Dynamic, genetic and chaotic programming : the sixth-generation

Bibliographic Information

Dynamic, genetic and chaotic programming : the sixth-generation

Branko Souček and the IRIS Group

(Sixth-generation computer technology series)

Wiley, c1992

Available at  / 41 libraries

Search this Book/Journal

Note

"A Wiley-Interscience publication."

Includes bibliographical references and index

Description and Table of Contents

Description

This practical guide to software engineering deals with dynamic processes, such as natural language, reasoning, decision-making, robotics, control, non-stationary environments, complex systems design, predictions, time series and optimization.

Table of Contents

Partial table of contents: DYNAMIC NEURAL NETWORKS VERSUS AUTOMATED KNOWLEDGE ACQUISITION. Paradigm/Problem Matching (B. Soucek). Dynamic Systems Control via Associative Reinforcement Learning (V. Gullapalli). Recognition and Restoration of Periodic Signals with Time-Dependent Neural Network (R. Kamimura). Adaptive Stack Filtering by LMS and Perceptron Learning (N. Ansari & Y. Huang). Managing the Traffic of a Satellite Communication Network by Neural Network (N. Ansari). Infinitesimal vs. Discrete Methods in Neural Networks Synthesis (A. Albrecht). GENETIC ALGORITHM AND GENETIC PROGRAMMING. Genetic Algorithms in Robotics (Y. Davidov). Efficient Multiprocessor Scheduling Based on Genetic Algorithms (E. Hou, et al.). Structure Evolution in Neural Systems (R. Lohmann). THE SOFTWARE OF CHAOS WITH APPLICATIONS. Dynamic vs. Genetic vs. Chaotic Programming: Pole Balancing (B. Maric ic). Parallel Scheduling of Random and of Chaotic Processes (C. Schelberg). Indexes.

by "Nielsen BookData"

Related Books: 1-1 of 1

Details

Page Top