Pattern Recognition Using Neural Networks: Theory and Algorithms for Engineers and Scientists Book + PRICE WATCH * Amazon pricing is not included in price watch

Pattern Recognition Using Neural Networks: Theory and Algorithms for Engineers and Scientists Book

Pattern Recognition Using Neural Networks : Hardback : Oxford University Press Inc : 9780195079203 : 0195079205 : 20 Feb 1997 : This work covers linear pattern recognition and its non-linear extension via neural networks from an algorithmic approach. The text explores multiple layered preceptrons and describes network types such as functional link, radial basis function, learning vector quantanization and self-organizing.Read More

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  • Product Description

    Covering traditional linear pattern recognition and its nonlinear extension via neural networks from an algorithmic approach, this practical "why-and-how" book provides a refreshing contrast to the thoeretical approaches and "pie-in-the-sky" claims of competing books. It explores multiple-layered preceptrons and describes network types such as functional link, radial basis function, learning vector quantanization, and self-organizing, and also discusses recent clustering methods. Suitable for readers with some background in pattern recognition and neural networks, this accesible volume also serves as a useful reference and resource work.

  • 0195079205
  • 9780195079203
  • Carl G. Looney
  • 3 April 1997
  • OUP USA
  • Hardcover (Book)
  • 480
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