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Practical guide to cluster analysis in R : unsupervised machine learning. Vol. 1, Multivariate Analysis / Alboukadel Kassambara.

By: Kassambara, Alboukadel [author].
Material type: materialTypeLabelBookPublisher: [Middletown, DE] : STHDA, [2017]Copyright date: ©2017Description: 187 pages : color illustrations, 26 cm.Content type: text Media type: unmediated Carrier type: volumeISBN: 9781542462709 (paperback).Subject(s): Cluster analysis | R (Computer program language)DDC classification: 519.53
Contents:
I: Basics -- Introduction to R -- Data preparation and R packages -- Clustering distance measures -- II: Partitioning clustering -- K-means clustering -- K-medoids -- CLARA - clustering large applications -- III: Hierarchical clustering -- Agglomerative clustering -- Comparing dendrograms -- Visualizing dendrograms -- Heatmap: static and interactive -- IV: Cluster validation -- Assessing cluster tendency -- Determining the optimal number of clusters -- Cluster validation statistics -- Choosing the best clustering algorithms -- Computering P-value for hierarchical clustering -- V: Advanced clustering -- Hierarchical K-means clustering -- Fuzzy clustering -- Model-based clustering -- DBSCAN: density-based clustering.
Holdings
Item type Current library Call number Status Date due Barcode Item holds
3 day loan MTU Bishopstown Library Short Loan 519.53 (Browse shelf(Opens below)) Available 00213725
General Lending MTU Bishopstown Library Lending 519.53 (Browse shelf(Opens below)) Available 00213726
Total holds: 0

Enhanced descriptions from Syndetics:

Although there are several good books on unsupervised machine learning, we felt that many of them are too theoretical. This book provides practical guide to cluster analysis, elegant visualization and interpretation. It contains 5 parts. Part I provides a quick introduction to R and presents required R packages, as well as, data formats and dissimilarity measures for cluster analysis and visualization. Part II covers partitioning clustering methods, which subdivide the data sets into a set of k groups, where k is the number of groups pre-specified by the analyst. Partitioning clustering approaches include: K-means, K-Medoids (PAM) and CLARA algorithms. In Part III, we consider hierarchical clustering method, which is an alternative approach to partitioning clustering. The result of hierarchical clustering is a tree-based representation of the objects called dendrogram. In this part, we describe how to compute, visualize, interpret and compare dendrograms. Part IV describes clustering validation and evaluation strategies, which consists of measuring the goodness of clustering results. Among the chapters covered here, there are: Assessing clustering tendency, Determining the optimal number of clusters, Cluster validation statistics, Choosing the best clustering algorithms and Computing p-value for hierarchical clustering. Part V presents advanced clustering methods, including: Hierarchical k-means clustering, Fuzzy clustering, Model-based clustering and Density-based clustering.

Includes bibliographical references (pages 186-187).

I: Basics -- Introduction to R -- Data preparation and R packages -- Clustering distance measures -- II: Partitioning clustering -- K-means clustering -- K-medoids -- CLARA - clustering large applications -- III: Hierarchical clustering -- Agglomerative clustering -- Comparing dendrograms -- Visualizing dendrograms -- Heatmap: static and interactive -- IV: Cluster validation -- Assessing cluster tendency -- Determining the optimal number of clusters -- Cluster validation statistics -- Choosing the best clustering algorithms -- Computering P-value for hierarchical clustering -- V: Advanced clustering -- Hierarchical K-means clustering -- Fuzzy clustering -- Model-based clustering -- DBSCAN: density-based clustering.

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