oder
Loggen Sie sich ein, um 1-Click® einzuschalten.
Alle Angebote
Möchten Sie verkaufen? Hier verkaufen
Analysis of Longitudinal Data (Oxford Statistical Science Series)
 
 
Den Verlag informieren!
Ich möchte dieses Buch auf dem Kindle lesen.

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

Analysis of Longitudinal Data (Oxford Statistical Science Series) [Englisch] [Gebundene Ausgabe]

Peter Diggle , Patrick Heagerty , Kung-Yee Liang , Scott Zeger
5.0 von 5 Sternen  Alle Rezensionen anzeigen (2 Kundenrezensionen)
Preis: EUR 115,99 kostenlose Lieferung. Siehe Details.
  Alle Preisangaben inkl. MwSt.
o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o o
Auf Lager. Zustellung kann bis zu 2 zusätzliche Tage in Anspruch nehmen.
Verkauf und Versand durch Amazon.de. Geschenkverpackung verfügbar.
Nur noch 1 Stück auf Lager - jetzt bestellen.

Weitere Ausgaben

Amazon-Preis Neu ab Gebraucht ab
Gebundene Ausgabe EUR 115,99  

Hinweise und Aktionen

  • Studienbücher: Ob neu oder gebraucht, alle wichtigen Bücher für Ihr Studium finden Sie im großen Studium Special. Natürlich portofrei.


Produktinformation

  • Gebundene Ausgabe: 396 Seiten
  • Verlag: Oxford University Press; Auflage: Second Edition. (1. August 2002)
  • Sprache: Englisch
  • ISBN-10: 0198524846
  • ISBN-13: 978-0198524847
  • Größe und/oder Gewicht: 23,6 x 16,3 x 2,7 cm
  • Durchschnittliche Kundenbewertung: 5.0 von 5 Sternen  Alle Rezensionen anzeigen (2 Kundenrezensionen)
  • Amazon Bestseller-Rang: Nr. 84.127 in Englische Bücher (Siehe Top 100 in Englische Bücher)
  • Komplettes Inhaltsverzeichnis ansehen

Mehr über den Autor

Peter Diggle
Entdecken Sie Bücher, lesen Sie über Autoren und mehr

Besuchen Sie die Seite von Peter Diggle auf Amazon

Produktbeschreibungen

Pressestimmen

... provides an excellent bridge between novel concepts in theoretical statistics and their potential use in applied research. Statistics in Medicine, 23 The topics covered are too numerous to dwell on here ... If your work involves longitudinal data and you wish to update, this book will serve you very well. As a quick look-up, it is very useful. Pharmaceutical Statistics The authors conclude each chapter with a helpful summary or conclusion, often indicating further reading. Helpfully, they also mention the topics that they have chosen not to present, together with other recommended books for you to follow up ... They have also chosen a good selection of examples, many of them medical, with which the various methods are clearly illustrated. Pharmaceutical Statistics Readers with interests across a wide spectrum of application areas will find the ideas relevant and interesting ... The book is readable and well written ... It belongs to the possession of every statistician who encounters longitudinal data. Zentralblatt MATH

Kurzbeschreibung

The first edition of Analysis for Longitudinal Data has become a classic. Describing the statistical models and methods for the analysis of longitudinal data, it covers both the underlying statistical theory of each method, and its application to a range of examples from the agricultural and biomedical sciences. The main topics discussed are design issues, exploratory methods of analysis, linear models for continuous data, general linear models for discrete data, and models and methods for handling data and missing values. Under each heading, worked examples are presented in parallel with the methodological development, and sufficient detail is given to enable the reader to reproduce the author's results using the data-sets as an appendix. This new edition of Analysis for Longitudinal Data provides a thorough and expanded revision of this important text. It includes two new chapters; the first discusses fully parametric models for discrete repeated measures data, and the second explores statistical models for time-dependent predictors.

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


In diesem Buch (Mehr dazu)
Einleitungssatz
The defining characteristic of a longitudinal study is that individuals are measured repeatedly through time. Lesen Sie die erste Seite
Mehr entdecken
Wortanzeiger
Ausgewählte Seiten ansehen
Buchdeckel | Copyright | Inhaltsverzeichnis | Auszug | Stichwortverzeichnis | Rückseite
Hier reinlesen und suchen:

Tags

 (Was ist das?)
Bei einem Tag handelt es sich um ein Schlagwort, das zum Produkt passt.
Tags erleichtern allen Kunden die Suche und die Sortierung ihrer Lieblingsprodukte.
 

Eine digitale Version dieses Buchs im Kindle-Shop verkaufen

Wenn Sie ein Verleger oder Autor sind und die digitalen Rechte an einem Buch haben, können Sie die digitale Version des Buchs in unserem Kindle-Shop verkaufen. Weitere Informationen

Kundenrezensionen

4 Sterne
0
3 Sterne
0
2 Sterne
0
1 Sterne
0
Die hilfreichsten Kundenrezensionen
Format:Gebundene Ausgabe
When this book came out in 1994 there was a great need to look differently at clinical data on subjects. Typically such data would have repeated measurements over time for many subjects but for only a few time points (say three to five). Standard analysis of variance methods do not properly account for within patient correlation between measurements. Time series analysis generally is good for treating long series (but usually only one or a few). In the clinical setting we often are considering hundreds of patients over short time intervals. This book is clearly written for intermediate level statistics students.

The field is important and rapidly developing. Though slightly dated the book is still an excellent introduction to the subject and a very good reference. However, a second edition is in the works and should be out in about one year. I recently took a short course from the authors and I know that the second edition will have some nice features including the latest advances for dealing with missing data and ways to combined the information from time to event data with the repeated measures data. It may be that if longitudinal data analysis is important to you, read the first edition at your favorite university library and save your money for the second edition.

The book includes some nice treatment of the important but often neglected topic of sample size determination.

War diese Rezension für Sie hilfreich?
Von Ein Kunde
Format:Gebundene Ausgabe
This book was written by three very prestigious authors, two of which work at The Johns Hopkins University(Dr. Liang and Dr. Zeger), and Dr. Diggle, who is working in England. These three are very well known and respected characters in their field of work, and this book is an excellent reflection upon the research and work they have done over the years. Watch out! the key word is: GEE
War diese Rezension für Sie hilfreich?
Die hilfreichsten Kundenrezensionen auf Amazon.com (beta)
Amazon.com:  2 Rezensionen
40 von 41 Kunden fanden die folgende Rezension hilfreich
they were the first and they are still one of the best 18. August 2007
Von Michael R. Chernick - Veröffentlicht auf Amazon.com
Format:Gebundene Ausgabe
The first edition of this book was a major success as for the first time advanced methods for the use of longitudinal data were introduced. Longitudinal data (sometimes also referred to as repeated measures data) is very important in the analysis of clinical trial data. This is because many important trial endpoints are collected for each patient at several visits over the course of the trial and the study sponsor (usually the manufacturer of a drug or a device)will want to see how the measures change over time with usually the baseline measurement and the last measurement being the most important. Often they want to see in a randomized trial whether the treatment over inerest tends to perform better for the subjects taking the test treatment versus those who take the active control and/or placebo. An issue is the presence of correlation between measurements from one time point to another.

So this type of analysis is similar to time series analysis. The difference is that time series are usually studied in the situation where a single series is observed for a long time and the analyst wants to determine future behavior based on an model constructed to fit this one observed series very well. The model is intended in the time series setting to describe a stochastic process (usually a stationary process or one transformed to stationarity by removal of trends). On the other hand in longitudinal analysis each patients profile over time is usually a very short series and the collection of these series over several patients in a particular treatment group are view to come from the same stochastic process. So the data represent several short partial realizations of the stochastic process while a time series is a long, single partial realization.

Since the data differ the methods of analyses differ also. For time seies analysis the autoregressive integrated moving average models of Box and Jenkins are often employed while for longitudinal data the mixed effect linear models are often the class of models chosen. The common theme is the structure of the covariance matrix for the observations in time series and the model noise terms in the case of the linear mixed models.

Zeger and Liang were among the leaders in developing successful modelling for these data. In a series of articles they develop a restricted maximum likelihood approach to the problem of estimating the model parameters and introduce a method called GEE an acronym for generalized estimating equations. The first edition of this book was very popular in the statistical community, particularly for statisticians working in the pharmaceutical industry. Along with Peter Diggle these three authors presented in the first edition this research organized into a single book for the first time. Now there is a plethora of books some prinarily theoretical and others primarily applied. The issue of missing data is very common to this type of data particularly when the data come from a clinical trial. The research of Molenberghs and Verbeke, covered by them in some repeated measures books, has shown these models to be among the most useful for handling missing data in realistic ways.

This second edition of this book has even greater coverage of topics and includes a fourth author Patrick Heagerty. Each of the four authors are skill research statisticians who specialize in biostatistics and particularly longitudinal data. While today there are many books to choose, this text continues ot be among the best.
8 von 37 Kunden fanden die folgende Rezension hilfreich
Excellent, highly recommended! 14. Juli 1998
Von Ein Kunde - Veröffentlicht auf Amazon.com
Format:Gebundene Ausgabe
This book was written by three very prestigious authors, two of which work at The Johns Hopkins University(Dr. Liang and Dr. Zeger), and Dr. Diggle, who is working in England. These three are very well known and respected characters in their field of work, and this book is an excellent reflection upon the research and work they have done over the years. Watch out! the key word is: GEE
Kundenrezensionen suchen
Nur in den Rezensionen zu diesem Produkt suchen

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


Anhand des Sachgebietes nach ähnlichen Produkten suchen:


Ihr Kommentar


Datenschutzerklärung von Amazon.de Versandbedingungen von Amazon.de Umtausch- & Rücknahme bei Amazon.de