R Dataset / Package KMsurv / channing
On this Picostat.com statistics page, you will find information about the channing data set which pertains to data from Section 1.16. The channing data set is found in the KMsurv R package. Try to load the channing data set in R by issuing the following command at the console data("channing"). This may load the data into a variable called channing. If R says the channing data set is not found, you can try installing the package by issuing this command install.packages("KMsurv") and then attempt to reload the data with library("KMsurv") followed by data("channing"). Perhaps strangley, if R gives you no output after entering a command, it means the command succeeded. If it succeeded you can see the data by typing channing at the command-line which should display the entire dataset.
If you need to download R, you can go to the R project website. You can download a CSV (comma separated values) version of the channing R data set. The size of this file is about 9,126 bytes.
data from Section 1.16
This data frame contains the following columns:
Klein and Moeschberger (1997) Survival Analysis Techniques for Censored and truncated data, Springer. Hyde Biometrika (1977), 225-230.
Dataset imported from https://www.r-project.org.
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