ABSTRACT

With an emphasis on social science applications, Event History Analysis with R, Second Edition, presents an introduction to survival and event history analysis using real-life examples. Since publication of the first edition, focus in the field has gradually shifted towards the analysis of large and complex datasets. This has led to new ways of tabulating and analysing tabulated data with the same precision and power as that of an analysis of the full data set. Tabulation also makes it possible to share sensitive data with others without violating integrity.

The new edition extends on the content of the first by both improving on already given methods and introducing new methods. There are two new chapters, Explanatory Variables and Regression, and Register- Based Survival Data Models. The book has been restructured to improve the flow, and there are significant updates to the computing in the supporting R package.

Features

• Introduction to survival and event history analysis and how to solve problems with incomplete data
using Cox regression.
• Parametric proportional hazards models, including the Weibull, Exponential, Extreme Value, and
Gompertz distributions.
• Parametric accelerated failure time models with the Lognormal, Loglogistic, Gompertz, Exponential,
Extreme Value, and Weibull distributions.
• Proportional hazards models for occurrence/exposure data, useful with tabular and register based data,
often with a huge amount of observed events.
• Special treatments of external communal covariates, selections from the Lexis diagram, and creating
period as well as cohort statistics.
• “Weird bootstrap” sampling suitable for Cox regression with small to medium-sized data sets.
• Supported by an R package (https://CRAN.R-project.org/package=eha), including code and data for
most examples in the book.
• A dedicated home page for the book at https://ehar.se/r/ehar2

This substantial update to this popular book remains an excellent resource for researchers and practitioners
of applied event history analysis and survival analysis. It can be used as a text for a course for graduate
students or for self-study.

chapter 1|22 pages

Event History and Survival Data

chapter 2|20 pages

Single Sample Data

chapter 3|22 pages

Proportional Hazards and Cox Regression

chapter 4|14 pages

Explanatory Variables and Regression

chapter 5|14 pages

Poisson Regression

chapter 6|24 pages

More on Cox Regression

chapter 7|24 pages

Register-Based Survival Data Models

chapter 8|42 pages

Parametric Models

chapter 9|14 pages

Multivariate Survival Models

chapter 10|16 pages

Causality and Matching

chapter 11|10 pages

Competing Risks Models