Shop securely with PayTo on Amazon. Direct payments from your trusted bank. No card details required.
Buy used:
$122.72
$10 delivery 22 - 28 May to Sydney 2000. Details
Used: Good | Details
Condition: Used: Good
Comment: Good, there are underlined, highlighted sentences.Spine may show signs of wear. Good books may contain ex-library markings . extbooks may not include extra supplements such as CD, DVDs , access code, etc.And dust jacket may be missing. Fast shipping.
Kindle app logo image

Download the free Kindle app and start reading Kindle books instantly on your smartphone, tablet or computer—no Kindle device required.

Read instantly on your browser with Kindle for Web.

Using your mobile phone camera, scan the code below and download the Kindle app.

QR code to download the Kindle App

Follow the authors

Something went wrong. Please try your request again later.

Data Mining 3e Hardcover – 22 June 2011

4.4 out of 5 stars 257 ratings
Edition: 3rd

7 3/4 X 9 7/16 in

1 Introduction


1 What Motivated Data Mining? Wh y Is It Important?


2 So, What Is Data Mining?


3 Dat a Mining--On What Kind of Data?


4 Data Mining Functionalities ?What Kinds of Patterns Can Be Mined?


5 Are All of the Patter ns Interesting?


6 Classification of Data Mining Systems


7 Data Mining Task Primitives


8 Integration of a Data M ining System with a Database or Data Warehouse System


9 Major Issues in Data Mining


10 Summary


Exercises

Bibliographic Notes



Chapter 2. Getting to Kno w Your Data


1. Types of Data Sets and Attribute Values


2. Basic Statistical Descriptions of Data


3. Data Visualiza tion


4. Measuring Data Similarity


5. Summary


Exercises


Bibliographic Notes



Chapter 3. Preprocessing: Data Reduction, Transformation, and Integration


1. Data Quality


2. Major Tasks in Data Preprocessing

3. Data Reduction


4. Data Transformation and Data Discret

There is a newer edition of this item:

Data Mining: Concepts and Techniques
$108.54
(57)
Available to ship in 1-2 days

Product description

Review

"A well-written textbook (2nd ed., 2006; 1st ed., 2001) on data mining or knowledge discovery. The text is supported by a strong outline. The authors preserve much of the introductory material, but add the latest techniques and developments in data mining, thus making this a comprehensive resource for both beginners and practitioners. The focus is data―all aspects. The presentation is broad, encyclopedic, and comprehensive, with ample references for interested readers to pursue in-depth research on any technique. Summing Up: Highly recommended. Upper-division undergraduates through professionals/practitioners." --CHOICE "This interesting and comprehensive introduction to data mining emphasizes the interest in multidimensional data mining--the integration of online analytical processing (OLAP) and data mining. Some chapters cover basic methods, and others focus on advanced techniques. The structure, along with the didactic presentation, makes the book suitable for both beginners and specialized readers." --ACM’s Computing Reviews.com "We are living in the data deluge age. The Data Mining: Concepts and Techniques shows us how to find useful knowledge in all that data. Thise 3rd editionThird Edition significantly expands the core chapters on data preprocessing, frequent pattern mining, classification, and clustering. The bookIt also comprehensively covers OLAP and outlier detection, and examines mining networks, complex data types, and important application areas. The book, with its companion website, would make a great textbook for analytics, data mining, and knowledge discovery courses." --Gregory Piatetsky, President, KDnuggets "Jiawei, Micheline, and Jian give an encyclopaedic coverage of all the related methods, from the classic topics of clustering and classification, to database methods (association rules, data cubes) to more recent and advanced topics (SVD/PCA , wavelets, support vector machines)…. Overall, it is an excellent book on classic and modern data mining methods alike, and it is ideal not only for teaching, but as a reference book." --From the foreword by Christos Faloutsos, Carnegie Mellon University "A very good textbook on data mining, this third edition reflects the changes that are occurring in the data mining field. It adds cited material from about 2006, a new section on visualization, and pattern mining with the more recent cluster methods. It’s a well-written text, with all of the supporting materials an instructor is likely to want, including Web material support, extensive problem sets, and solution manuals. Though it serves as a data mining text, readers with little experience in the area will find it readable and enlightening. That being said, readers are expected to have some coding experience, as well as database design and statistics analysis knowledge…Two additional items are worthy of note: the text’s bibliography is an excellent reference list for mining research; and the index is very complete, which makes it easy to locate information. Also, researchers and analysts from other disciplines--for example, epidemiologists, financial analysts, and psychometric researchers--may find the material very useful." --Computing Reviews "Han (engineering, U. of Illinois-Urbana-Champaign), Micheline Kamber, and Jian Pei (both computer science, Simon Fraser U., British Columbia) present a textbook for an advanced undergraduate or beginning graduate course introducing data mining. Students should have some background in statistics, database systems, and machine learning and some experience programming. Among the topics are getting to know the data, data warehousing and online analytical processing, data cube technology, cluster analysis, detecting outliers, and trends and research frontiers. Chapter-end exercises are included." --SciTech Book News

About the Author

Jiawei Han is Professor in the Department of Computer Science at the University of Illinois at Urbana-Champaign. Well known for his research in the areas of data mining and database systems, he has received many awards for his contributions in the field, including the 2004 ACM SIGKDD Innovations Award. He has served as Editor-in-Chief of ACM Transactions on Knowledge Discovery from Data, and on editorial boards of several journals, including IEEE Transactions on Knowledge and Data Engineering and Data Mining and Knowledge Discovery.

Product details

  • Publisher ‏ : ‎ Morgan Kaufmann Publishing; 3rd edition (22 June 2011)
  • Language ‏ : ‎ English
  • Hardcover ‏ : ‎ 800 pages
  • ISBN-10 ‏ : ‎ 0123814790
  • ISBN-13 ‏ : ‎ 978-0123814791
  • Dimensions ‏ : ‎ 20.32 x 4.45 x 24.13 cm
  • Customer Reviews:
    4.4 out of 5 stars 257 ratings

About the authors

Follow authors to get new release updates, plus improved recommendations.

Customer reviews

4.4 out of 5 stars
257 global ratings

Review this product

Share your thoughts with other customers

Top reviews from Australia

There are 0 reviews and 1 rating from Australia

Top reviews from other countries

Translate all reviews to English
  • E. Ritchie
    5.0 out of 5 stars This is a great book if you are looking for a concept-driven textbook ...
    Reviewed in the United Kingdom on 4 March 2015
    Verified Purchase
    This is a great book if you are looking for a concept-driven textbook and strong overview of data mining. I find myself reaching for this book more than my more traditionally academic books when working with others. The people I work with want to understand how the techniques work in general; they aren't after impressive equations or technical language, impressive though it might sound. The more conversational tone is accessible and ease to dip back into for a reminder when used as a high level reference text.

    Overall, an especially good library addition for people working with non-stats people.
  • J
    5.0 out of 5 stars Good quality and packaging 👍
    Reviewed in India on 21 September 2023
    Verified Purchase
    Fine package and book in good conditions 👍
    Customer image
    J
    5.0 out of 5 stars
    Good quality and packaging 👍

    Reviewed in India on 21 September 2023
    Fine package and book in good conditions 👍
    Images in this review
    Customer imageCustomer image
  • Miguel Angel Ajo Pelayo
    5.0 out of 5 stars Extremely easy to read & understand
    Reviewed in Spain on 12 April 2013
    Verified Purchase
    It approaches the topics in a very easy way, I'm new on the topic, with a university background, not specially good a statistics, but this book is being easy to read & understand.
  • panda do not kung fu
    5.0 out of 5 stars Good book with efforts
    Reviewed in the United States on 21 April 2012
    Verified Purchase
    Needless to say, this is a classic book for data mining.
    It presents an extraordinary clear flow of materials. The essences of the difficult and challenging research publications are extracted
    and transformed into a domain even novice could catch the points.

    For practitioner who wish to get quick and broad-based overview, this book is for you.
    For students who are going to do research in this area, this is probably the place you should embark
  • Eleonora
    4.0 out of 5 stars buon libro ma c'è di meglio
    Reviewed in Italy on 29 November 2017
    Verified Purchase
    Come da titolo, è un buon libro. Fornisce una panoramica delle tecniche ( avanzate e basilari) di data minino. Molti capitoli sono spiegati davvero bene, altri un po' meno. Il problema è che un libro che lascia un po' l'amaro in bocca. In alcuni capitoli ti spiega molto da un punto di vista teorico, poco in quello pratico. Non per nulla l'ho usato come libro di supporto al famoso "mining of massive datasets"( anche se, ad esempio, a differenza di quest'ultimo, la parte di machine Learning ovvero SVM è molto più chiara qui). Inoltre, contiene spiegazioni di algoritmi che non ho visto in altri libri, quindi rimane un libro secondario da usare insieme ad altri testi.
    Report