


default search action
ISNN 2006: Chengdu, China
- Jun Wang, Zhang Yi, Jacek M. Zurada, Bao-Liang Lu, Hujun Yin:

Advances in Neural Networks - ISNN 2006, Third International Symposium on Neural Networks, Chengdu, China, May 28 - June 1, 2006, Proceedings, Part I. Lecture Notes in Computer Science 3971, Springer 2006, ISBN 3-540-34439-X
Neurobiological Analysis
- Si Wu, Jianfeng Feng, Shun-ichi Amari:

The Ideal Noisy Environment for Fast Neural Computation. 1-6 - Xu-Dong Wang, Jiang Hao, Mu-Ming Poo, Xiaohui Zhang:

How Does a Neuron Perform Subtraction? Arithmetic Rules of Synaptic Integration of Excitation and Inhibition. 7-14 - Jun Liu, Jian Wu, Zhengguo Lou, Guang Li:

Stochastic Resonance Enhancing Detectability of Weak Signal by Neuronal Networks Model for Receiver. 15-20 - Huafu Chen, Ling Zeng, Dezhong Yao, Qing Gao:

A Gaussian Dynamic Convolution Models of the FMRI BOLD Response. 21-26 - Mingxiao Ding, Naigong Yu, Xiaogang Ruan:

Cooperative Motor Learning Model for Cerebellar Control of Balance and Locomotion. 27-33 - Toshihiko Matsuka:

A Model of Category Learning with Attention Augmented Simplistic Prototype Representation. 34-40 - Toshihiko Matsuka, Arieta Chouchourelou:

On the Learning Algorithms of Descriptive Models of High-Order Human Cognition. 41-49 - Rubin Wang, Jing Yu, Zhikang Zhang:

A Neural Model on Cognitive Process. 50-59
Theoretical Analysis
- Zongben Xu, Jianjun Wang, Deyu Meng:

Approximation Bound of Mixture Networks in Lomegap Spaces. 60-65 - Feng-Jun Li, Zongben Xu:

Integral Transform and Its Application to Neural Network Approximation. 66-71 - Chunmei Ding, Feilong Cao, Zongben Xu:

The Essential Approximation Order for Neural Networks with Trigonometric Hidden Layer Units. 72-79 - Yong Fang, Tommy W. S. Chow:

Wavelets Based Neural Network for Function Approximation. 80-85 - Alejandro Cruz Sandoval, Wen Yu:

Passivity Analysis of Dynamic Neural Networks with Different Time-Scales. 86-92 - Zhiguo Yang, Daoyi Xu, Yumei Huang:

Exponential Dissipativity of Non-autonomous Neural Networks with Distributed Delays and Reaction-Diffusion Terms. 93-99 - Min-Jae Kang, Ho-Chan Kim, Farrukh Aslam Khan

, Wang-Cheol Song, Jacek M. Zurada:
Convergence Analysis of Continuous-Time Neural Networks. 100-108 - Weirui Zhao, Huanshui Zhang:

Global Convergence of Continuous-Time Recurrent Neural Networks with Delays. 109-114 - Xiaoxin Liao, Zhigang Zeng

:
Global Exponential Stability in Lagrange Sense of Continuous-Time Recurrent Neural Networks. 115-121 - Yi Shen, Meiqin Liu, Xiaodong Xu:

Global Exponential Stability of Recurrent Neural Networks with Time-Varying Delay. 122-128 - Gang Wang, Huaguang Zhang, Chonghui Song:

New Criteria of Global Exponential Stability for a Class of Generalized Neural Networks with Time-Varying Delays. 129-134 - Changyin Sun, Linfeng Li:

Dynamics of General Neural Networks with Distributed Delays. 135-140 - Shuyong Li, Yumei Huang, Daoyi Xu:

On Equilibrium and Stability of a Class of Neural Networks with Mixed Delays. 141-146 - Hanlin He, Xiaoxin Liao:

Stability Analysis of Neutral Neural Networks with Time Delay. 147-152 - Jianlong Qiu

, Jinde Cao:
Global Asymptotical Stability in Neutral-Type Delayed Neural Networks with Reaction-Diffusion Terms. 153-158 - Wudai Liao, Zhongsheng Wang, Xiaoxin Liao:

Almost Sure Exponential Stability on Interval Stochastic Neural Networks with Time-Varying Delays. 159-164 - Xuyang Lou, Baotong Cui

:
Stochastic Robust Stability of Markovian Jump Nonlinear Uncertain Neural Networks with Wiener Process. 165-171 - Li Xie, Tianming Liu, Guodong Lu, Jilin Liu, Stephen T. C. Wong:

Stochastic Robust Stability Analysis for Markovian Jump Discrete-Time Delayed Neural Networks with Multiplicative Nonlinear Perturbations. 172-178 - Jun Xu, Daoying Pi, Yong-Yan Cao:

Global Robust Stability of General Recurrent Neural Networks with Time-Varying Delays. 179-184 - Yongqing Yang:

Robust Periodicity in Recurrent Neural Network with Time Delays and Impulses. 185-191 - Tianping Chen, Wenlian Lu:

Global Asymptotical Stability of Cohen-Grossberg Neural Networks with Time-Varying and Distributed Delays. 192-197 - Ce Ji, Huaguang Zhang, Chonghui Song:

LMI Approach to Robust Stability Analysis of Cohen-Grossberg Neural Networks with Multiple Delays. 198-203 - Tianping Chen, Lili Wang, Changlei Ren:

Existence and Global Stability Analysis of Almost Periodic Solutions for Cohen- Grossberg Neural Networks. 204-210 - Li-qun Zhou, Guang-Da Hu:

A New Sufficient Condition on the Complete Stability of a Class Cellular Neural Networks. 211-216 - Weifan Zheng, Jiye Zhang, Weihua Zhang:

Stability Analysis of Reaction-Diffusion Recurrent Cellular Neural Networks with Variable Time Delays. 217-223 - Wudai Liao, Yulin Xu, Xiaoxin Liao:

Exponential Stability of Delayed Stochastic Cellular Neural Networks. 224-229 - Chaojin Fu, Boshan Chen:

Global Exponential Stability of Cellular Neural Networks with Time-Varying Delays and Impulses. 230-235 - Jiye Zhang, Dianbo Ren, Weihua Zhang:

Global Exponential Stability of Fuzzy Cellular Neural Networks with Variable Delays. 236-242 - Tingwen Huang, Marco Roque-Sol:

Stability of Fuzzy Cellular Neural Networks with Impulses. 243-248 - Xiaoxin Liao, Fei Xu, Pei Yu:

Absolute Stability of Hopfield Neural Network. 249-254 - Bingji Xu, Qun Wang:

Robust Stability Analysis of Uncertain Hopfield Neural Networks with Markov Switching. 255-260 - Wei Zhu, Daoyi Xu:

Asymptotic Stability of Second-Order Discrete-Time Hopfield Neural Networks with Variable Delays. 261-266 - Shengrui Zhang, Runnian Ma:

Convergence Analysis of Discrete Delayed Hopfield Neural Networks. 267-272 - Minghui Jiang, Yi Shen, Xiaoxin Liao:

An LMI-Based Approach to the Global Stability of Bidirectional Associative Memory Neural Networks with Variable Delay. 273-278 - Hui Wang, Xiaofeng Liao, Chuandong Li

, Degang Yang
:
Existence of Periodic Solution of BAM Neural Network with Delay and Impulse. 279-284 - Min Xiao, Jinde Cao:

On Control of Hopf Bifurcation in BAM Neural Network with Delayed Self-feedback. 285-290 - Hong Qu, Zhang Yi:

Convergence and Periodicity of Solutions for a Class of Discrete-Time Recurrent Neural Network with Two Neurons. 291-296 - Wentong Liao, Linshan Wang:

Existence and Global Attractability of Almost Periodic Solution for Competitive Neural Networks with Time-Varying Delays and Different Time Scales. 297-302 - Jin Zhou, Tianping Chen, Lan Xiang, Meichun Liu:

Global Synchronization of Impulsive Coupled Delayed Neural Networks. 303-308 - Ping Li:

Synchronization of a Class of Coupled Discrete Recurrent Neural Networks with Time Delay. 309-315 - Yan Huang, Xiao-Song Yang:

Chaos and Bifurcation in a New Class of Simple Hopfield Neural Network. 316-321 - Hongwei Wang, Hong Gu:

Synchronization of Chaotic System with the Perturbation Via Orthogonal Function Neural Network. 322-327 - Haigeng Luo, Xiaodong Xu, Xiaoxin Liao:

Numerical Analysis of a Chaotic Delay Recurrent Neural Network with Four Neurons. 328-333 - Guang-Hong Wang, Ping Jiang:

Autapse Modulated Bursting. 334-343
Neurodynamic Optimization
- Guocheng Li, Shiji Song, Cheng Wu, Zifang Du:

A Neural Network Model for Non-smooth Optimization over a Compact Convex Subset. 344-349 - Shiji Song, Guocheng Li, Xiaohong Guan:

Differential Inclusions-Based Neural Networks for Nonsmooth Convex Optimization on a Closed Convex Subset. 350-358 - Fuye Feng, Yong Xia, Quanju Zhang:

A Recurrent Neural Network for Linear Fractional Programming with Bound Constraints. 359-368 - Qingshan Liu, Jun Wang

, Jinde Cao:
A Delayed Lagrangian Network for Solving Quadratic Programming Problems with Equality Constraints. 369-378 - Yao-qun Xu, Ming Sun, Guangren Duan:

Wavelet Chaotic Neural Networks and Their Application to Optimization Problems. 379-384 - Ling Qin, Yixin Chen, Ling Chen, Yuan Yao:

A New Optimization Algorithm Based on Ant Colony System with Density Control Strategy. 385-390 - Paulo Henrique Siqueira

, Sérgio Scheer
, Maria Teresinha Arns Steiner:
A New Neural Network Approach to the Traveling Salesman Problem. 391-398 - Lijun Liu, Wei Wu:

Dynamical System for Computing Largest Generalized Eigenvalue. 399-404 - Yiguang Liu, Zhisheng You:

A Concise Functional Neural Network for Computing the Extremum Eigenpairs of Real Symmetric Matrices. 405-413
Learning Algorithms
- Frank Emmert-Streib

:
A Novel Stochastic Learning Rule for Neural Networks. 414-423 - Deepak Mishra

, Abhishek Yadav, Prem Kumar Kalra:
Learning with Single Quadratic Integrate-and-Fire Neuron. 424-429 - Hongyu Li, I-Fan Shen:

Manifold Learning of Vector Fields. 430-435 - Hongyu Li, I-Fan Shen:

Similarity Measure for Vector Field Learning. 436-441 - Jinwen Ma, Bin Cao

:
The Mahalanobis Distance Based Rival Penalized Competitive Learning Algorithm. 442-447 - Seongwon Cho, Jaemin Kim, Sun-Tae Chung:

Dynamic Competitive Learning. 448-455 - Jinwuk Seok

, Seongwon Cho, Jaemin Kim:
Hyperbolic Quotient Feature Map for Competitive Learning Neural Networks. 456-463 - Zhiwu Lu

, Jinwen Ma:
A Gradient Entropy Regularized Likelihood Learning Algorithm on Gaussian Mixture with Automatic Model Selection. 464-469 - Ah-Hwee Tan

:
Self-organizing Neural Architecture for Reinforcement Learning. 470-475 - SeungGwan Lee:

On the Efficient Implementation Biologic Reinforcement Learning Using Eligibility Traces. 476-481 - Lianwei Zhao, Siwei Luo, Mei Tian, Chao Shao, Hongliang Ma:

Combining Label Information and Neighborhood Graph for Semi-supervised Learning. 482-488 - Liang Liu, Naigong Yu, Mingxiao Ding, Xiaogang Ruan:

A Cerebellar Feedback Error Learning Scheme Based on Kalman Estimator for Tracing in Dynamic System. 489-495 - Lei Guo, Hong Wang:

An Optimal Iterative Learning Scheme for Dynamic Neural Network Modelling. 496-501 - Toshinori Deguchi, Naohiro Ishii:

Delayed Learning on Internal Memory Network and Organizing Internal States. 502-508 - Huawei Chen, Fan Jin:

A Novel Learning Algorithm for Feedforward Neural Networks. 509-514 - He-Sheng Tang, Song-Tao Xue, Rong Chen:

On Hinfinity Filtering in Feedforward Neural Networks Training and Pruning. 515-523 - Jinhua Xu, Daniel W. C. Ho

:
A Node Pruning Algorithm Based on Optimal Brain Surgeon for Feedforward Neural Networks. 524-529 - Eu Jin Teoh, Cheng Xiang

, Kay Chen Tan:
A Fast Learning Algorithm Based on Layered Hessian Approximations and the Pseudoinverse. 530-536 - Hai Zhao, Bao-Liang Lu

:
A Modular Reduction Method for k-NN Algorithm with Self-recombination Learning. 537-544 - Haixia Chen, Senmiao Yuan, Kai Jiang:

Selective Neural Network Ensemble Based on Clustering. 545-550 - Songsong Li, Toshimi Okada, Xiaoming Chen, Zheng Tang:

An Individual Adaptive Gain Parameter Backpropagation Algorithm for Complex-Valued Neural Networks. 551-557 - Marco A. Moreno-Armendáriz

, Giovanni Egidio Pazienza, Wen Yu:
Training Cellular Neural Networks with Stable Learning Algorithm. 558-563 - Yangmin Li, Xin Chen:

A New Stochastic PSO Technique for Neural Network Training. 564-569 - Ben Niu, Yunlong Zhu, Xiaoxian He:

A Multi-population Cooperative Particle Swarm Optimizer for Neural Network Training. 570-576 - Haichang Gao, Boqin Feng, Yun Hou, Li Zhu:

Training RBF Neural Network with Hybrid Particle Swarm Optimization. 577-583 - Ming-Jung Seow, Vijayan K. Asari:

Robust Learning by Self-organization of Nonlinear Lines of Attractions. 584-589 - Kai Zhang, Gen-Zhi Guan, Fang-Fang Chen, Lin Zhang, Zhi-Ye Du:

Improved Learning Algorithm Based on Generalized SOM for Dynamic Non-linear System. 590-598 - Kao-Shing Hwang

, Yu-Jen Chen, Tzung-Feng Lin:
Q-Learning with FCMAC in Multi-agent Cooperation. 599-606 - Xuesong Wang, Yuhu Cheng, Wei Sun:

Q Learning Based on Self-organizing Fuzzy Radial Basis Function Network. 607-615 - Haisheng Lin, Xiao Zhi Gao, Xianlin Huang, Zhuoyue Song:

A Fuzzy Neural Networks with Structure Learning. 616-622 - Mariela Cerrada

, José Aguilar
, André Titli:
Reinforcement Learning-Based Tuning Algorithm Applied to Fuzzy Identification. 623-630 - Fei Han, Tat-Ming Lok, Michael R. Lyu:

A New Learning Algorithm for Function Approximation Incorporating A Priori Information into Extreme Learning Machine. 631-636 - Jun-Seok Lim, Koeng-Mo Sung, Joonil Song:

Robust Recursive Complex Extreme Learning Machine Algorithm for Finite Numerical Precision. 637-643 - You Xu, Yang Shu:

Evolutionary Extreme Learning Machine - Based on Particle Swarm Optimization. 644-652 - You Xu:

A Gradient-Based ELM Algorithm in Regressing Multi-variable Functions. 653-658 - Jaehun Lee, Wooyong Chung, Euntai Kim:

A New Genetic Approach to Structure Learning of Bayesian Networks. 659-668
Model Design
- Shoujue Wang, Singsing Liu, Wenming Cao:

Research on Multi-Degree-of-Freedom Neurons with Weighted Graphs. 669-675 - Hong Yue

, Aurelie J. A. Leprand, Hong Wang:
Output PDF Shaping of Singular Weights System: Monotonical Performance Design. 676-682 - Yi Shen, Meiqin Liu, Xiaodong Xu:

Stochastic Time-Varying Competitive Neural Network Systems. 683-688 - Dong-Chul Park, Duc-Hoai Nguyen, Song-Jae Lee, Yunsik Lee:

Heterogeneous Centroid Neural Networks. 689-694 - Shuzhong Yang, Siwei Luo, Jianyu Li:

Building Multi-layer Small World Neural Network. 695-700 - Stones Lei Zhang, Zhang Yi, Jiancheng Lv:

Growing Hierarchical Principal Components Analysis Self-Organizing Map. 701-706 - Andrey Gavrilov, Young-Koo Lee, Sungyoung Lee:

Hybrid Neural Network Model Based on Multi-layer Perceptron and Adaptive Resonance Theory. 707-713 - Yan-Peng Liu, Ming-Guang Wu, Ji-Xin Qian:

Evolving Neural Networks Using the Hybrid of Ant Colony Optimization and BP Algorithms. 714-722 - Dong-Sun Kim, Hyunsik Kim, Duck-Jin Chung:

A Genetic Algorithm with Modified Tournament Selection and Efficient Deterministic Mutation for Evolving Neural Network. 723-731 - Yunhui Liu, Siwei Luo, Ziang Lv, Hua Huang:

A Neural Network Structure Evolution Algorithm Based on e, m Projections and Model Selection Criterion. 732-738 - Zhuhong Zhang, Xin Tu, Chang-Gen Peng:

A Parallel Coevolutionary Immune Neural Network and Its Application to Signal Simulation. 739-746 - Ji-Xiang Du, Chuan-Min Zhai, Zengfu Wang, Guo-Jun Zhang:

A Novel Elliptical Basis Function Neural Networks Optimized by Particle Swarm Optimization. 747-751 - Ming Ma, Libiao Zhang, Jie Ma, Chunguang Zhou:

Fuzzy Neural Network Optimization by a Particle Swarm Optimization Algorithm. 752-761 - Sumitra Mukhopadhyay, Ajit K. Mandal:

Fuzzy Rule Extraction Using Robust Particle Swarm Optimization. 762-767 - Seok-Beom Roh, Sung-Kwun Oh, Tae-Chon Ahn:

A New Design Methodology of Fuzzy Set-Based Polynomial Neural Networks with Symbolic Gene Type Genetic Algorithms. 768-773 - Sung-Kwun Oh, In-Tae Lee, Jeoung-Nae Choi:

Design of Fuzzy Polynomial Neural Networks with the Aid of Genetic Fuzzy Granulation and Its Application to Multi-variable Process System. 774-779 - Ho-Sung Park, Sung-Kwun Oh, Tae-Chon Ahn:

A Novel Self-Organizing Fuzzy Polynomial Neural Networks with Evolutionary FPNs: Design and Analysis. 780-785 - Sung-Kwun Oh, Byoung-Jun Park, Witold Pedrycz:

Design of Fuzzy Neural Networks Based on Genetic Fuzzy Granulation and Regression Polynomial Fuzzy Inference. 786-791 - Lei Zhang, Guoyou Wang, Wentao Wang:

A New Fuzzy ART Neural Network Based on Dual Competition and Resonance Technique. 792-797 - Chang-Wook Han, Jung-Il Park:

Simulated Annealing Based Learning Approach for the Design of Cascade Architectures of Fuzzy Neural Networks. 798-803 - Huaguang Zhang, Yanhong Luo, Derong Liu

:
A New Fuzzy Identification Method Based on Adaptive Critic Designs. 804-809 - Wei-Hong Xu, Guo-Ping Chen, Zhong-Ke Xie:

Impacts of Perturbations of Training Patterns on Two Fuzzy Associative Memories Based on T-Norms. 810-817 - Cornelio Yáñez-Márquez, Luis Pastor Sánchez Fernández, Itzamá López-Yáñez

:
Alpha-Beta Associative Memories for Gray Level Patterns. 818-823 - Zhigang Zeng

, Jun Wang
:
Associative Memories Based on Discrete-Time Cellular Neural Networks with One-Dimensional Space-Invariant Templates. 824-829 - Roy Kwang Yang Chang, Chu Kiong Loo

, Machavaram Venkata Chalapathy Rao:
Autonomous and Deterministic Probabilistic Neural Network Using Global k-Means. 830-836 - Marija Bacauskiene, Vladas Cibulskis, Antanas Verikas:

Selecting Variables for Neural Network Committees. 837-842 - Qingyu Xiong, Jian Huang, Xiaodong Xian, Qian Xiao:

An Adaptive Network Topology for Classification. 843-848 - Emad A. M. Andrews Shenouda:

A Quantitative Comparison of Different MLP Activation Functions in Classification. 849-857 - Eu Jin Teoh, Cheng Xiang

, Kay Chen Tan:
Estimating the Number of Hidden Neurons in a Feedforward Network Using the Singular Value Decomposition. 858-865 - Jiang Zhong, Chunxiao Ye, Yong Feng, Ying Zhou, Zhongfu Wu:

Neuron Selection for RBF Neural Network Classifier Based on Multiple Granularities Immune Network. 866-872 - Yuehui Chen, Lizhi Peng, Ajith Abraham:

Hierarchical Radial Basis Function Neural Networks for Classification Problems. 873-879 - Fang Liu, Jian-Zhong Zhou, Fangpeng Qiu, Junjie Yang:

Biased Wavelet Neural Network and Its Application to Streamflow Forecast. 880-888 - Yanlai Li, Kuanquan Wang, Tao Li:

A Goal Programming Based Approach for Hidden Targets in Layer-by-Layer Algorithm of Multilayer Perceptron Classifiers. 889-894 - Zhou Yang, Wenjie Zhu, Liang Ji:

SLIT: Designing Complexity Penalty for Classification and Regression Trees Using the SRM Principle. 895-902 - Haijun Li, Zheng-Xuan Wang, Limin Wang, Senmiao Yuan:

Flexible Neural Tree for Pattern Recognition. 903-908 - Lei Wang, Yinling Nie, Weike Nie, Licheng Jiao:

A Novel Model of Artificial Immune Network and Simulations on Its Dynamics. 909-914
Kernel Methods
- Bo Chen, Hongwei Liu, Zheng Bao:

A Kernel Optimization Method Based on the Localized Kernel Fisher Criterion. 915-921 - Bo Jin, Yan-Qing Zhang:

Genetic Granular Kernel Methods for Cyclooxygenase-2 Inhibitor Activity Comparison. 922-927 - Luoqing Li, Chenggao Wan:

Support Vector Machines with Beta-Mixing Input Sequences. 928-935 - Fangfang Wu, Yinliang Zhao:

Least Squares Support Vector Machine on Gaussian Wavelet Kernel Function Set. 936-941 - Huihong Jin, Zhiqing Meng, Xuanxi Ning:

A Smoothing Multiple Support Vector Machine Model. 942-948 - Hongbing Liu, Shengwu Xiong, Xiaoxiao Niu:

Fuzzy Support Vector Machines Based on Spherical Regions. 949-954 - Marek Bundzel

, Tomás Kasanický
, Baltazár Frankovic:
Building Support Vector Machine Alternative Using Algorithms of Computational Geometry. 955-961 - Shengfeng Tian, Shaomin Mu, Chuanhuan Yin:

Cooperative Clustering for Training SVMs. 962-967 - Xiaohong Wang, Sitao Wu, Xiaoru Wang

, Qunzhan Li:
SVMV - A Novel Algorithm for the Visualization of SVM Classification Results. 968-973 - Genting Yan, Guangfu Ma, Liangkuan Zhu:

Support Vector Machines Ensemble Based on Fuzzy Integral for Classification. 974-980 - Shu Yu, Xiaowei Yang, Zhifeng Hao, Yanchun Liang:

An Adaptive Support Vector Machine Learning Algorithm for Large Classification Problem. 981-990 - Woo-Sung Kang, Ki Hong Im, Jin Young Choi:

SVDD-Based Method for Fast Training of Multi-class Support Vector Classifier. 991-996 - Bo Liu, Xiaowei Yang, Zhifeng Hao:

Binary Tree Support Vector Machine Based on Kernel Fisher Discriminant for Multi-classification. 997-1003 - Jianhua Xu:

A Fast and Sparse Implementation of Multiclass Kernel Perceptron Algorithm. 1004-1009 - Jingqing Jiang, Chuyi Song, Chunguo Wu, Yanchun Liang, Xiaowei Yang, Zhifeng Hao:

Mutual Conversion of Regression and Classification Based on Least Squares Support Vector Machines. 1010-1015 - Liangzhi Gan, Hai-kuan Liu, Youxian Sun:

Sparse Least Squares Support Vector Machine for Function Estimation. 1016-1021 - Feng-Qing Han, Da-Cheng Wang, Chuan-Dong Li

, Xiao-Feng Liao:
A Multiresolution Wavelet Kernel for Support Vector Regression. 1022-1029 - Zhen Yang, Jun Guo, Weiran Xu, Xiangfei Nie, Jian Wang, Jianjun Lei:

Multi-scale Support Vector Machine for Regression Estimation. 1030-1037 - Dong-Chul Park, Chung-Nguyen Tran, Sancho Park:

Gradient Based Fuzzy C-Means Algorithm with a Mercer Kernel. 1038-1043 - Yunwei Pu, Ming Zhu, Weidong Jin, Laizhao Hu:

An Efficient Similarity-Based Validity Index for Kernel Clustering Algorithm. 1044-1049 - En-Hui Zheng, Min Yang, Ping Li, Zhi-Huan Song:

Fuzzy Support Vector Clustering. 1050-1056 - Chengbo Wang, Chengan Guo:

An SVM Classification Algorithm with Error Correction Ability Applied to Face Recognition. 1057-1062 - Zejian Yuan, Lei Yang, Yanyun Qu, Yuehu Liu, Xinchun Jia:

A Boosting SVM Chain Learning for Visual Information Retrieval. 1063-1069 - Bo Wu

, Liangpei Zhang, Pingxiang Li, Jinmu Zhang:
Nonlinear Estimation of Hyperspectral Mixture Pixel Proportion Based on Kernel Orthogonal Subspace Projection. 1070-1075 - Li Sun, Ling Jing, Xiaodong Xia:

A New Proximal Support Vector Machine for Semi-supervised Classification. 1076-1082 - Liefeng Bo, Ling Wang, Licheng Jiao:

Sparse Gaussian Processes Using Backward Elimination. 1083-1088 - Xunkai Wei, Ying-Hong Li, Yue Feng:

Comparative Study of Extreme Learning Machine and Support Vector Machine. 1089-1095
ICA and BSS
- Woong Myung Kim, Chan-Ho Park, Hyon-Soo Lee:

Multi-level Independent Component Analysis. 1096-1102 - Tao Yu, Huai-Zong Shao, Qi-Cong Peng:

An ICA Learning Algorithm Utilizing Geodesic Approach. 1103-1108 - Gang Wang, Nini Rao, Zhi-Lin Zhang, Quanyi Mo, Pu Wang:

An Extended Online Fast-ICA Algorithm. 1109-1114 - Shangming Yang:

Gradient Algorithm for Nonnegative Independent Component Analysis. 1115-1120 - Fasong Wang, Hongwei Li, Rui Li, Shaoquan Yu:

Unified Parametric and Non-parametric ICA Algorithm for Arbitrary Sources. 1121-1126 - Xiaofei Shi, Jidong Suo, Chang Liu, Li Li:

A Novel Kurtosis-Dependent Parameterized Independent Component Analysis Algorithm. 1127-1132 - Gang Wang, Xin Xu

, Dewen Hu:
Local Stability Analysis of Maximum Nongaussianity Estimation in Independent Component Analysis. 1133-1139 - Mao Ye

, Xue Li
, Chengfu Yang, Zengan Gao:
Convergence Analysis of a Discrete-Time Single-Unit Gradient ICA Algorithm. 1140-1146 - Ji-Min Ye, Shun-Tian Lou, Hai-Hong Jin, Xian-Da Zhang:

An Novel Algorithm for Blind Source Separation with Unknown Sources Number. 1147-1152 - Gaoming Huang, Luxi Yang, Zhenya He:

Blind Source Separation Based on Generalized Variance. 1153-1158 - Junying Zhang, Hongyi Zhang, Le Wei, Yue Joseph Wang:

Blind Source Separation with Pattern Expression NMF. 1159-1164 - Chun-Hou Zheng, Zhi-Kai Huang, Michael R. Lyu, Tat-Ming Lok:

Nonlinear Blind Source Separation Using Hybrid Neural Networks. 1165-1170 - Xiaolu Li, Zhaoshui He:

Identification of Mixing Matrix in Blind Source Separation. 1171-1176 - Wenqiang Guo, Tianshuang Qiu, Yuzhang Zhao, Daifeng Zha:

Identification of Independent Components Based on Borel Measure for Under-Determined Mixtures. 1177-1182 - Ronghua Li, Ming Xiao:

Estimation of Delays and Attenuations for Underdetermined BSS in Frequency Domain. 1183-1188 - Gaoming Huang, Yang Gao, Luxi Yang, Zhenya He:

Application of Blind Source Separation to Five-Element Cross Array Passive Location. 1189-1194 - Hua Zhang, Da-Zheng Feng:

Convolutive Blind Separation of Non-white Broadband Signals Based on a Double-Iteration Method. 1195-1201 - Bin Xia, Liqing Zhang:

Multichannel Blind Deconvolution Using a Novel Filter Decomposition Method. 1202-1207 - Feng Jiang, Liqing Zhang, Bin Xia:

Two-Stage Blind Deconvolution for V-BLAST OFDM System. 1208-1213
Data Preprocessing
- Xuelei Hu, Lei Xu:

A Comparative Study on Selection of Cluster Number and Local Subspace Dimension in the Mixture PCA Models. 1214-1221 - Ping Ling, Chunguang Zhou:

Adaptive Support Vector Clustering for Multi-relational Data Mining. 1222-1230 - XuLei Yang, Qing Song, Meng Joo Er:

Robust Data Clustering in Mercer Kernel-Induced Feature Space. 1231-1237 - Hyun-Chul Kim, Jaewook Lee:

Pseudo-density Estimation for Clustering with Gaussian Processes. 1238-1243 - Lin Wang, Minghu Jiang, Yinghua Lu, Frank Noé, Jeremy C. Smith:

Clustering Analysis of Competitive Learning Network for Molecular Data. 1244-1249 - Lin Wang, Minghu Jiang, Yinghua Lu, Frank Noé, Jeremy C. Smith:

Self-Organizing Map Clustering Analysis for Molecular Data. 1250-1255 - Maoting Gao, Zheng-ou Wang:

A Conscientious Rival Penalized Competitive Learning Text Clustering Algorithm. 1256-1260 - Kin Keung Lai

, Lean Yu, Ligang Zhou, Shouyang Wang
:
Self-Organizing-Map-Based Metamodeling for Massive Text Data Exploration. 1261-1266 - Jiabing Wang, Hong Peng, Jing-Song Hu, Jun Zhang:

Ensemble Learning for Keyphrases Extraction from Scientific Document. 1267-1272 - Yugang Fan, Ping Li, Zhi-Huan Song:

Grid-Based Fuzzy Support Vector Data Description. 1273-1279 - Yang Weon Lee:

Development of the Hopfield Neural Scheme for Data Association in Multi-target Tracking. 1280-1285 - Dong Sun, Yong Deng

:
Determine Discounting Coefficient in Data Fusion Based on Fuzzy ART Neural Network. 1286-1292 - Junlin Zhou, Yan Fu:

Scientific Data Lossless Compression Using Fast Neural Network. 1293-1298 - Xiu-Rong Zhao, Qing He, Zhongzhi Shi:

HyperSurface Classifiers Ensemble for High Dimensional Data Sets. 1299-1304 - Jen-Cheng Chen, Jia-Sheng Heh, Maiga Chang

:
Designing a Decompositional Rule Extraction Algorithm for Neural Networks. 1305-1311 - Qutang Cai, Changshui Zhang:

Estimating Fractal Intrinsic Dimension from the Neighborhood. 1312-1318 - Junying Chen, Zheng Qin:

Dimensionality Reduction for Evolving RBF Networks with Particle Swarms. 1319-1325 - Heyong Wang, Jie Zheng, Zheng-an Yao, Lei Li:

Improved Locally Linear Embedding Through New Distance Computing. 1326-1333 - Dongyue Chen, Liming Zhang:

An Incremental Linear Discriminant Analysis Using Fixed Point Method. 1334-1339 - Jun-Seok Lim, Joonil Song, Yonggook Pyeon:

A Prewhitening RLS Projection Alternated Subspace Tracking (PAST) Algorithm. 1340-1345 - Junping Zhang, Chao Shen, Jufu Feng:

Classification with the Hybrid of Manifold Learning and Gabor Wavelet. 1346-1351 - Xizhao Wang, Hui Zhang:

A Novel Input Stochastic Sensitivity Definition of Radial Basis Function Neural Networks and Its Application to Feature Selection. 1352-1358 - Mohammed Attik:

Using Ensemble Feature Selection Approach in Selecting Subset with Relevant Features. 1359-1366 - Yan Wu

, Yang Yang:
A New Method for Feature Selection. 1367-1372 - Zongxia Xie

, Qinghua Hu, Daren Yu:
Improved Feature Selection Algorithm Based on SVM and Correlation. 1373-1380 - Ziqiang Wang, Dexian Zhang:

Feature Selection in Text Classification Via SVM and LSI. 1381-1386 - Qijun Zhao, Hongtao Lu, David Zhang

:
Parsimonious Feature Extraction Based on Genetic Algorithms and Support Vector Machines. 1387-1393 - Hui Zhang, Tu Bao Ho, Mao Song Lin, Xuefeng Liang:

Feature Extraction for Time Series Classification Using Discriminating Wavelet Coefficients. 1394-1399 - Gang Liu, Xihai Li, Daizhi Liu, Wei-Gang Zhai:

Feature Extraction of Underground Nuclear Explosions Based on NMF and KNMF. 1400-1405 - Feng Zhu, Yafeng Hu, Xianda Zhang, Deguang Xie:

Hidden Markov Model Networks for Multiaspect Discriminative Features Extraction from Radar Targets. 1406-1411 - Dong-hong Liu, Zhi-jie Chen, Wen-long Hu, Yong-shun Zhang:

Application of Self-organizing Feature Neural Network for Target Feature Extraction. 1412-1420 - Shi-Fei Ding, Zhong-Zhi Shi:

Divergence-Based Supervised Information Feature Compression Algorithm. 1421-1426

manage site settings
To protect your privacy, all features that rely on external API calls from your browser are turned off by default. You need to opt-in for them to become active. All settings here will be stored as cookies with your web browser. For more information see our F.A.Q.


Google
Google Scholar
Semantic Scholar
Internet Archive Scholar
CiteSeerX
ORCID














