Hillis S L
Department of Statistics and Actuarial Science, University of Iowa, Iowa City 52242, USA.
Stat Med. 1995 Sep 30;14(18):2023-36. doi: 10.1002/sim.4780141808.
To be consistent, censored data linear regression estimators typically require a correctly specified linear regression function and independent and identically distributed errors. For uncensored data one can assess these model assumptions informally by examining plots of the residuals against the independent variables or fitted values. In this paper I propose plots for censored data analogous to these uncensored data residual plots. One can use such plots in the same way as their uncensored data counterparts for checking model assumptions; if the model assumptions are correct, then the plots should exhibit a random scatter. I show that the proposed plots are useful in selecting a linear regression model for the Stanford heart transplant data.