Proactive Data Mining with Decision Trees

Locate

My Reading Lists:

Create a new list



Buy this book

Last edited by MARC Bot
October 9, 2024 | History

Proactive Data Mining with Decision Trees

This book explores a proactive and domain-driven method to classification tasks. This novel proactive approach to data mining not only induces a model for predicting or explaining a phenomenon, but also utilizes specific problem/domain knowledge to suggest specific actions to achieve optimal changes in the value of the target attribute. In particular, the authors suggest a specific implementation of the domain-driven proactive approach for classification trees. The book centers on the core idea of moving observations from one branch of the tree to another. It introduces a novel splitting criterion for decision trees, termed maximal-utility, which maximizes the potential for enhancing profitability in the output tree. Two real-world case studies, one of a leading wireless operator and the other of a major security company, are also included and demonstrate how applying the proactive approach to classification tasks can solve business problems. Proactive Data Mining with Decision Trees is intended for researchers, practitioners and advanced-level students.

Publish Date
Publisher
Springer
Pages
100

Buy this book

Edition Availability
Cover of: Proactive Data Mining with Decision Trees
Proactive Data Mining with Decision Trees
Feb 15, 2014, Springer
paperback
Cover of: Proactive Data Mining with Decision Trees
Proactive Data Mining with Decision Trees
Feb 15, 2014, Springer
paperback
Cover of: Proactive Data Mining with Decision Trees
Proactive Data Mining with Decision Trees
2014, Springer London, Limited
in English

Add another edition?

Book Details


Edition Notes

Source title: Proactive Data Mining with Decision Trees (SpringerBriefs in Electrical and Computer Engineering)

Classifications

Library of Congress
QA76.9.D343 D34 2014, QA76.9.D343QA75.5-76, QA76.9.D343

The Physical Object

Format
paperback
Number of pages
100

Edition Identifiers

Open Library
OL27974822M
ISBN 10
1493905384
ISBN 13
9781493905386
LCCN
2014931371

Work Identifiers

Work ID
OL20689574W

Community Reviews (0)

No community reviews have been submitted for this work.

Lists

History

Download catalog record: RDF / JSON / OPDS | Wikipedia citation
October 9, 2024 Edited by MARC Bot import existing book
October 10, 2020 Edited by ImportBot import existing book
September 21, 2020 Edited by MARC Bot import existing book
August 3, 2020 Edited by ImportBot import existing book
April 29, 2020 Created by ImportBot Imported from amazon.com record