
Introduction to Data Mining, 2nd edition
- Pang-Ning Tan
- , Michael Steinbach
- , Vipin Kumar
$9.99/moper month
6 monthly payments or pay $59.94 one-time
Purchasing Instructions
This form contains two groups of radio buttons, one for Exam Pack purchasing options, and one for standard purchasing options. Only one option can be chosen for purchase. Any option that is selected will deselect any previously selected purchase option.
$89.94
Due today
Purchasing Instructions
This form contains two groups of radio buttons, one for Exam Pack purchasing options, and one for standard purchasing options. Only one option can be chosen for purchase. Any option that is selected will deselect any previously selected purchase option.
- Listen on the go
Learn how you like with full eTextbook audio
- Find it fast
Quickly navigate your eTextbook with search
- Stay organized
Access all your eTextbooks in one place
- Easily continue access
Keep learning with auto-renew
Introduction to Data Mining introduces the fundamental concepts and algorithms of data mining. The text offers a comprehensive overview of the background and general themes of data mining and is designed to be useful to students, instructors, researchers and professionals.
Presented in a clear and accessible way, the book outlines fundamental concepts and algorithms for each topic, thus providing the reader with the necessary background for the application of data mining to real problems. The text helps you understand the nuances of the subject, and includes important sections on classification, association analysis and cluster analysis.
This 2nd Edition improves on the first iteration of the book, published over a decade ago, by addressing the significant changes in the industry as a result of advanced technology and data growth.
Published by Pearson (July 14th 2021) - Copyright © 2022
ISBN-13: 9780137506286
Subject: Database
Category: Data Mining
- Introduction
- Data
- Classification: Basic Concepts and Techniques
- Classification: Alternative Techniques
- Association Analysis: Basic Concepts and Algorithms
- Association Analysis: Advanced Concepts
- Cluster Analysis: Basic Concepts and Algorithms
- Cluster Analysis: Additional Issues and Algorithms
- Anomaly Detection
- Avoiding False Discoveries