Data Preprocessing in Data Mining / by Salvador García, Julián Luengo, Francisco Herrera.
Material type: TextPublisher: Cham : Springer International Publishing : Imprint: Springer, 2015Edition: 1st ed. 2015Description: XV, 320 p. : ill; 24 cmISBN:- 97831319102467
- QA76.9.D343 G373 2015
Item type | Current library | Call number | Status | Date due | Barcode | |
---|---|---|---|---|---|---|
Books | Muscat University Library | QA76.9.D343 G373 2015 (Browse shelf(Opens below)) | Available | 004447 | ||
Books | Muscat University Library | QA76.9.D343 G373 2015 (Browse shelf(Opens below)) | Available | 004448 | ||
Books | Muscat University Library | QA76.9.D343 G373 2015 (Browse shelf(Opens below)) | Available | 004449 |
Browsing Muscat University Library shelves Close shelf browser (Hides shelf browser)
No cover image available | No cover image available | No cover image available | No cover image available | No cover image available | ||||
QA76.774.M434 J333 2017 Windows 10 :The 2017 updated user Guide to master Microsoft windows 10 with tips and tricks\ | QA76.774.M434 J333 2017 Windows 10 :The 2017 updated user Guide to master Microsoft windows 10 with tips and tricks\ | QA76.9.D343 G373 2015 Data Preprocessing in Data Mining / | QA76.9.D343 G373 2015 Data Preprocessing in Data Mining / | QA76.9.D343 G373 2015 Data Preprocessing in Data Mining / | QA154.2 B376 2011 College algebra with trigonometry / | QA276 T333 2014 Using multivariate statistics / |
Introduction -- Data Sets and Proper Statistical Analysis of Data Mining Techniques -- Data Preparation Basic Models -- Dealing with Missing Values -- Dealing with Noisy Data -- Data Reduction -- Feature Selection -- Instance Selection -- Discretization -- A Data Mining Software Package Including Data Preparation and Reduction: KEEL.
Data Preprocessing for Data Mining addresses one of the most important issues within the well-known Knowledge Discovery from Data process. Data directly taken from the source will likely have inconsistencies, errors or most importantly, it is not ready to be considered for a data mining process. Furthermore, the increasing amount of data in recent science, industry and business applications, calls to the requirement of more complex tools to analyze it. Thanks to data preprocessing, it is possible to convert the impossible into possible, adapting the data to fulfill the input demands of each data mining algorithm. Data preprocessing includes the data reduction techniques, which aim at reducing the complexity of the data, detecting or removing irrelevant and noisy elements from the data. This book is intended to review the tasks that fill the gap between the data acquisition from the source and the data mining process. A comprehensive look from a practical point of view, including basic concepts and surveying the techniques proposed in the specialized literature, is given.Each chapter is a stand-alone guide to a particular data preprocessing topic, from basic concepts and detailed descriptions of classical algorithms, to an incursion of an exhaustive catalog of recent developments. The in-depth technical descriptions make this book suitable for technical professionals, researchers, senior undergraduate and graduate students in data science, computer science and engineering.
Description based on publisher-supplied MARC data.
There are no comments on this title.