A Handbook of Statistical Analyses Using R und über 1,5 Millionen weitere Bücher verfügbar für Amazon Kindle. Erfahren Sie mehr

Jetzt eintauschen
und EUR 10,36 Gutschein erhalten
Eintausch
Möchten Sie verkaufen? Hier verkaufen
Der Artikel ist in folgender Variante leider nicht verfügbar
Keine Abbildung vorhanden für
Farbe:
Keine Abbildung vorhanden

 
Beginnen Sie mit dem Lesen von A Handbook of Statistical Analyses Using R auf Ihrem Kindle in weniger als einer Minute.

Sie haben keinen Kindle? Hier kaufen oder eine gratis Kindle Lese-App herunterladen.

A Handbook of Statistical Analyses Using R [Englisch] [Taschenbuch]

Brian S. Everitt , Hothorn Torsten


Erhältlich bei diesen Anbietern.


Weitere Ausgaben

Amazon-Preis Neu ab Gebraucht ab
Kindle Edition EUR 27,59  
Taschenbuch --  
Dieses Buch gibt es in einer neuen Auflage:
A Handbook of Statistical Analyses Using R A Handbook of Statistical Analyses Using R
EUR 48,40
Auf Lager.

Kurzbeschreibung

21. Februar 2006
R is dynamic, to say the least. More precisely, it is organic, with new functionality and add-on packages appearing constantly. And because of its open-source nature and free availability, R is quickly becoming the software of choice for statistical analysis in a variety of fields. Doing for R what Everitt's other Handbooks have done for S-PLUS, STATA, SPSS, and SAS, "A Handbook of Statistical Analyses Using R" presents straightforward, self-contained descriptions of how to perform a variety of statistical analyses in the R environment. From simple inference to recursive partitioning and cluster analysis, eminent experts Everitt and Hothorn lead you methodically through the steps, commands, and interpretation of the results, addressing theory and statistical background only when useful or necessary. They begin with an introduction to R, discussing the syntax, general operators, and basic data manipulation while summarizing the most important features. Numerous figures highlight R's strong graphical capabilities and exercises at the end of each chapter reinforce the techniques and concepts presented. All data sets and code used in the book are available as a downloadable package from CRAN, the R online archive. "A Handbook of Statistical Analyses Using R" is the perfect guide for newcomers as well as seasoned users of R who want concrete, step-by-step guidance on how to use the software easily and effectively for nearly any statistical analysis.

Kunden, die diesen Artikel angesehen haben, haben auch angesehen


Produktinformation


Mehr über den Autor

Entdecken Sie Bücher, lesen Sie über Autoren und mehr

Produktbeschreibungen

Synopsis

R is dynamic, to say the least. More precisely, it is organic, with new functionality and add-on packages appearing constantly. And because of its open-source nature and free availability, R is quickly becoming the software of choice for statistical analysis in a variety of fields. Doing for R what Everitt's other Handbooks have done for S-PLUS, STATA, SPSS, and SAS, "A Handbook of Statistical Analyses Using R" presents straightforward, self-contained descriptions of how to perform a variety of statistical analyses in the R environment. From simple inference to recursive partitioning and cluster analysis, eminent experts Everitt and Hothorn lead you methodically through the steps, commands, and interpretation of the results, addressing theory and statistical background only when useful or necessary. They begin with an introduction to R, discussing the syntax, general operators, and basic data manipulation while summarizing the most important features. Numerous figures highlight R's strong graphical capabilities and exercises at the end of each chapter reinforce the techniques and concepts presented.

All data sets and code used in the book are available as a downloadable package from CRAN, the R online archive. "A Handbook of Statistical Analyses Using R" is the perfect guide for newcomers as well as seasoned users of R who want concrete, step-by-step guidance on how to use the software easily and effectively for nearly any statistical analysis.


Welche anderen Artikel kaufen Kunden, nachdem sie diesen Artikel angesehen haben?


In diesem Buch (Mehr dazu)
Mehr entdecken
Wortanzeiger
Ausgewählte Seiten ansehen
Buchdeckel | Copyright | Inhaltsverzeichnis | Auszug | Stichwortverzeichnis | Rückseite
Hier reinlesen und suchen:

Kundenrezensionen

Es gibt noch keine Kundenrezensionen auf Amazon.de
5 Sterne
4 Sterne
3 Sterne
2 Sterne
1 Sterne
Die hilfreichsten Kundenrezensionen auf Amazon.com (beta)
Amazon.com: 4.7 von 5 Sternen  6 Rezensionen
45 von 45 Kunden fanden die folgende Rezension hilfreich
5.0 von 5 Sternen covers most important statistical techniques using the R Language 8. März 2008
Von Michael R. Chernick - Veröffentlicht auf Amazon.com
Format:Taschenbuch
Brian Everett has previously written similar handbooks for SAS and SPlus. As R is becoming the language of choice in statistical computing in research particularly academoc research this book is a welcome addition. This book is actually a great booj on statistical methods and covers most of the important modern advances including ANOVA, linear regression, generalized linear models with emphasis on logistic regression, probability density estimation (nonparametric), recursive partitioning (i.e. classification and regression trees), survival analysis, bootstrap methods, longitudinal data analysis including mixed effect linear models and generalized estimating equations, meta analyses, principal component analysis, multidimensional scaling and cluster analysis, In each case the methods are clearly explained, are illustrated using real data for examples using R code that is listed for the student to replicate. results are presented through computer output and graphs. This is a very diverse set of methods covering many topics and expecially those commonly needed in clinical trials. the book also contains a very useful bibliography. unfortunately Bayesian techniques are sorely missing with the only reference to Bayes being Schwarz's Bayesian Information Criterion (BIC) that is used for model comparisons.

This book helps open up sensible techniques thst can be applied to a wide variety of problems that the applied researcher might need. The only major technique that is missing here are the Bayesian hierarchical models that have been used extensively in the medical device arm of the FDA (CDRH) are not covered in this fine text.
42 von 42 Kunden fanden die folgende Rezension hilfreich
5.0 von 5 Sternen Practical examples of using R for analysis 19. November 2007
Von R. Thomas - Veröffentlicht auf Amazon.com
Format:Taschenbuch|Von Amazon bestätigter Kauf
When it comes to working with statistics, R is a great tool to have at your disposal. Sadly, there is a shortage of information that closes the gap between the simplistic examples used to learn data analysis with R and the more complicated techniques necessary to use R when working with more complex data sets.

_A Handbook of Statistical Analyses Using R_ sits nicely between the traditional introductory tomes for R (Introductory Statistics with R by Peter Dalgaard, or Statistics: An Introduction using R by Michael J. Crawley being two of the best) and the more advanced single topic texts which have a tendency to focus on one particular modeling technique.

As a workbook, the examples are short enough to be worked through in anywhere from 30 minutes to two hours. And while they often assume that the reader is familiar with certain aspects of statistical analysis, a quick refresher is provided for most topics before the exercises.

As a quick reference used to give examples of how to analyze different types of data, the book stands out for having a diverse set of worked examples that give a great jump start into working with R if you need a sample to get going.

If you work with R long enough, you'll find that you need a variety of reference sources to draw upon. _A Handbook of Statistical Analyses Using R_ is a solid addition to that reference library.
5 von 5 Kunden fanden die folgende Rezension hilfreich
5.0 von 5 Sternen Great Introduction to R and Statistics 19. März 2009
Von Atomic Ritual - Veröffentlicht auf Amazon.com
Format:Taschenbuch
This book is an accessible, higly readable introduction to the R Language and applications in statistics. I have compared other books in the same category and I can find none that approach this book in its clarity of presentation. I highly recommend this book for anyone who is approaching this subject for the first time.
Waren diese Rezensionen hilfreich?   Wir wollen von Ihnen hören.

Kunden diskutieren

Das Forum zu diesem Produkt
Diskussion Antworten Jüngster Beitrag
Noch keine Diskussionen

Fragen stellen, Meinungen austauschen, Einblicke gewinnen
Neue Diskussion starten
Thema:
Erster Beitrag:
Eingabe des Log-ins
 


Aktive Diskussionen in ähnlichen Foren
Kundendiskussionen durchsuchen
Alle Amazon-Diskussionen durchsuchen
   
Ähnliche Foren


Lieblingslisten


Ähnliche Artikel finden


Ihr Kommentar