
- 304 pages
- English
- ePUB (mobile friendly)
- Available on iOS & Android
About this book
Group Method of Data Handling (GMDH) is a typical inductive modeling method built on the principles of self-organization. Since its introduction, inductive modeling has been developed and applied to complex systems in areas like prediction, modeling, clusterization, system identification, as well as data mining and knowledge extraction technologies, to several fields including social science, science, engineering, and medicine.
This book makes error-free codes available to end-users so that these codes can be used to understand the implementation of GMDH, and then create opportunities to further develop the variants of GMDH algorithms. C-language has been chosen because it is a basic language commonly taught in the first year in computer programming courses in most universities and colleges, and the compiled versions could be used for more meaningful practical applications where security is necessary.
Contents:
- Introduction (Godfrey C Onwubolu)
- GMDH Multilayered Iterative Algorithm (MIA) (Godfrey C Onwubolu)
- GMDH Multilayered Algorithm Using Prior Information (Alexandr Kiryanov)
- Combinatorial (COMBI) Algorithm (Oleksiy Koshulko, Anatoliy Koshulko and Godfrey C Onwubolu)
- GMDH Harmonic Algorithm (Godfrey C Onwubolu)
- GMDH-Based Modified Polynomial Neural Network Algorithm (Alexander Tyryshkin, Anatoliy Andrakhanov and Andrey Orlov)
- GMDH-Clustering (Lyudmyla Sarycheva and Alexander Sarychev)
- Multiagent Clustering Algorithm (Oleksii Oliinyk, Sergey Subbotin and Andrii Oliinyk)
- Analogue Complexing Algorithm (Dmytro Zubov)
- GMDH-Type Neural Network and Genetic Algorithm (Saeed Fallahi, Meysam Shaverdi and Vahab Bashiri)
Readership: Researchers, professionals, and senior undergraduate students in artificial intelligence, neural networks, decision sciences, and innovation technology.
Key Features:
- No other book in the market makes error-free codes so readily available to the public
- Clearly presents the main variants of GMDH and supporting codes for users to understand the concepts involved, apply them, and build on the available codes
- Contributors are world-renowned researchers in GMDH
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Information
Table of contents
- Cover Page
- Title Page
- Copyright Page
- Preface
- About the Editor
- List of Contributors
- Contents
- 1. Introduction
- 2. GMDH Multilayered Iterative Algorithm (MIA)
- 3. GMDH Multilayered Algorithm Using Prior Information
- 4. Combinatorial (COMBI) Algorithm
- 5. GMDH Harmonic Algorithm
- 6. GMDH-Based Modified Polynomial Neural Network Algorithm
- 7. GMDH-Clustering
- 8. Multiagent Clustering Algorithm
- 9. Analogue Complexing Algorithm
- 10. GMDH-Type Neural Network and Genetic Algorithm
- Index