Data Mining and Machine Learning
Fundamental Concepts and Algorithms
2nd Edition
$83.99 ( ) USD
- Authors:
- Mohammed J. Zaki, Rensselaer Polytechnic Institute, New York
- Wagner Meira, Jr, Universidade Federal de Minas Gerais, Brazil
- Date Published: January 2020
- availability: This ISBN is for an eBook version which is distributed on our behalf by a third party.
- format: Adobe eBook Reader
- isbn: 9781108658690
Find out more about Cambridge eBooks
$
83.99 USD
( )
Adobe eBook Reader
Other available formats:
Hardback
Looking for an examination copy?
If you are interested in the title for your course we can consider offering an examination copy. To register your interest please contact collegesales@cambridge.org providing details of the course you are teaching.
-
The fundamental algorithms in data mining and machine learning form the basis of data science, utilizing automated methods to analyze patterns and models for all kinds of data in applications ranging from scientific discovery to business analytics. This textbook for senior undergraduate and graduate courses provides a comprehensive, in-depth overview of data mining, machine learning and statistics, offering solid guidance for students, researchers, and practitioners. The book lays the foundations of data analysis, pattern mining, clustering, classification and regression, with a focus on the algorithms and the underlying algebraic, geometric, and probabilistic concepts. New to this second edition is an entire part devoted to regression methods, including neural networks and deep learning.
Read more- Covers both core methods and cutting-edge research, including deep learning
- Offers an algorithmic approach with open-source implementations
- Short, self-contained chapters with class-tested examples and exercises allow flexibility in course design and ready reference
Reviews & endorsements
‘This book by Mohammed Zaki and Wagner Meira, Jr is a great option for teaching a course in data mining or data science. It covers both fundamental and advanced data mining topics, explains the mathematical foundations and the algorithms of data science, includes exercises for each chapter, and provides data, slides and other supplementary material on the companion website.' Gregory Piatetsky-Shapiro, Founder of the Association for Computing Machinery's Special Interest Group on Knowledge Discovery and Data Mining (ACM SIGKDD)
See more reviews‘World-class experts, providing an encyclopedic coverage of all datamining topics, from basic statistics to fundamental methods (clustering, classification, frequent itemsets), to advanced methods (SVD, SVM, kernels, spectral graph theory, deep learning). For each concept, the book thoughtfully balances the intuition, the arithmetic examples, as well the rigorous math details. It can serve both as a textbook, as well as a reference book.' Christos Faloutsos, Carnegie Mellon University, Pennsylvania, and winner of the ACM SIGKDD Innovation Award
Customer reviews
Not yet reviewed
Be the first to review
Review was not posted due to profanity
×Product details
- Edition: 2nd Edition
- Date Published: January 2020
- format: Adobe eBook Reader
- isbn: 9781108658690
- contains: 297 b/w illus.
- availability: This ISBN is for an eBook version which is distributed on our behalf by a third party.
Table of Contents
1. Data mining and analysis
Part I. Data Analysis Foundations:
2. Numeric attributes
3. Categorical attributes
4. Graph data
5. Kernel methods
6. High-dimensional data
7. Dimensionality reduction
Part II. Frequent Pattern Mining:
8. Itemset mining
9. Summarizing itemsets
10. Sequence mining
11. Graph pattern mining
12. Pattern and rule assessment
Part III. Clustering:
13. Representative-based clustering
14. Hierarchical clustering
15. Density-based clustering
16. Spectral and graph clustering
17. Clustering validation
Part IV. Classification:
18. Probabilistic classification
19. Decision tree classifier
20. Linear discriminant analysis
21. Support vector machines
22. Classification assessment
Part V. Regression:
23. Linear regression
24. Logistic regression
25. Neural networks
26. Deep learning
27. Regression evaluation.
Sorry, this resource is locked
Please register or sign in to request access. If you are having problems accessing these resources please email lecturers@cambridge.org
Register Sign in» Proceed
You are now leaving the Cambridge University Press website. Your eBook purchase and download will be completed by our partner www.ebooks.com. Please see the permission section of the www.ebooks.com catalogue page for details of the print & copy limits on our eBooks.
Continue ×Are you sure you want to delete your account?
This cannot be undone.
Thank you for your feedback which will help us improve our service.
If you requested a response, we will make sure to get back to you shortly.
×