Atjaunināt sīkdatņu piekrišanu

E-grāmata: Neural Networks in Business Forecasting

  • Formāts: 350 pages
  • Izdošanas datums: 31-Jul-2003
  • Izdevniecība: IGI Publishing
  • ISBN-13: 9781591401773
  • Formāts - PDF+DRM
  • Cena: 95,12 €*
  • * ši ir gala cena, t.i., netiek piemērotas nekādas papildus atlaides
  • Ielikt grozā
  • Pievienot vēlmju sarakstam
  • Šī e-grāmata paredzēta tikai personīgai lietošanai. E-grāmatas nav iespējams atgriezt un nauda par iegādātajām e-grāmatām netiek atmaksāta.
  • Formāts: 350 pages
  • Izdošanas datums: 31-Jul-2003
  • Izdevniecība: IGI Publishing
  • ISBN-13: 9781591401773

DRM restrictions

  • Kopēšana (kopēt/ievietot):

    nav atļauts

  • Drukāšana:

    nav atļauts

  • Lietošana:

    Digitālo tiesību pārvaldība (Digital Rights Management (DRM))
    Izdevējs ir piegādājis šo grāmatu šifrētā veidā, kas nozīmē, ka jums ir jāinstalē bezmaksas programmatūra, lai to atbloķētu un lasītu. Lai lasītu šo e-grāmatu, jums ir jāizveido Adobe ID. Vairāk informācijas šeit. E-grāmatu var lasīt un lejupielādēt līdz 6 ierīcēm (vienam lietotājam ar vienu un to pašu Adobe ID).

    Nepieciešamā programmatūra
    Lai lasītu šo e-grāmatu mobilajā ierīcē (tālrunī vai planšetdatorā), jums būs jāinstalē šī bezmaksas lietotne: PocketBook Reader (iOS / Android)

    Lai lejupielādētu un lasītu šo e-grāmatu datorā vai Mac datorā, jums ir nepieciešamid Adobe Digital Editions (šī ir bezmaksas lietotne, kas īpaši izstrādāta e-grāmatām. Tā nav tas pats, kas Adobe Reader, kas, iespējams, jau ir jūsu datorā.)

    Jūs nevarat lasīt šo e-grāmatu, izmantojot Amazon Kindle.

Forecasting is one of the most important activities that form the basis for strategic, tactical, and operational decisions in all business organizations. Recently, neural networks have emerged as an important tool for business forecasting. There are considerable interests and applications in forecasting using neural networks.

Neural Networks in Business Forecasting provides for researchers and practitioners some recent advances in applying neural networks to business forecasting. A number of case studies demonstrating the innovative or successful applications of neural networks to many areas of business as well as methods to improve neural network forecasting performance are presented.
Preface vi
G. Peter Zhang, Georgia State University, USA
Chapter I. Business Forecasting with Artificial Neural Networks: An Overview 1(22)
G. Peter Zhang, Georgia State University, USA
Chapter II. Using Artificial Neural Networks to Forecast Market Response 23(18)
Leonard J. Parsons, Georgia Institute of Technology, USA
Ashutosh Dixit, University of Georgia, USA
Chapter III. Forecasting Stock Returns with Artificial Neural Networks 41(39)
Suraphan Thawornwong, Thailand Securities Depository, Thailand
David Enke, University of Missouri - Rolla, USA
Chapter IV. Forecasting Emerging Market Indexes with Neural Networks 80(22)
Steven Walczak, University of Colorado at Denver, USA
Chapter V. Predicting Wastewater BOD Levels with Neural Network Time Series Models 102(19)
David West, East Carolina University, USA
Scott Dellang, East Carolina University, USA
Chapter VI. Tourism Demand Forecasting for the Tourism Industry: A Neural Network Approach 121(21)
Rob Law, The Hong Kong Polytechnic University, Hong Kong
Ray Pine, The Hong Kong Polytechnic University, Hong Kong
Chapter VII. Using an Extended Self-Organizing Map Network to Forecast Market Segment Membership 142(16)
Melody Y. Kiang, California State University, Long Beach, USA
Dorothy M. Fisher, California State University, Dominguez Hills, USA
Michael Y. Hu, Kent State University, USA
Robert T. Chi, California State University, Long Beach, USA
Chapter VIII. Backpropagation and Kohonen Self-Organizing Feature Map in Bankruptcy Prediction 158(14)
Kidong Lee, University of Incheon, South Korea
David Booth, Kent State University, USA
Pervaiz Alam, Kent State University, USA
Chapter IX. Predicting Consumer Situational Choice with Neural Networks 172(23)
Michael Y. Hu, Kent State University, USA
Murali Shanker, Kent State University, USA
Ming S. Hung, Optimal Solutions Technologies, Inc., USA
Chapter X. Forecasting Short-Term Exchange Rates: A Recurrent Neural Network Approach 195(18)
Leong-Kwan Li, The Hong Kong Polytechnic University, Hong Kong
Wan-Kai Pang, The Hong Kong Polytechnic University, Hong Kong
Wing-Tong Yu, The Hong Kong Polytechnic University, Hong Kong
Marvin D. Troutt, Kent State University, USA
Chapter XI. A Combined ARIMA and Neural Network Approach for Time Series Forecasting 213(13)
G. Peter Zhang, Georgia State University, USA
Chapter XII. Methods for Multi-Step Time Series Forecasting with Neural Networks 226(25)
Douglas M. Kline, University of North Carolina at Wilmington, USA
Chapter XIII. A Weighted Window Approach to Neural Network Time Series Forecasting 251(15)
Bradley H. Morantz, Georgia State University, USA
Thomas Whalen, Georgia State University, USA
G. Peter Zhang, Georgia State University, USA
Chapter XIV. Assessment of Evaluation Methods for Prediction and Classifications of Consumer Risk in the Credit Industry 266(19)
Satish Nargundkar, Georgia State University, USA
Jennifer Lewis Priestley, Georgia State University, USA
About the Authors 285(8)
Index 293
Dr. Zhang is currently Associate Professor of Decision Sciences and Operations Management at Georgia State University, USA. He received his B.S. and M.S. degrees in Mathematics and Statistics, respectively, from East China Normal University, Shanghai, China, and Ph.D. degree in Operations Research/Operations Management from Kent State University, USA.