Knihobot

Data Mining

Practical Machine Learning Tools and Techniques - Fourth Edition

Více o knize

This fourth edition offers a comprehensive grounding in machine learning concepts and practical advice for real-world data mining applications. It covers everything from input preparation and output interpretation to evaluating results and the algorithmic methods central to successful data mining. The edition includes extensive updates reflecting recent technical advancements, with new chapters dedicated to probabilistic methods and deep learning. Additionally, it features a new version of the popular WEKA machine learning software from the University of Waikato. The authors, Witten, Frank, Hall, and Pal, integrate contemporary techniques with cutting-edge research methods. A companion website provides PowerPoint slides for Chapters 1-12, serving as a valuable teaching resource. The online appendix focuses on the Weka workbench, offering extensive learning aids for the accompanying open-source software. The table of contents highlights the new sections in this edition, along with reviews of the first edition and errata, ensuring a thorough educational experience for readers.

Nákup knihy

Data Mining, Christopher J Pallister, Ian H. Witten, Eibe Frank, Mark A Hall

Jazyk
Rok vydání
2016
product-detail.submit-box.info.binding
(měkká)
Jakmile se objeví, pošleme e-mail.

Doručení

Platební metody

Nikdo zatím neohodnotil.Ohodnotit

Titul
Data Mining
Podtitul
Practical Machine Learning Tools and Techniques - Fourth Edition
Jazyk
anglicky
Rok vydání
2016
Vazba
měkká
Počet stran
654
ISBN10
0128042915
ISBN13
9780128042915
Série
Anotace
This fourth edition offers a comprehensive grounding in machine learning concepts and practical advice for real-world data mining applications. It covers everything from input preparation and output interpretation to evaluating results and the algorithmic methods central to successful data mining. The edition includes extensive updates reflecting recent technical advancements, with new chapters dedicated to probabilistic methods and deep learning. Additionally, it features a new version of the popular WEKA machine learning software from the University of Waikato. The authors, Witten, Frank, Hall, and Pal, integrate contemporary techniques with cutting-edge research methods. A companion website provides PowerPoint slides for Chapters 1-12, serving as a valuable teaching resource. The online appendix focuses on the Weka workbench, offering extensive learning aids for the accompanying open-source software. The table of contents highlights the new sections in this edition, along with reviews of the first edition and errata, ensuring a thorough educational experience for readers.