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Kirjailija

T. Brendan Murphy

Kirjat ja teokset yhdessä paikassa: 3 kirjaa, julkaisuja vuosilta 2019-2023, suosituimpien joukossa Model-Based Clustering and Classification for Data Science. Vertaile teosten hintoja ja tarkista saatavuus suomalaisista kirjakaupoista.

3 kirjaa

Kirjojen julkaisuhaarukka 2019-2023.

Model-Based Clustering, Classification, and Density Estimation Using mclust in R

Model-Based Clustering, Classification, and Density Estimation Using mclust in R

Luca Scrucca; Chris Fraley; T. Brendan Murphy; Adrian E. Raftery

TAYLOR FRANCIS LTD
2023
sidottu
Model-based clustering and classification methods provide a systematic statistical approach to clustering, classification, and density estimation via mixture modeling. The model-based framework allows the problems of choosing or developing an appropriate clustering or classification method to be understood within the context of statistical modeling. The mclust package for the statistical environment R is a widely adopted platform implementing these model-based strategies. The package includes both summary and visual functionality, complementing procedures for estimating and choosing models.Key features of the book:An introduction to the model-based approach and the mclust R packageA detailed description of mclust and the underlying modeling strategiesAn extensive set of examples, color plots, and figures along with the R code for reproducing themSupported by a companion website, including the R code to reproduce the examples and figures presented in the book, errata, and other supplementary materialModel-Based Clustering, Classification, and Density Estimation Using mclust in R is accessible to quantitatively trained students and researchers with a basic understanding of statistical methods, including inference and computing. In addition to serving as a reference manual for mclust, the book will be particularly useful to those wishing to employ these model-based techniques in research or applications in statistics, data science, clinical research, social science, and many other disciplines.
Model-Based Clustering, Classification, and Density Estimation Using mclust in R

Model-Based Clustering, Classification, and Density Estimation Using mclust in R

Luca Scrucca; Chris Fraley; T. Brendan Murphy; Adrian E. Raftery

TAYLOR FRANCIS LTD
2023
nidottu
Model-based clustering and classification methods provide a systematic statistical approach to clustering, classification, and density estimation via mixture modeling. The model-based framework allows the problems of choosing or developing an appropriate clustering or classification method to be understood within the context of statistical modeling. The mclust package for the statistical environment R is a widely adopted platform implementing these model-based strategies. The package includes both summary and visual functionality, complementing procedures for estimating and choosing models.Key features of the book:An introduction to the model-based approach and the mclust R packageA detailed description of mclust and the underlying modeling strategiesAn extensive set of examples, color plots, and figures along with the R code for reproducing themSupported by a companion website, including the R code to reproduce the examples and figures presented in the book, errata, and other supplementary materialModel-Based Clustering, Classification, and Density Estimation Using mclust in R is accessible to quantitatively trained students and researchers with a basic understanding of statistical methods, including inference and computing. In addition to serving as a reference manual for mclust, the book will be particularly useful to those wishing to employ these model-based techniques in research or applications in statistics, data science, clinical research, social science, and many other disciplines.
Model-Based Clustering and Classification for Data Science

Model-Based Clustering and Classification for Data Science

Charles Bouveyron; Gilles Celeux; T. Brendan Murphy; Adrian E. Raftery

Cambridge University Press
2019
sidottu
Cluster analysis finds groups in data automatically. Most methods have been heuristic and leave open such central questions as: how many clusters are there? Which method should I use? How should I handle outliers? Classification assigns new observations to groups given previously classified observations, and also has open questions about parameter tuning, robustness and uncertainty assessment. This book frames cluster analysis and classification in terms of statistical models, thus yielding principled estimation, testing and prediction methods, and sound answers to the central questions. It builds the basic ideas in an accessible but rigorous way, with extensive data examples and R code; describes modern approaches to high-dimensional data and networks; and explains such recent advances as Bayesian regularization, non-Gaussian model-based clustering, cluster merging, variable selection, semi-supervised and robust classification, clustering of functional data, text and images, and co-clustering. Written for advanced undergraduates in data science, as well as researchers and practitioners, it assumes basic knowledge of multivariate calculus, linear algebra, probability and statistics.