Cluster Analysis and Data Mining: An Introduction
Download e-Book
Book Introduction
e-Books Highlight
-
Edition1st Edition
-
ISBN1938549384
-
Posted on2018-12-27
-
FormatPdf
-
Page Count333 Pages
-
Author
About the e-Book
Cluster Analysis and Data Mining: An Introduction Pdf
Cluster analysis is used in data mining and is a common technique for statistical data analysis used in many fields of study, such as the medical & life sciences, behavioral & social sciences, engineering, and in computer science. Designed for training industry professionals or for a course on clustering and classification, it can also be used as a companion text for applied statistics. No previous experience in clustering or data mining is assumed. Informal algorithms for clustering data and interpreting results are emphasized. In order to evaluate the results of clustering and to explore data, graphical methods and data structures are used for representing data. Throughout the text, examples and references are provided, in order to enable the material to be comprehensible for a diverse audience. A companion disc includes numerous appendices with programs, data, charts, solutions, etc.
Features:
• Places emphasis on illustrating the underlying logic in making decisions during the cluster analysis
• Discusses the related applications of statistic, e.g., Ward's method (ANOVA), JAN (regression analysis & correlational analysis), cluster validation (hypothesis testing, goodness-of-fit, Monte Carlo simulation, etc.)
• Contains separate chapters on JAN and the clustering of categorical data
• Includes a companion disc with solutions to exercises, programs, data sets, charts, etc.
e-Book View
Download e-Book Pdf
Amazon View
Buy It From AmazonThis site comply with DMCA digital copyright. We do not store files not owned by us, or without the permission of the owner. We also do not have links that lead to sites DMCA copyright infringement.
If You feel that this book is belong to you and you want to unpublish it, Please Contact us .
By Libribook
The Problem With Software
Graph Algorithms