. .
Deutsch
Deutschland
Anmelden
Tipp von eurobuch.com
Ähnliche Bücher
Weitere, andere Bücher, die diesem Buch sehr ähnlich sein könnten:
Buch verkaufen
Anbieter, die das Buch mit der ISBN 0471731900 ankaufen:
Suchtools
Buchtipps
Aktuelles
FILTER
- 0 Ergebnisse
Kleinster Preis: 138,14 €, größter Preis: 172,99 €, Mittelwert: 157,16 €
Mining Graph Data - Diane J. Holder, Lawrence B. Cook
Vergriffenes Buch, derzeit bei uns nicht verfügbar.
(*)
Diane J. Holder, Lawrence B. Cook:
Mining Graph Data - neues Buch

2006, ISBN: 9780471731900

ID: 148073308

Discover the latest data mining techniques for analyzing graph data This text takes a focused and comprehensive look at an area of data mining that is quickly rising to the forefront of the field: mining data that is represented as a graph. Each chapter is written by a leading researcher in the field; collectively, the chapters represent the latest findings and applications in both theory and practice, including solutions to many of the algorithmic challenges that arise in mining graph data. Following the authors´ step-by-step guidance, even readers with minimal background in analyzing graph data will be able to represent data as graphs, extract patterns and concepts from the data, and apply the methodologies presented in the text to real datasets. Mining Graph Data is divided into three parts: * Part I, Graphs, offers an introduction to basic graph terminology and techniques. * Part II, Mining Techniques, features a detailed examination of computational techniques for extracting patterns from graph data. These techniques are the state of the art in frequent substructure mining, link analysis, graph kernels, and graph grammars. * Part III, Applications, describes the application of data mining techniques to four graph-based application domains: chemical graphs, bioinformatics data, Web graphs, and social networks. Practical case studies are included in many of the chapters. An accompanying Web site features source code and datasets, offering readers the opportunity to experiment with the techniques presented in the book as well as test their own ideas on graph data. The Web site also includes the results of many of the techniques presented in the text. This landmark work is intended for students and researchers in computer science, information systems, and data mining who want to learn how to analyze and extract useful patterns and concepts from graph data. Mining Graph Data Bücher > Fremdsprachige Bücher > Englische Bücher gebundene Ausgabe 15.12.2006 Buch (fremdspr.), John Wiley & Sons Inc, .200

Neues Buch Buch.ch
No. 14078373 Versandkosten:zzgl. Versandkosten
Details...
(*) Derzeit vergriffen bedeutet, dass dieser Titel momentan auf keiner der angeschlossenen Plattform verfügbar ist.
Mining Graph Data - Diane J. Holder, Lawrence B. Cook
Vergriffenes Buch, derzeit bei uns nicht verfügbar.
(*)
Diane J. Holder, Lawrence B. Cook:
Mining Graph Data - neues Buch

2006, ISBN: 9780471731900

ID: 148073308

Discover the latest data mining techniques for analyzing graph data This text takes a focused and comprehensive look at an area of data mining that is quickly rising to the forefront of the field: mining data that is represented as a graph. Each chapter is written by a leading researcher in the field; collectively, the chapters represent the latest findings and applications in both theory and practice, including solutions to many of the algorithmic challenges that arise in mining graph data. Following the authors´ step-by-step guidance, even readers with minimal background in analyzing graph data will be able to represent data as graphs, extract patterns and concepts from the data, and apply the methodologies presented in the text to real datasets. Mining Graph Data is divided into three parts: * Part I, Graphs, offers an introduction to basic graph terminology and techniques. * Part II, Mining Techniques, features a detailed examination of computational techniques for extracting patterns from graph data. These techniques are the state of the art in frequent substructure mining, link analysis, graph kernels, and graph grammars. * Part III, Applications, describes the application of data mining techniques to four graph-based application domains: chemical graphs, bioinformatics data, Web graphs, and social networks. Practical case studies are included in many of the chapters. An accompanying Web site features source code and datasets, offering readers the opportunity to experiment with the techniques presented in the book as well as test their own ideas on graph data. The Web site also includes the results of many of the techniques presented in the text. This landmark work is intended for students and researchers in computer science, information systems, and data mining who want to learn how to analyze and extract useful patterns and concepts from graph data. Mining Graph Data Bücher > Fremdsprachige Bücher > Englische Bücher gebundene Ausgabe 15.12.2006 Buch (fremdspr.), Wiley John + Sons, .200

Neues Buch Buch.ch
No. 14078373 Versandkosten:zzgl. Versandkosten
Details...
(*) Derzeit vergriffen bedeutet, dass dieser Titel momentan auf keiner der angeschlossenen Plattform verfügbar ist.
Mining Graph Data - Diane J. Holder, Lawrence B. Cook
Vergriffenes Buch, derzeit bei uns nicht verfügbar.
(*)
Diane J. Holder, Lawrence B. Cook:
Mining Graph Data - neues Buch

ISBN: 9780471731900

ID: 248834b942b3ec36eb78be899eba36eb

Mining Graph Data Discover the latest data mining techniques for analyzing graph data This text takes a focused and comprehensive look at an area of data mining that is quickly rising to the forefront of the field: mining data that is represented as a graph. Each chapter is written by a leading researcher in the field; collectively, the chapters represent the latest findings and applications in both theory and practice, including solutions to many of the algorithmic challenges that arise in mining graph data. Following the authors' step-by-step guidance, even readers with minimal background in analyzing graph data will be able to represent data as graphs, extract patterns and concepts from the data, and apply the methodologies presented in the text to real datasets. Mining Graph Data is divided into three parts: * Part I, Graphs, offers an introduction to basic graph terminology and techniques. * Part II, Mining Techniques, features a detailed examination of computational techniques for extracting patterns from graph data. These techniques are the state of the art in frequent substructure mining, link analysis, graph kernels, and graph grammars. * Part III, Applications, describes the application of data mining techniques to four graph-based application domains: chemical graphs, bioinformatics data, Web graphs, and social networks. Practical case studies are included in many of the chapters. An accompanying Web site features source code and datasets, offering readers the opportunity to experiment with the techniques presented in the book as well as test their own ideas on graph data. The Web site also includes the results of many of the techniques presented in the text. This landmark work is intended for students and researchers in computer science, information systems, and data mining who want to learn how to analyze and extract useful patterns and concepts from graph data. Bücher / Fremdsprachige Bücher / Englische Bücher 978-0-471-73190-0, John Wiley & Sons Inc

Neues Buch Buch.de
Nr. 14078373 Versandkosten:Bücher und alle Bestellungen die ein Buch enthalten sind versandkostenfrei, sonstige Bestellungen innerhalb Deutschland EUR 3,-, ab EUR 20,- kostenlos, Bürobedarf EUR 4,50, kostenlos ab EUR 45,-, Versandfertig in 1 - 2 Wochen, DE. (EUR 0.00)
Details...
(*) Derzeit vergriffen bedeutet, dass dieser Titel momentan auf keiner der angeschlossenen Plattform verfügbar ist.
Mining Graph Data - Diane J. Holder, Lawrence B. Cook
Vergriffenes Buch, derzeit bei uns nicht verfügbar.
(*)
Diane J. Holder, Lawrence B. Cook:
Mining Graph Data - neues Buch

ISBN: 9780471731900

ID: 739554765

Discover the latest data mining techniques for analyzing graph data This text takes a focused and comprehensive look at an area of data mining that is quickly rising to the forefront of the field: mining data that is represented as a graph. Each chapter is written by a leading researcher in the field; collectively, the chapters represent the latest findings and applications in both theory and practice, including solutions to many of the algorithmic challenges that arise in mining graph data. Following the authors´ step-by-step guidance, even readers with minimal background in analyzing graph data will be able to represent data as graphs, extract patterns and concepts from the data, and apply the methodologies presented in the text to real datasets. Mining Graph Data is divided into three parts: * Part I, Graphs, offers an introduction to basic graph terminology and techniques. * Part II, Mining Techniques, features a detailed examination of computational techniques for extracting patterns from graph data. These techniques are the state of the art in frequent substructure mining, link analysis, graph kernels, and graph grammars. * Part III, Applications, describes the application of data mining techniques to four graph-based application domains: chemical graphs, bioinformatics data, Web graphs, and social networks. Practical case studies are included in many of the chapters. An accompanying Web site features source code and datasets, offering readers the opportunity to experiment with the techniques presented in the book as well as test their own ideas on graph data. The Web site also includes the results of many of the techniques presented in the text. This landmark work is intended for students and researchers in computer science, information systems, and data mining who want to learn how to analyze and extract useful patterns and concepts from graph data. Mining Graph Data Buch (fremdspr.) Bücher>Fremdsprachige Bücher>Englische Bücher, John Wiley & Sons Inc

Neues Buch Thalia.de
No. 14078373 Versandkosten:, Versandfertig in 1 - 2 Wochen, DE (EUR 0.00)
Details...
(*) Derzeit vergriffen bedeutet, dass dieser Titel momentan auf keiner der angeschlossenen Plattform verfügbar ist.
Mining Graph Data - Cook, Diane J.; Holder, Lawrence B.
Vergriffenes Buch, derzeit bei uns nicht verfügbar.
(*)
Cook, Diane J.; Holder, Lawrence B.:
Mining Graph Data - neues Buch

ISBN: 9780471731900

ID: 284362

DIANE J. COOK , PhD, is the Huie-Rogers Chair Professor in the School of Electrical Engineering and Computer Science at Washington State University. Her extensive research in artificial intelligence and data mining has been supported by grants from the National Science Foundation, NASA, DARPA, and Texas Instruments. Dr. Cook is the coauthor of Smart Environments: Technology, Protocols, and Applications (Wiley). LAWRENCE B. HOLDER , PhD, is Professor in the School of Electrical Engineering and Computer Science at Washington State University, where he teaches and conducts research in artificial intelligence, machine learning, data mining, graph theory, parallel and distributed processing, and cognitive architectures. Technology Technology eBook, Wiley

Neues Buch Ebooks.com
Versandkosten:zzgl. Versandkosten
Details...
(*) Derzeit vergriffen bedeutet, dass dieser Titel momentan auf keiner der angeschlossenen Plattform verfügbar ist.

Details zum Buch
Mining Graph Data
Autor:
Titel:
ISBN-Nummer:

Discover the latest data mining techniques for analyzing graph data This text takes a focused and comprehensive look at an area of data mining that is quickly rising to the forefront of the field: mining data that is represented as a graph. Each chapter is written by a leading researcher in the field; collectively, the chapters represent the latest findings and applications in both theory and practice, including solutions to many of the algorithmic challenges that arise in mining graph data. Following the authors' step-by-step guidance, even readers with minimal background in analyzing graph data will be able to represent data as graphs, extract patterns and concepts from the data, and apply the methodologies presented in the text to real datasets. Mining Graph Data is divided into three parts: * Part I, Graphs, offers an introduction to basic graph terminology and techniques. * Part II, Mining Techniques, features a detailed examination of computational techniques for extracting patterns from graph data. These techniques are the state of the art in frequent substructure mining, link analysis, graph kernels, and graph grammars. * Part III, Applications, describes the application of data mining techniques to four graph-based application domains: chemical graphs, bioinformatics data, Web graphs, and social networks. Practical case studies are included in many of the chapters. An accompanying Web site features source code and datasets, offering readers the opportunity to experiment with the techniques presented in the book as well as test their own ideas on graph data. The Web site also includes the results of many of the techniques presented in the text. This landmark work is intended for students and researchers in computer science, information systems, and data mining who want to learn how to analyze and extract useful patterns and concepts from graph data.

Detailangaben zum Buch - Mining Graph Data


EAN (ISBN-13): 9780471731900
ISBN (ISBN-10): 0471731900
Gebundene Ausgabe
Erscheinungsjahr: 2006
Herausgeber: John Wiley & Sons
500 Seiten
Gewicht: 0,839 kg
Sprache: eng/Englisch

Buch in der Datenbank seit 26.06.2007 18:47:26
Buch zuletzt gefunden am 28.06.2017 16:49:15
ISBN/EAN: 0471731900

ISBN - alternative Schreibweisen:
0-471-73190-0, 978-0-471-73190-0


< zum Archiv...
Benachbarte Bücher