
The Harmony Search Algorithm for Supervised Training of Neural Network
Design & Implementation
Ali Kattan(Author)
LAP Lambert Academic Publishing
Published on 1. April 2019
Book
Paperback/Softback
260 pages
978-613-9-47255-0 (ISBN)
Description
Within the field of Artificial Intelligence, there are basically two paradigms for the supervised training of Feed-forward Artificial Neural Network (FFANN): the trajectory-driven paradigm, such as Backpropagation, and the evolutionary Stochastic Global Optimization paradigm (SGO), such as Genetic Algorithm. One of the relatively young SGO methods is the Harmony Search (HS) algorithm, which draws its inspiration not from biological or physical processes but from the improvisation process of Jazz musicians. HS was reported to be competitive alternative to other SGO methods. It has been used successfully in many applications mostly in engineering and industry. In this work the HS algorithm is adapted for the supervised training of FFANN and the performance is evaluated using different benchmarking problems. Two enhancements are introduced to achieve better convergence condition and better performance. A parallel implementation is also included along with performance analysis.
More details
Language
English
Dimensions
Height: 220 mm
Width: 150 mm
Thickness: 17 mm
Weight
405 gr
ISBN-13
978-613-9-47255-0 (9786139472550)
Schweitzer Classification
Person
Ali Kattan, a member of IEEE since 2009, is a PhD holder and an Assistant Professor of Computer Sciences. His research interests include machine learning, optimization, robotics, IoT and web programming. He is currently a staff member of the American Stratford University located in the city of Erbil (North of Iraq).