Simulating neural networks with mathematica James A. Freeman.
Material type:
- 020156629X (paperback)
- 9780201566291 (paperback)
Item type | Current library | Collection | Call number | Status | Notes | Barcode | |
---|---|---|---|---|---|---|---|
![]() |
Air University Central Library Islamabad | NFIC | 006.32 FRE (Browse shelf(Opens below)) | Available | Program Relevancy: BSCS Course Relevancy: Artificial Intelligence; Neural Networks | P0477 | |
![]() |
Air University Central Library Islamabad | NFIC | 006.32 FRE (Browse shelf(Opens below)) | Available | Program Relevancy: BSCS Course Relevancy: Artificial Intelligence; Neural Networks | P0478 |
Browsing Air University Central Library Islamabad shelves Close shelf browser (Hides shelf browser)
![]() |
![]() |
![]() |
![]() |
![]() |
No cover image available | No cover image available | ||
006.31 Sr11O Optimization for machine learning | 006.31015195 MAC Machine learning and statistics : the interface | 006.312 Er51B Big data fundamentals cocepts,drivers & techniques | 006.32 FRE Simulating neural networks with mathematica | 006.32 FRE Simulating neural networks with mathematica | 006.6 ADO Adobe pagemaker 6.5 plus user guide / | 006.6 ADO Adobe illustrator version 9.0 / |
This book introduces neural networks, their operation, and application, in the context of the interactive Mathematica environment. Readers will learn how to simulate neural network operations using Mathematica, and will learn techniques for employing Mathematica to assess neural network behavior and performance. For students of neural networks in upper-level undergraduate or beginning graduate courses in computer science, engineering, and related areas. Also for researchers and practitioners interested in using Mathematica as a research tool. Features *Teaches the reader about what neural networks are, and how to manipulate them within the Mathematica environment. *Shows how Mathematica can be used to implement and experiment with neural network architectures. *Addresses a major topic related to neural networks in each chapter, or a specific type of neural network architecture. *Contains exercises, suggested projects, and supplementary reading lists with each chapter. *Includes Mathematica application programs ("packages") in Appendix. (Also available electronically from MathSource.) Table of ContentsIntroduction to Neural Networks and Mathematica Training by Error Minimization Backpropagation and Its Variants Probability and Neural Networks Optimization and Constraint Satisfaction with Neural Networks Feedback and Recurrent Networks Adaptive Resonance Theory Genetic Algorithms 020156629XB04062001.
There are no comments on this title.