Guang Bin Huang


Ontology type: schema:Person     


Person Info

NAME

Guang Bin

SURNAME

Huang

Publications in SciGraph latest 50 shown

  • 2018-10-17 Target Coding for Extreme Learning Machine in PROCEEDINGS OF ELM-2017
  • 2018-10 Conditional Random Mapping for Effective ELM Feature Representation in COGNITIVE COMPUTATION
  • 2018-08 Generating Word Embeddings from an Extreme Learning Machine for Sentiment Analysis and Sequence Labeling Tasks in COGNITIVE COMPUTATION
  • 2018 An Automatic Identification System (AIS) Database for Maritime Trajectory Prediction and Data Mining in PROCEEDINGS OF ELM-2016
  • 2018 Face Recognition Benchmark with ID Photos in ARTIFICIAL INTELLIGENCE AND ROBOTICS
  • 2017 Classification of Foreign Object Debris Using Integrated Visual Features and Extreme Learning Machine in COMPUTER VISION
  • 2016-02 Guest editorial: Special issue on Extreme learning machine and applications (II) in NEURAL COMPUTING AND APPLICATIONS
  • 2016-01 Guest editorial: Special issue on Extreme learning machine and applications (I) in NEURAL COMPUTING AND APPLICATIONS
  • 2016 Sparse Extreme Learning Machine for Regression in PROCEEDINGS OF ELM-2015 VOLUME 2
  • 2015-06 What are Extreme Learning Machines? Filling the Gap Between Frank Rosenblatt’s Dream and John von Neumann’s Puzzle in COGNITIVE COMPUTATION
  • 2015-02 Extreme learning machines: new trends and applications in SCIENCE CHINA INFORMATION SCIENCES
  • 2015 Gradient-Based No-Reference Image Blur Assessment Using Extreme Learning Machine in PROCEEDINGS OF ELM-2014 VOLUME 2
  • 2015 Extreme Learning Machine for Clustering in PROCEEDINGS OF ELM-2014 VOLUME 1
  • 2015 Detection of Drivers’ Distraction Using Semi-Supervised Extreme Learning Machine in PROCEEDINGS OF ELM-2014 VOLUME 2
  • 2015 Driver Workload Detection in On-Road Driving Environment Using Machine Learning in PROCEEDINGS OF ELM-2014 VOLUME 2
  • 2015 Machine Learning Reveals Different Brain Activities in Visual Pathway during TOVA Test in PROCEEDINGS OF ELM-2014 VOLUME 1
  • 2014-09 An Insight into Extreme Learning Machines: Random Neurons, Random Features and Kernels in COGNITIVE COMPUTATION
  • 2014-04 Learning to Rank with Extreme Learning Machine in NEURAL PROCESSING LETTERS
  • 2013-03 An extreme learning machine approach for speaker recognition in NEURAL COMPUTING AND APPLICATIONS
  • 2012-12 Self-Adaptive Evolutionary Extreme Learning Machine in NEURAL PROCESSING LETTERS
  • 2012-09 Editorial in SOFT COMPUTING
  • 2012 Fast Construction of Single-Hidden-Layer Feedforward Networks in HANDBOOK OF NATURAL COMPUTING
  • 2011-08 Patient Outcome Prediction with Heart Rate Variability and Vital Signs in JOURNAL OF SIGNAL PROCESSING SYSTEMS
  • 2011-06 Extreme learning machines: a survey in INTERNATIONAL JOURNAL OF MACHINE LEARNING AND CYBERNETICS
  • 2011-06 Extended sequential adaptive fuzzy inference system for classification problems in EVOLVING SYSTEMS
  • 2011-06 Composite Function Wavelet Neural Networks with Differential Evolution and Extreme Learning Machine in NEURAL PROCESSING LETTERS
  • 2011 Extreme Learning Machine with Adaptive Growth of Hidden Nodes and Incremental Updating of Output Weights in AUTONOMOUS AND INTELLIGENT SYSTEMS
  • 2011 Face Recognition Based on Kernelized Extreme Learning Machine in AUTONOMOUS AND INTELLIGENT SYSTEMS
  • 2007 Minimum Mahalanobis Enclosing Ellipsoid Machine for Pattern Classification in ADVANCED INTELLIGENT COMPUTING THEORIES AND APPLICATIONS. WITH ASPECTS OF CONTEMPORARY INTELLIGENT COMPUTING TECHNIQUES
  • 2007 Solving Mahalanobis Ellipsoidal Learning Machine Via Second Order Cone Programming in ADVANCED INTELLIGENT COMPUTING THEORIES AND APPLICATIONS. WITH ASPECTS OF CONTEMPORARY INTELLIGENT COMPUTING TECHNIQUES
  • 2006 Channel Equalization Using Complex Extreme Learning Machine with RBF Kernels in ADVANCES IN NEURAL NETWORKS - ISNN 2006
  • 2005-10 Performance Evaluation of GAP-RBF Network in Channel Equalization in NEURAL PROCESSING LETTERS
  • 2005 Methods of Decreasing the Number of Support Vectors via k-Mean Clustering in ADVANCES IN INTELLIGENT COMPUTING
  • 2005 A New Modified Hybrid Learning Algorithm for Feedforward Neural Networks in ADVANCES IN NEURAL NETWORKS — ISNN 2005
  • 2005 Improvements to the Conventional Layer-by-Layer BP Algorithm in ADVANCES IN INTELLIGENT COMPUTING
  • 2004 Furnace Temperature Modeling for Continuous Annealing Process Based on Generalized Growing and Pruning RBF Neural Network in ADVANCES IN NEURAL NETWORKS - ISNN 2004
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