
Advances in Neural Networks - ISNN 2012
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Content
- Title
- Preface
- Organization
- Table of Contents
- Mathematical Modeling
- Attractor Neural Network Combined with Likelihood Maximization Algorithm for Boolean Factor Analysis
- Introduction
- Generative Model of Signals Appropriate for BFA
- Likelihood Maximization (LM)
- Hybrid LANNIA Method
- LANNIA Application to the Genome Data Set Analysis
- Discussion
- References
- Pruning Feedforward Neural Network Search Space Using Local Lipschitz Constants
- Introduction
- An FNN Is Lipschitzian
- Estimating the Lipschitz Constant of an FNN
- One Hidden Layer with a Single Output
- Multiple Output Units and Hidden Layers
- Computing Local Lipschitz Constant
- Illustrative Example
- Conclusions
- References
- Context FCM-Based Radial Basis Function Neural Networks with the Aid of Fuzzy Clustering
- Introduction
- Context FCM-Based p-RBF Neural Networks
- Architecture of Proposed Context FCM-Based p-RBF Neural Networks
- Context Fuzzy C-Means Clustering Algorithm
- The Learning Method of WLSE
- Experimental Results
- Automobile Miles Per Gallon Dataset (MPG)
- Boston Housing Dataset
- Concluding Remarks
- References
- Modeling Spectral Data Based on Mutual Information and Kernel Extreme Learning Machines
- Introduction
- MI and Kernel ELM Based Modeling Approach
- Feature Selection Based on Mutual Information
- Nonlinear Modeling Based on Kernel ELM
- Nonlinear Modeling Based on MI and Kernel ELM
- Application Study
- Conclusions
- References
- A Hierarchical Neural Network Architecture for Classification
- Introduction
- Hierarchical Neural Network for Classification
- Simulation Analysis
- Data Set Description
- Simulation Procedure
- Simulation Results and Analysis
- Conclusions
- References
- Discrete-Time ZNN Algorithms for Time-Varying Quadratic Programming Subject to Time-Varying Equality Constraint
- Problem Formulation and Continuous-Time ZNN Model
- Discrete-Time ZNN Algorithms
- Simulative and Numerical Verification
- Conclusions
- References
- Patch Processing for Relational Learning Vector Quantization
- Introduction
- Prototype Based Classification
- Patch Relational Generalized Learning Vector Quantization
- Experiments
- Conclusions
- References
- A Neural Network Modelfor Currency Arbitrage Detection
- Introduction
- The Lotka-Volterra Recurrent Neural Networks
- The LV RNN Model for Currency Arbitrage Detection
- Simulations
- Conclusions
- References
- A Rank Reduced Matrix Method in Extreme Learning Machine
- Introduction
- Review of ELM
- The Rank Reduced Matrix (MMR) Method in ELM
- Performance Evaluation
- Conclusions
- References
- Research of Dynamic Load Identification Based on Extreme Learning Machine
- Introduction
- Principle of Dynamic Load Identification
- Brief introduction of ELM
- Load Identification Based on ELM
- Data Source
- Identification Framework
- Numerical Results
- Conclusions
- References
- Fuzzy Relation-Based Polynomial Neural Networks Based on Hybrid Optimization
- Introduction
- Hybrid Optimization Algorithm
- A Design of the HOFRPNN
- Fuzzy Rule-Based Model
- Experimental Studies
- Gas Furnace Process
- Automobile Miles Per Gallon (MPG) Data
- Conclusions
- References
- Time-Varying Moore-Penrose Inverse Solving Shows Different Zhang Functions Leading to Different ZNN Models
- Introduction
- ZFs and ZNN Models
- Convergence Characteristics
- Computer Simulations
- Conclusions
- References
- A Multi-object Segmentation Algorithm Based on Background Modeling and Region Growing
- Introduction
- Related Work
- Multi-object Segmentation Algorithm
- Experimental Results
- Conclusion
- References
- Reflectance Estimation Using Local Regression Methods
- Introduction
- Regression Methods to Estimate Spectral Reflectance
- Global Regression Methods
- Local Regression Methods
- Experimental Results
- Conclusions
- References
- Applying a Novel Decision Rule to the Semi-supervised Clustering Method Based on One-Class SVM
- Introduction
- The CCOSVM Clustering Algorithm
- The Proposed Method CCOSVM_NDR
- Experimental Results
- Conclusions
- References
- State Estimation of Markovian Jump Neural Networks with Mixed Time Delays
- Introduction
- Problem Formulation
- Main Result
- Conclusion
- References
- Lattice Boltzmann Model for Nonlinear Heat Equations
- Introduction
- Lattice Boltzmann Model
- Equilibrium Distribution Functions and Their Higher-Order Moments
- Recovery of the Macroscopic Equations
- Numberical Simulation Results
- Conclusion
- References
- A Modified One-Layer Spiking Neural Network Involves Derivative of the State Function at Firing Time
- Introduction
- The Modified One-Layer Spiking Neural Network
- Error-Backpropagation Training Algorithm
- Numerical Simulation
- Conclusion
- References
- Modeling and Monitoring of Multimodes Process
- Introduction
- Modeling of Multimode Processes
- Introduction of LLE
- Modeling of the Multimodes Process
- Monitoring of Multimode Processes
- Illustration Example
- Conclusion
- References
- Data-Based Modeling and Monitoring for Multimode Processes Using Local Tangent Space Alignment
- Introduction
- The Main Steps of LTSA Algorithm
- Monitoring of Multimode Processes
- Illustration Example
- Conclusion
- References
- Modeling Rate-Dependent and Thermal-Drift Hysteresis through Preisach Model and Neural Network Optimization Approach
- Introduction
- Experimental Setup and Simulation Model
- Introduction to Preisach Hysteresis Model
- Off-Line Pre-identification of the Density Plane for Preisach Model
- On-Line Realtime Neurodynamic Optimization
- Numerical Simulation Tests and Discussions
- Conclusion
- References
- Neurodynamics
- The Neuron's Modeling Methods Based on Neurodynamics
- Introduction
- The Neuron's Dynamic Description
- The Neuron's Modeling Methods and Procedures Based on Neurodynamics
- Decision of the Involved Current Kinds of the Studied Neuron and Their Corresponding Dynamic General Equations
- The Parameter Values' Decision of the Currents' Dynamic General Equations
- The Neuron Model's Building, Testing and Revising
- Conclusion
- References
- Stability Analysis of Multiple Equilibria for Recurrent Neural Networks
- Introduction
- Paper Preparation
- Main Result
- Illustrative Example
- Conclusion
- References
- Addressing the Local Minima Problem by Output Monitoring and Modification Algorithms
- Introduction
- Gradient Descent Algorithms
- Output Monitoring and Modification Methodology
- An Extreme Error
- Output Monitoring and Modification (OMM)
- OMM with Reiteration (OMM-R)
- Numerical Results
- Application of OMM to Different Learning Algorithms
- OMM with Reiteration (OMM-R)
- Conclusions
- References
- Stability Analysis and Hopf-Type Bifurcation of a Fractional Order Hindmarsh-Rose Neuronal Model
- Introduction
- Preliminaries
- Stability Theorems
- Model Descriptions
- Main Results
- Local Stability
- Hopf Bifurcation
- Oscillation Region
- Numerical Simulations
- Concluding Remarks
- References
- Study on Decision Algorithm of Neurons' Synchronization Based on Neurodynamics
- Introduction
- The Neuron's Synchronization and Its Classfication
- The Neuron's Dynamic Phase Function and Synchronization Decision Algorithm
- Synchronization of Two Uncoupled HR Neurons
- Conclusion
- References
- The SMC Approach to Global Synchronization of the Cellular Neural Networks with Multi-delays and Distributed Delays
- Introduction
- Model Description and Preliminaries
- SMC Design
- Conclusions
- References
- A Novel Feature Sparsification Method for Kernel-Based Approximate Policy Iteration
- Introduction
- Approximate Linear Dependence (ALD) Analysis in KLSPI
- ALD Based on Relative Approximation Error for KLSPI
- The Origin of the Basic Ideas
- ALD Based on Relative Approximation Error in KLSPI
- Experiments and Evaluations
- Conclusion
- References
- Quasi-synchronization of Different Fractional-Order Chaotic Systems with External Perturbations and Its Application
- Introduction
- Preliminaries
- Main Results
- Numerical Simulations
- References
- Synchronization of Complex Interconnected Neural Networks with Adaptive Coupling
- Introduction
- Problem Description and Preliminaries
- Main Results
- Conclusions
- References
- Quasi-synchronization of Delayed Coupled Networks with Non-identical Discontinuous Nodes
- Introduction
- Model Formulation and Preliminaries
- Uniform Boundedness of Complex Networks
- Quasi-synchronization of Coupled Networks
- Numerical Examples
- Conclusions
- References
- Hybrid Synchronization of Two Delayed Systems with Uncertain Parameters
- Introduction
- Problem Description
- Control Law Design
- The Hybrid Synchronization of Chen and Lü Systems
- Conclusion
- References
- Adaptive Projective Synchronization and Function Projective Synchronization of Chaotic Neural Networks with Delayed and Non-delayed Coupling
- Introduction
- Neural Networks Model and Preliminaries
- Adaptive Projective Synchronization and Function Projective Synchronization Analysis
- Adaptive Projective Synchronization Analysis
- Function Projective Synchronization Analysis
- Conclusions
- References
- Global Asymptotic Synchronization of CoupledInter connected Recurrent Neural Networks via Pinning Control
- Introduction
- Problem Formulation
- Main Results
- Conclusions
- References
- Mean Square Stability of Stochastic Impulsive Genetic Regulatory Networks with Mixed Time-Delays
- Introduction
- Model Description and Preliminaries
- Main Results
- An Example
- References
- Mesh Exponential Stability of Look-Ahead Vehicle Following System with Time Delays
- Introduction
- Preliminaries
- Main Results
- Conclusions
- References
- Global Dissipativity of Neural Networks with Time-Varying Delay and Leakage Delay
- Introduction
- Problem Formulation and Preliminaries
- Main Result
- Conclusions
- References
- Novel Results on Mesh Stability for a Class of Vehicle Following System with Time Delays
- Introduction
- Preliminaries
- Main Results
- Example
- Conclusions
- References
- Robust Stability Analysis of Fuzzy Cohen-Grossberg Neural Networks with Mixed Time-Varying Delay
- Introduction
- Model Description and Preliminaries
- Main Result
- An Illustrative Example
- Conclusion
- References
- Adaptive Stochastic Robust Convergence of Neutral-Type Neural Networks with Markovian Jump Parameters
- Problem Description and Preliminaries
- Main Result
- Conclusion
- References
- A New Global Asymptotic Stability of Cellular Neural Network with Time-Varying Discrete and Distributed Delays
- Introduction
- Problem Statement
- Main Result
- Conclusion
- References
- Cognitive Neuroscience
- Localizing Sources of Brain Activity Relevant to Motor Imagery Brain-Computer Interface Performance, Using Individual Head Geometry
- Introduction
- Methods
- Experimental Protocol
- Relevant Source Localization
- Results
- Independent Components the Most Relevant for BCI Control
- Source Localization
- Discussion
- References
- Clustering Social Networks Using Interaction Semantics and Sentics
- Introduction
- Related Work
- Our Approach
- Adding Semantics to Social Interaction
- Creating the Socio-interaction Matrix
- Reducing the Dimensionality of the Socio-interaction Matrix
- Conclusions and Future Work
- References
- Ontology-Based Semantic Affective Tagging
- Introduction
- The Semantic Web and the Linked Data Initiative
- Semantic Tagging
- Semlib Project
- Human Emotion Ontology
- Enriching Wordnet Tags with Affective Information
- Extracting Affect from Other Knowledge Bases
- Conclusions
- References
- Dominance Detection in a Reverberated Acoustic Scenario
- Introduction
- Speech Enhancement Front-End
- Dominance Detector
- Speech Feature Extraction
- Most and Least Dominant Person Estimation Based on LSTM
- Experiments
- Corpus Description
- Acoustic Scenario
- Dominance Detector Training and Evaluation Procedure
- Results
- Conclusion
- References
- Analysis of Attention Deficit Hyperactivity Disorder and Control Participants in EEG Using ICA and PCA
- Introduction
- Methods
- Independent Component Analysis
- Principal Component Analysis
- Results
- Experimental Setup and CPT Task
- Artifacts Removal by ICA Method
- EEG Channel Selection
- Discussion
- References
- A Systematic Independent Component Analysis Approach to Extract Mismatch Negativity
- Introduction
- Method
- Data Description
- General ICA Approach to Extract Brain Signals
- Systematic ICA Approach to Extract MMN
- Data Processing and Analysis
- Results
- Conclusion
- References
- A Study of Sickness Induced by Perceptual Conflict in the Elderly within a 3D Virtual Store and Avoidance
- Introduction
- General Introduction
- Sickness in VEs
- Objectives
- Experiment I: Effects of Exposure Situations on Sickness
- Participants, Apparatus and the Virtual Store
- Hypotheses
- Questionnaires
- Experimental Design and Procedures
- Experimental Design and Procedures
- A Fuzzy Warning System for Combating Sickness
- System Development
- Second Experiment and Result
- Conclusion
- References
- A Co-adaptive Training Paradigm for Motor Imagery Based Brain-Computer Interface
- Introduction
- Experimental Setup
- Subjects
- The EEG Signal Recording and Preprocessing
- Neurofeedback Training Paradigm
- Classification Model Trained Framework
- Feature Selection Based Model Training Strategy
- Non-feature Selection Based Model Training Strategy
- Results
- Comparison of Training Performance
- Off-Line Analysis for Model Training
- Discussion and Conclusion
- References
- Learning Algorithms
- Overcoming the Local-Minimum Problem in Training Multilayer Perceptrons with the NRAE Training Method
- Introduction
- Evaluating NRAE and Its Derivatives
- Numerical Experiments
- Function Approximation
- Discussion
- Conclusion
- References
- Magnified Gradient Function to Improve First-Order Gradient-Based Learning Algorithms
- Introduction
- Magnified Gradient Function (MGF)
- Application of MGF in Fast Learning Algorithms
- MGF Applied in Quickprop
- MGF Applied in Rprop and iRprop
- Simulation Results
- Conclusions
- References
- Sensitivity Analysis with Cross-Validation for Feature Selection and Manifold Learning
- Introduction
- Cross-Validation
- Comparison of Multiple Algorithms
- Contribution of Work
- Dimension Reduction and Variable Selection Analysis
- Locality Preserving Projections Implementation
- Least Angle Regression
- Data Construction and Measurement Protocols
- Face Aging Databases
- Data Constructions and Experiment Setups
- Performance Measure
- How to Use Cross Validation on Subspace Learning or Feature Selection
- How to Compare Two Learning Algorithms Statistically?
- A Toy Simulation Example with 10-Fold Cross-Validation
- Repeated Cross-Validation
- Conclusion
- References
- Selective Ensemble of Support Vector Data Descriptions for Novelty Detection
- Introduction
- SVDD
- Selective Ensemble of SVDDs
- Negative Correlation Learning
- NCL Based on Correntropy
- Experimental Results
- Synthetic Data Sets
- Benchmark Data Sets
- Conclusions
- References
- Tutorial and Selected Approaches on Parameter Learning in Bayesian Network with Incomplete Data
- Introduction
- Bayesian Network
- Inferring Unobserved Variables
- Parameters Learning
- Conditional Probability Tables
- Learning Parameter with Complete Data
- Statistical Approach
- Bayesian Approach
- Learning Parameter with Incomplete Data
- EM Algorithm
- Robust Bayesian Estimator (RBE) Algorithm
- Gibbs Algorithm
- Some Approaches Dealing with Data Missing in Parameter Learning
- Conclusion
- References
- Selective Ensemble Modeling Parameters of Mill Load Based on Shell Vibration Signal
- Introduction
- Selective Ensemble Modeling Parameters of Mill Load
- Strategy of Soft Sensor
- Data Preprocessing Module
- Sub-model Module
- Selective Ensemble Module
- Application Study
- Conclusions
- References
- Selective Weight Update Rule for Hybrid Neural Network
- Introduction
- Incremental Learning and Pattern Recognition by CNN
- Incremental Learning
- Pattern Recognition by CNN
- Capability of Function Approximation by Sub-Networks
- VSF-NETWORK
- Learning Procedure
- Selecting Weights for Update
- Experiments and Discussion
- Task for Experiment
- Experiment 1
- Experiment 2
- Conclusion
- References
- Applying Ensemble Learning Techniques to ANFIS for Air Pollution Index Prediction in Macau
- Introduction
- Paper Organization
- Methodology Review
- Adaptive Neuro-fuzzy Inference System (ANFIS)
- Ensemble learning
- Performance Index
- Input Selection
- Results and Discussion
- Conclusion
- References
- A PSO-SVM Based Model for Alpha Particle Activity Prediction Inside Decommissioned Channels
- Introduction
- The Hybrid PSO-SVM Model
- Particle Swarm Optimization Algorithm
- The SVM Parameter Optimization Process on PSO
- Computational Results and Analysis
- Conclusion
- References
- Training Pool Selection for Semi-supervised Learning
- Introduction
- Semi-supervised Learning
- Problem Statement
- Selection Strategies
- Training Data Selection
- Number of Unlabeled Set
- Capacity of Training Pool
- Experimental Analysis
- UCI Dataset
- Configurations
- Result
- Conclusions and Future Work
- References
- A Rapid Sparsification Method for Kernel Machines in Approximate Policy Iteration
- Introduction
- Markov Decision Processes and LSPI
- Markov Decision Processes
- The LSPI Algorithm
- Sparsification of Kernel Machines for API Algorithms
- Sequential Sparsification of Kernel Machines for LSPI
- Rapid Sparsification of Kernel Machines for LSPI
- Experimental Results
- Conclusions and Future Work
- References
- Computational Properties of Cyclic and Almost-Cyclic Learning with Momentum for Feedforward Neural Networks
- Introduction
- Cyclic and Almost-Cyclic Learning with Momentum
- Cyclic Learning with Momentum of FNN (CMFNN)
- Almost-Cyclic Learning with Momentum of FNN (ACMFNN)
- Main Results
- Simulations
- Example 1: Benchmark Classification Problems
- Example 2: Regression Problems
- Conclusion
- References
- A Hybrid Evolving and Gradient Strategy for Approximating Policy Evaluation on Online Critic-Actor Learning
- Introduction
- An Online Actor-Critic Design
- Integration of DE-BP Algorithm into ADP Design
- Case Study with Cart Polebenchmark
- Conclusions
- References
- Preventing Error Propagation in Semi-supervised Learning
- Introduction
- Background: Particle Competition Technique (PCM)
- Detection and Prevention of Error Propagation via Competitive Learning
- Detecting Incorrectly Labeled Vertices
- Preventing the Label Propagation from Incorrectly Labeled Vertices
- The New Competitive Learning System
- Computer Simulations
- Setting Up the Proposed Algorithm and Environment
- Simulations on Real-World Data Sets
- Final Remarks
- References
- An Incremental Approach to Support Vector Machine Learning
- Introduction
- SVM Basics
- Method
- Experiments
- Data Set
- Implementation
- Complexity Analysis
- Conclusion
- References
- Multi-phase Fast Learning Algorithms for Solving the Local Minimum Problem in Feed-Forward Neural Networks
- Introduction
- Fast Learning Algorithms
- Quickprop
- RPROP
- MGFPROP
- Local Minimum Solver (LMS)
- Numerical Results
- Conclusions
- References
- Skull-Closed Autonomous Development: Object-Wise Incremental Learning
- Introduction
- Skull-Closed Developmental WWN-6
- Network Structure
- Concepts and Algorithms
- Experiments and Results
- Conclusion
- References
- Optimization
- MaxMin-SOMO: An SOM Optimization Algorithm for Simultaneously Finding Maximum and Minimum of a Function
- Introduction
- Original SOM-Based Optimization (SOMO) Algorithm
- MaxMin-SOMO Algorithm
- Simulation Results
- Objective Functions
- Parameters of Simulation
- Simulations of MaxMin-SOMO Algorithm for One Minimum and One Maximum
- References
- Hybrid Algorithm Based on Particle Swarm Optimization and Artificial Fish Swarm Algorithm
- Introduction
- The Basic Theory of the Algorithm
- Particle Swarm Optimization Algorithm
- Artificial Fish Swarm Algorithm
- The Hybrid Algorithm Based on PSO and AFSA
- Algorithm Steps
- Simulation Experience
- Conclusion
- References
- The High Degree Seeking Algorithms with k Steps for Complex Networks
- Introduction
- Scale-Free Network Model
- Classic Search Algorithms
- A High Degree Seeking Algorithm with K Steps
- Simulation
- Conclusions
- References
- Improved PSO Algorithm with Harmony Search for Complicated Function Optimization Problems
- Introduction
- Method
- Basic PSO Algorithm
- Harmony Search Algorithm
- IHPSO Algorithm
- Experiments
- Benchmark Functions
- Parameter Settings
- Experimental Results and Discussion
- Conclusion
- References
- An Improved Chaotic Ant Colony Algorithm
- Introduction
- Mathematics Model of ACO
- The Improved Chaotic Ant Swarm Algorithm
- Overview of Chaotic Ant Swarm
- Strategy of Return-Trip Optimization
- Elitist Strategy
- Simulation Experiments
- Conclusion
- References
- A Game Based Approach for Sharing the Data Center Network
- Introduction
- Network Virtualization in VDC
- Virtual Bandwidth Sharing Algorithm
- Basic Model
- Distributed Implementation
- Performance Evaluation
- Conclusion
- References
- Optimal Task and Energy Scheduling in Dynamic Residential Scenarios
- Introduction
- The Proposed Algorithm: Analytical Issues
- The Proposed Algorithm: Operational Issues
- The Static Case Study
- The Dynamic Case Study
- Computer Simulations
- Conclusions
- References
- Biogeography Based Optimization for Multi-Knapsack Problems
- Introduction
- Biogeograpy Based Optimization Algorithm
- Principle of BBOA
- Procedure of MKPBBOA
- Experiment Results
- Multi-Knapsack Problem
- Results and Discussion
- Conclusions
- References
- MRKDSBC: A Distributed Background Modeling Algorithm Based on MapReduce
- Introduction
- Related Works
- KDSBC Algorithm
- Algorithm Based on MapReduce
- The Proof
- Experiment
- Conclusion and Future Work
- References
- Author Index
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