oder
Loggen Sie sich ein, um 1-Click® einzuschalten.
Alle Angebote
Möchten Sie verkaufen? Hier verkaufen
Building Neural Networks (ACM Press)
 
Größeres Bild
 
Den Verlag informieren!
Ich möchte dieses Buch auf dem Kindle lesen.

Sie haben keinen Kindle? Hier kaufen oder eine gratis Kindle Lese-App herunterladen.

Building Neural Networks (ACM Press) [Englisch] [Taschenbuch]

David M. Skapura , Peter S. Gordon
2.0 von 5 Sternen  Alle Rezensionen anzeigen (1 Kundenrezension)
Statt: EUR 39,99
Jetzt: EUR 35,99 kostenlose Lieferung. Siehe Details.
Sie sparen: EUR 4,00 (10%)
  Alle Preisangaben inkl. MwSt.
o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o
Gewöhnlich versandfertig in 3 bis 4 Wochen.
Verkauf und Versand durch Amazon.de. Geschenkverpackung verfügbar.

Weitere Ausgaben

Amazon-Preis Neu ab Gebraucht ab
Gebundene Ausgabe --  
Taschenbuch EUR 35,99  

Produktinformation

  • Taschenbuch: 304 Seiten
  • Verlag: Addison Wesley Pub Co Inc; Auflage: 3 (Mai 1996)
  • Sprache: Englisch
  • ISBN-10: 0201539217
  • ISBN-13: 978-0201539219
  • Größe und/oder Gewicht: 24,2 x 16,8 x 2 cm
  • Durchschnittliche Kundenbewertung: 2.0 von 5 Sternen  Alle Rezensionen anzeigen (1 Kundenrezension)
  • Amazon Bestseller-Rang: Nr. 2.061.573 in Englische Bücher (Siehe Top 100 in Englische Bücher)
  • Komplettes Inhaltsverzeichnis ansehen

Mehr über den Autor

David M. Skapura
Entdecken Sie Bücher, lesen Sie über Autoren und mehr

Besuchen Sie die Seite von David M. Skapura auf Amazon

Produktbeschreibungen

Kurzbeschreibung

This practical introduction describes the kinds of real-world problems neural network technology can solve. Surveying a range of neural network applications, the book demonstrates the construction and operation of artificial neural systems. Through numerous examples, the author explains the process of building neural-network applications that utilize recent connectionist developments, and conveys an understanding both of the potential, and the limitations of different network models. Examples are described in enough detail for you to assimilate the information and then use the accumulated experience of others to create your own applications. These examples are deliberately restricted to those that can be easily understood, and recreated, by any reader, even the novice practitioner. In some cases the author describes alternative approaches to the same application, to allow you to compare and contrast their advantages and disadvantages. *Organized by application areas, rather than by specific network architectures or learning algorithms, Building Neural Networks shows why certain networks are more suitable than others for solving specific kinds of problems.Skapura also reviews principles of neural information processing and furnishes an operations summary of the most popular neural-network processing models. Finally, the book provides information on the practical aspects of application design, and contains six topic-oriented chapters on specific applications of neural-network systems. These applications include networks that perform: **-Pattern matching, storage, and recall.-Business and financial systems.-Data extraction from images.-Mechanical process control systems.-New neural networks that combine pattern matching with fuzzy logic. The book includes application-oriented exercises that further help you see how a neural network solves a problem, and that reinforce your understanding of modeling techniques.

Synopsis

This practical introduction describes the kinds of real-world problems neural network technology can solve. Surveying a range of neural network applications, the book demonstrates the construction and operation of artificial neural systems. Through numerous examples, the author explains the process of building neural-network applications that utilize recent connectionist developments, and conveys an understanding both of the potential, and the limitations of different network models. Examples are described in enough detail for you to assimilate the information and then use the accumulated experience of others to create your own applications. These examples are deliberately restricted to those that can be easily understood, and recreated, by any reader, even the novice practitioner. In some cases the author describes alternative approaches to the same application, to allow you to compare and contrast their advantages and disadvantages. *Organized by application areas, rather than by specific network architectures or learning algorithms, Building Neural Networks shows why certain networks are more suitable than others for solving specific kinds of problems.Skapura also reviews principles of neural information processing and furnishes an operations summary of the most popular neural-network processing models.

Finally, the book provides information on the practical aspects of application design, and contains six topic-oriented chapters on specific applications of neural-network systems. These applications include networks that perform: **-Pattern matching, storage, and recall.-Business and financial systems.-Data extraction from images.-Mechanical process control systems.-New neural networks that combine pattern matching with fuzzy logic. The book includes application-oriented exercises that further help you see how a neural network solves a problem, and that reinforce your understanding of modeling techniques.


Tags

 (Was ist das?)
Bei einem Tag handelt es sich um ein Schlagwort, das zum Produkt passt.
Tags erleichtern allen Kunden die Suche und die Sortierung ihrer Lieblingsprodukte.
 

Eine digitale Version dieses Buchs im Kindle-Shop verkaufen

Wenn Sie ein Verleger oder Autor sind und die digitalen Rechte an einem Buch haben, können Sie die digitale Version des Buchs in unserem Kindle-Shop verkaufen. Weitere Informationen

Kundenrezensionen

5 Sterne
0
4 Sterne
0
3 Sterne
0
1 Sterne
0
Die hilfreichsten Kundenrezensionen
Von Ein Kunde
Format:Taschenbuch
The book serves as a luke warm introdution to neural networks. For the reader planning on applying the material in an industrial setting the book is far from sufficient. An average entry-level programmer could probably successfully code a couple of different types of neural networks as the book supplies nicely written pseudo-code for only couple types. As soon as the reader is interested in pursuing any kind of variation on these basic networks he hits a dead-end wall with 'references for further study' carved in the concrete.

For early undergraduate and advanced highschool students the text provides a great introduction to the field without wasting time on opinion and praising. Rather the reader can dive write into the heart of basic neural network algorithms and brief analyses of why they work and what they are good for.

War diese Rezension für Sie hilfreich?
Die hilfreichsten Kundenrezensionen auf Amazon.com (beta)
Amazon.com:  1 Rezension
30 von 31 Kunden fanden die folgende Rezension hilfreich
okay starting point, be prepared to buy a more thorough text 4. Oktober 1999
Von Ein Kunde - Veröffentlicht auf Amazon.com
Format:Taschenbuch
The book serves as a luke warm introdution to neural networks. For the reader planning on applying the material in an industrial setting the book is far from sufficient. An average entry-level programmer could probably successfully code a couple of different types of neural networks as the book supplies nicely written pseudo-code for only couple types. As soon as the reader is interested in pursuing any kind of variation on these basic networks he hits a dead-end wall with 'references for further study' carved in the concrete.

For early undergraduate and advanced highschool students the text provides a great introduction to the field without wasting time on opinion and praising. Rather the reader can dive write into the heart of basic neural network algorithms and brief analyses of why they work and what they are good for.

Kundenrezensionen suchen
Nur in den Rezensionen zu diesem Produkt suchen

Kunden diskutieren

Das Forum zu diesem Produkt
Diskussion Antworten Jüngster Beitrag
Noch keine Diskussionen

Fragen stellen, Meinungen austauschen, Einblicke gewinnen
Neue Diskussion starten
Thema:
Erster Beitrag:
Eingabe des Log-ins
 


Aktive Diskussionen in ähnlichen Foren
Kundendiskussionen durchsuchen
Alle Amazon-Diskussionen durchsuchen
   
Ähnliche Foren


Lieblingslisten


Ähnliche Artikel finden


Anhand des Sachgebietes nach ähnlichen Produkten suchen:


Ihr Kommentar


Datenschutzerklärung von Amazon.de Versandbedingungen von Amazon.de Umtausch- & Rücknahme bei Amazon.de