书目名称 | Feedforward Neural Network Methodology | 编辑 | Terrence L. Fine | 视频video | | 丛书名称 | Information Science and Statistics | 图书封面 |  | 描述 | The decade prior to publication has seen an explosive growth in com- tational speed and memory and a rapid enrichment in our understa- ing of arti?cial neural networks. These two factors have cooperated to at last provide systems engineers and statisticians with a working, prac- cal, and successful ability to routinely make accurate complex, nonlinear models of such ill-understood phenomena as physical, economic, social, and information-based time series and signals and of the patterns h- den in high-dimensional data. The models are based closely on the data itself and require only little prior understanding of the stochastic mec- nisms underlying these phenomena. Among these models, the feedforward neural networks, also called multilayer perceptrons, have lent themselves to the design of the widest range of successful forecasters, pattern clas- ?ers, controllers, and sensors. In a number of problems in optical character recognition and medical diagnostics, such systems provide state-of-the-art performance and such performance is also expected in speech recognition applications. The successful application of feedforward neural networks to time series forecasting has been multiply d | 出版日期 | Textbook 1999 | 关键词 | Time series; algorithms; architecture; artificial neural network; classification; computer-aided design ( | 版次 | 1 | doi | https://doi.org/10.1007/b97705 | isbn_softcover | 978-1-4757-7309-5 | isbn_ebook | 978-0-387-22649-1Series ISSN 1613-9011 Series E-ISSN 2197-4128 | issn_series | 1613-9011 | copyright | Springer Science+Business Media New York 1999 |
The information of publication is updating
|
|