Springer, 2009. - 726 p.<div class="bb-sep"></div>This book covers a rich and diverse variety of computer-based techniques, all involving some aspect of computational intelligence (CI). Authors recognize the limitations of individual paradigms, and propose some practical and novel ways in which diff
Computational Intelligence: Collaboration, Fusion and Emergence (Intelligent Systems Reference Library, 1)
✍ Scribed by Christine L. Mumford (editor)
- Publisher
- Springer
- Year
- 2009
- Tongue
- English
- Leaves
- 539
- Category
- Library
No coin nor oath required. For personal study only.
✦ Synopsis
This book is about synergy in computational intelligence (CI). It is a c- lection of chapters that covers a rich and diverse variety of computer-based techniques, all involving some aspect of computational intelligence, but each one taking a somewhat pragmatic view. Many complex problems in the real world require the application of some form of what we loosely call “intel- gence”fortheirsolution. Fewcanbesolvedbythenaiveapplicationofasingle technique, however good it is. Authors in this collection recognize the li- tations of individual paradigms, and propose some practical and novel ways in which di?erent CI techniques can be combined with each other, or with more traditional computational techniques, to produce powerful probl- solving environments which exhibit synergy, i. e. , systems in which the whole 1 is greater than the sum of the parts . Computational intelligence is a relatively new term, and there is some d- agreement as to its precise de?nition. Some practitioners limit its scope to schemes involving evolutionary algorithms, neural networks, fuzzy logic, or hybrids of these. For others, the de?nition is a little more ?exible, and will include paradigms such as Bayesian belief networks, multi-agent systems, case-based reasoning and so on. Generally, the term has a similar meaning to the well-known phrase “Arti?cial Intelligence” (AI), although CI is p- ceived moreas a “bottom up” approachfrom which intelligent behaviour can emerge,whereasAItendstobestudiedfromthe“topdown”,andderivefrom pondering upon the “meaning of intelligence”. (These and other key issues will be discussed in more detail in Chapter 1.
✦ Table of Contents
Title
Preface
Table of Contents
Part I: Modelling and Design Techniques for Intelligent Decision Support Systems
Advances in Intelligent Decision Making
Introduction
General Aspects of Decision Making
The Decision Making Process
Decision Quality
A Taxonomy of Decision Support Systems
Techniques for Intelligent Decision Making
Artificial Neural Networks
Evolutionary Computing
Fuzzy Systems
Case Based Reasoning
Agent-Based Systems
Remarks
Application Examples
Summary
References
IDSSE-M: Intelligent Decision Support Systems Engineering Methodology
Introduction
An Overview of DMSS Methodologies
IDSSE-M
IDSSE-M: Illustration
Conclusions
References
Shape Design of Products Based on a Decision Support System
Introduction
The Framework for Product Design Process
Basic Type of Product Design Process
Design Process for Technology-Driven Product
Design Process for User-Driven Product
Design Process for Technology-and-User Driven Product
Methods and Tools for Shape Design
DSS for Planning of Design Process
Case Study
Planning of Design Process
Shape Design in Planned Design Process
Conclusion
References
Enhancing Decision Support System with Neural Fuzzy Model and Simple Model Visualizations
Introduction
Related Works
Neuro-fuzzy Systems
Integration of Decision Tree
TNFIS: A Computational Model Inspired from Piaget's Action-Based Cognitive Development
Structure of TNFIS
Learning Algorithm of TNFIS
Numerical Experiments
Nakanishi Data Set
Box and Jenkins's Gas Furnace
Iris Classification
Conclusion
References
Computational Agents in Complex Decision Support Systems
Introduction
Decision Support Systems for Complex Systems Study
Decision Support Systems and Their Characteristics
Agents and Decision Support Systems
Multi-agent Planning and Design
General Approach for Multi-agent System Creation
Information Change
Multi-agent System Organization and Architecture
Description of the Agents within the MAS
The Data Aggregation Agent
The Data Pre-processing Agent
The Function Approximation Agent
The Computer Simulation Agent
Results
Conclusions and Future Work
References
A Multi-criteria Decision-Support Approach to Sustainable Rural Energy in Developing Countries
Introduction
Comparing Single and Multi-criteria Energy Decision Support Systems
Reach and Limitations of Energy Multi-criteria DSS
SURE-DSS: A Comprehensive Multi-criteria Approach and Application
Long-Term Energy Solutions
Conclusion
References
A Decision Making System Based on Complementary Learning
Introduction
Complementary Decision Making System
Neural Basis of Decision Making
Complementary Decision Making Model
CDMS and Human Decision Making
Application
Conclusions
References
A Forecasting Support System Based on Exponential Smoothing
Introduction
Exponential Smoothing Procedures
Water Consumption Data
Parameter Estimation and Model Fitting
Parameter Estimation for Exponential Smoothing Methods
Parameter Estimation When a Stochastic Component Is Added
Model Selection Strategy
Forecasting Procedures
Forecasting with Exponential Smoothing Methods
Forecasting with Exponential Smoothing Models
SIOPRED-Bayes
Conclusions
References
Reinforcement Based U-Tree: A Novel Approach for Solving POMDP
Introduction
Background
Markov Decision Processes
Value Iteration
Policy Iteration
Reinforcement Learning
Partially Observable Markov Decision Processes
Value Iteration for POMDP
Heuristic-Based Methods for POMDP
Beyond POMDP
U-Tree and Modified U-Tree
Introduction to U-Tree
State Generation Modification
An Illustration
Value Iteration for U-Tree
Good of Fitness Test
Details of the Algorithm
Notation
Pseudo Code for the Modified U-Tree
Experiment and Results
Highway Car Driving Task
Benchmark Problems
Benchmark Experiments
Discussion
Conclusion
References
On the Use of Fuzzy Inference Systems for Assessment and Decision Making Problems
Introduction
A Review on Fuzzy Inference Systems and the Sufficient Conditions
The Fuzzy Inference System-Based Risk Priority Number Model
The Proposed FMEA Framework with a Monotonicity- Preserving FIS-Based RPN Model
A Case Study
Summary
References
Part II: Reviews and Applications of Intelligent Decision Support Systems
Decision Support Systems in Transportation
Introduction: Definition of Transportation – Oriented DSS-s
Classification of Transportation – Oriented DSS-s
Major Categories of Decision Problems Solved by Transportation – Oriented DSS-s
Principal Methodologies Supporting Decision Processes and Leading Information Technologies Applied in Transportation – Oriented DSS-s
Review of Selected Transportation – Oriented DSS-s
Road Transportation DSS-s
Urban Transportation DSS-s
Airborne Transportation DSS-s
Railway and Seaborne Transportation DSS-s
Transportation – Oriented DSS-s Applied in Different Industries and Multimodal DSS-s
Final Remarks and Conclusions
References
Decision Support Systems for the Food Industry
Decision Support Systems for the Food Industry - Earlier Development
Decision Support Systems for the Food Industry - Data Quality and Traceability
Thermal Modeling for Decision Support in Chill Chains
Choosing the Right Raw Material
Optimization Models, Theory and Practical Outcomes
Decision Support Systems in the Meat Supply Chain
Cause of Waste = Need for DSS
Decision Support for Food Producers
Decision Support for Retailers - Inventory Management and Replenishment
Information Sharing - Collaboration Planning
Conclusions
Overall Conclusion and Next Steps
References
Building a Decision Support System for Urban Design Based on the Creative City Concept
Introduction
The Creative City
The Concept of the Creative City
Talent, Technology and Tolerance - The 3T’s of Creativity Index
Creativity Ranking in U.S. Large Cities
Creative City Experiments in Japan
The Definition of Public Art
Rough Set Theory
Overview of the Concepts of Rough Set Theory
Information System
Lower and Upper Approximations
Core and Reduct of Attributes
Decision Rules
Efficient Sampling Based on a Statistical Test
Simulation
Decision Support Systems
Definition
DSS Phase Models
Geographic Information Systems
Definition
GIS Applications and Local Government
Research Design
Research Methodology
Research Procedure
Prototype Decision Support Systems
General Architecture of Decision Support Systems
Building a Decision Support Systems Model of Creative City Design
Conclusions
References
Fuzzy Prices in Combinatorial Auction
Introduction
Combinatorial Auction and the Winner Determination Problem
Combinatorial Auction and Winner Determination under Fuzzy Environment
Fuzzy Prices
Model Formulation
Interpretation of Submitted Prices
Test Problem Generation
Discussion
Conclusion
References
Application of Artificial Neural Network to Fire Safety Engineering
Introduction
Architectures of the GRNN and FA Models
The GRNN Architecture
The FA Architecture
Fusion of GRNN and FA
Kernel Center Estimation
Kernel Label Estimation
Kernel Width Estimation
Experimental Studies
Noisy Two-Intertwined Spirals
Ozone
Friedman#1
Sante Fe Series E
Application to Fire Safety Engineering
Introduction to Steckler’s Experiment
GRNNFA Performance Trained by Noisy Experimental Data
Height of Thermal Interface in Various Widths of Door Opening
Conclusions
References
Decision-Making for the Optimal Strategy of Population Agglomeration in Urban Planning with Path-Converged Design
Introduction
Path-Converged Design
Benchmark Model
Path Model
Population Agglomeration Identification
Data
Urbanization Level:Benchmark Model
Population Agglomeration:Path Model
Leftward Population Agglomeration
Inefficiency of Population Agglomeration: City Size
Decision Making on Optimal Migration Strategy
Decision 1: Small Cities
Decision 2: Regional Migration for Medium Cities
Decision 3: Urban Migration for Medium Cities
Decision 4: Regional Population Migration for Large Cities
Conclusions
Identification of Population Agglomeration
Decision Making of Optimal Population Migration
References
A Cognitive Interpretation of Thermographic Images Using Novel Fuzzy Learning Semantic Memories
Introduction
Image Preprocessing
Input Selection: Correlation Assessment Method
Fuzzy Neural Networks
ANFIS
POPFNN
FCMAC-AARS
Experimental Results and Analysis
Fuzzy Rules Analysis
Conclusions
References
Adaptive Fuzzy Inference Neural Network System for EEG Signal Classification
Introduction
Data Selection and Recording
Spectral Analysis Using Discrete Wavelet Transformation
Feature Extraction
Architecture of AFINN
Clustering Algorithm
Feed-Forward Analysis of AFINN
Tuning Premise and Consequence AFINN Parameters
Discussion of Results
Case One (Two-Class Problem)
Case Two (Three-Class Problem)
Case Three (Five-Class Problem)
Conclusion
References
A Systematic Approach to the Design of a Case-Based Reasoning System for Attention–Deficit Hyperactivity Disorder
Introduction
TA3
Methods and Materials
Data
Iterative Refinement
Evaluation
Experiment and Results
Model 1 – Initial Prototype
Model 2 – Context Constraint
Model 3 – Statistical
Model 4 – Genetic Algorithms
Final Error Assessment Using On/Off Data
Discussion
Conclusions
References
A NeuroCognitive Approach to Decision Making for the Reconstruction of the Metabolic Insulin Profile of a Healthy Person
Introduction
Cerebellum and the Human Procedural Memory System
Mechanisms for Information Retention in the Cerebellum
Mechanisms of Learning in the Cerebellum
The PSECMAC: A Brain-Inspired Multi-resolution Cerebellar Learning Memory Model
PSECMAC Network Architecture
PSECMAC Working Principles
PSECMAC Learning Paradigm
Diabetes as a Disease
Glucose Metabolisms: A Study of the Insulin Dynamics for Normoglycemia
Conclusions
References
Erratum
Erratum: Fuzzy Prices in Combinatorial Auction
Author Index
📜 SIMILAR VOLUMES
<p><P>This book is the first in a new series entitled "Intelligent Systems Reference Library". It is a collection of chapters written by leading experts, covering a rich and diverse variety of computer-based techniques, all involving some aspect of computational intelligence (CI). Authors in this co
From the Back Cover This book is the first in a new series entitled "Intelligent Systems Reference Library". It is a collection of chapters written by leading experts, covering a rich and diverse variety of computer-based techniques, all involving some aspect of computational intelligence (CI). Au
<p><P>This book is the first in a new series entitled "Intelligent Systems Reference Library". It is a collection of chapters written by leading experts, covering a rich and diverse variety of computer-based techniques, all involving some aspect of computational intelligence (CI). Authors in this co
<p>This book aims at offering a unique collection of ideas and experiences mainly focusing on the main streams and merger of Artificial Intelligence (AI) and the Internet of Things (IoT) for a wide slice of the communication and networking community. In the era when the world is grappling with many
<p>This two-volume set (CCIS 873 and CCIS 874) constitutes the thoroughly refereed proceedings of the 9th International Symposium, ISICA 2017, held in Guangzhou, China, in November 2017.The 101 full papers presented in both volumes were carefully reviewed and selected from 181 submissions. This firs