Birkholz
20
13
0
08 Mar 2021
Deep Randomized Neural Networks
Deep Randomized Neural Networks
Claudio Gallicchio
Simone Scardapane
OOD
47
61
0
27 Feb 2020
Error-feedback stochastic modeling strategy for time series forecasting
  with convolutional neural networks
Error-feedback stochastic modeling strategy for time series forecasting with convolutional neural networks
Xinze Zhang
Kun He
Yukun Bao
AI4TS
27
9
0
03 Feb 2020
Theory of neuromorphic computing by waves: machine learning by rogue
  waves, dispersive shocks, and solitons
Theory of neuromorphic computing by waves: machine learning by rogue waves, dispersive shocks, and solitons
G. Marcucci
D. Pierangeli
Claudio Conti
24
111
0
15 Dec 2019
DEVDAN: Deep Evolving Denoising Autoencoder
DEVDAN: Deep Evolving Denoising Autoencoder
Andri Ashfahani
Mahardhika Pratama
E. Lughofer
Yew-Soon Ong
36
98
0
08 Oct 2019
Blessing of dimensionality at the edge
Blessing of dimensionality at the edge
I. Tyukin
Alexander N. Gorban
A. McEwan
Sepehr Meshkinfamfard
Lixin Tang
21
8
0
30 Sep 2019
Density Encoding Enables Resource-Efficient Randomly Connected Neural
  Networks
Density Encoding Enables Resource-Efficient Randomly Connected Neural Networks
Denis Kleyko
Mansour Kheffache
E. P. Frady
U. Wiklund
Evgeny Osipov
27
45
0
19 Sep 2019
Multi-Kernel Correntropy for Robust Learning
Multi-Kernel Correntropy for Robust Learning
Badong Chen
Yuqing Xie
Xin Wang
Zejian Yuan
Pengju Ren
J. Qin
8
29
0
24 May 2019
Fast Construction of Correcting Ensembles for Legacy Artificial
  Intelligence Systems: Algorithms and a Case Study
Fast Construction of Correcting Ensembles for Legacy Artificial Intelligence Systems: Algorithms and a Case Study
I. Tyukin
Alexander N. Gorban
Stephen Green
Danil Prokhorov
22
15
0
12 Oct 2018
Autonomous Deep Learning: Incremental Learning of Denoising Autoencoder
  for Evolving Data Streams
Autonomous Deep Learning: Incremental Learning of Denoising Autoencoder for Evolving Data Streams
Mahardhika Pratama
Andri Ashfahani
Yew-Soon Ong
Savitha Ramasamy
E. Lughofer
14
15
0
24 Sep 2018
Randomized Mixture Models for Probability Density Approximation and
  Estimation
Randomized Mixture Models for Probability Density Approximation and Estimation
Hien Nguyen
Dianhui Wang
Geoffrey J. McLachlan
19
9
0
23 Apr 2018
Blessing of dimensionality: mathematical foundations of the statistical
  physics of data
Blessing of dimensionality: mathematical foundations of the statistical physics of data
A. N. Gorban
I. Tyukin
36
145
0
10 Jan 2018
A Method of Generating Random Weights and Biases in Feedforward Neural
  Networks with Random Hidden Nodes
A Method of Generating Random Weights and Biases in Feedforward Neural Networks with Random Hidden Nodes
Grzegorz Dudek
15
45
0
13 Oct 2017
Stochastic Configuration Networks Ensemble for Large-Scale Data
  Analytics
Stochastic Configuration Networks Ensemble for Large-Scale Data Analytics
Dianhui Wang
Caihao Cui
BDL
30
112
0
02 Jul 2017
Parsimonious Random Vector Functional Link Network for Data Streams
Parsimonious Random Vector Functional Link Network for Data Streams
Mahardhika Pratama
Plamen Angelov
E. Lughofer
16
46
0
10 Apr 2017
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