- Adapted tests for hardhat 1.4.3 (#358).
- The format of quantile predictions now follows the new requirements in parsnip (#339, tidymodels/parsnip/#1209).
- censored now depends on survival >= 3.7-0 which allows us to use it also for predictions of survival probabilities at infinite evaluation time points. This means that: Survival probabilities at
eval_time = Infare now not always set to 0 and confidence intervals at infinite evaluation times are now not always set toNA. This applies toproportional_hazards()andbag_tree()models as well as models with thepartykitengine,decision_tree()andrand_forest()(#320).
- Internal changes to the
predict()methods for flexsurv models, in preparation for the upcoming flexsurv release (#317).
-
multi_predict()is now available for all prediction types forproportional_hazards()models with the"glmnet"engine, so newly also fortype = "time"andtype = "raw"(#277, #282). -
Random forests with the
"aorsf"engine can now predict survival time, i.e.,predict(type = "time")is now available (#308).
- The
survival_prob_*(),survival_time_*(), andhazard_*()helper functions now all take a parsnipmodel_fitobject as the main input, instead of an engine fit as was the case for some of them previously (#302).
-
extract_fit_engine()now works properly for proportional hazards models fitted with the"glmnet"engine (#266). -
multi_predict(type = "survival")forproportional_hazards(engine = "glmnet")models: when used with a singlepenaltyvalue, this value is now included in the results. It was previously omitted (#267, #282). -
proportional_hazards(engine = "glmnet")models now don't pretend to be able to deal with sparse matrices when they are not (#291). -
Fixed a bug for
proportional_hazards(engine = "glmnet")where prediction didn't work for aworkflow()with a formula as the preprocessor (#264).
- The helper functions
survival_time_coxnet()andsurvival_prob_coxnet()gain amultiargument to allow multiple values forpenalty(#278, #279).
-
The new
eval_timeargument replaces thetimeargument for the time points at which to predict survival probability and hazard. Thetimeargument has been deprecated (#244). -
The matrix interface for fitting,
fit_xy(), now works for censored regression models (#225, #234, #247, #251). -
Improved error messages throughout the package (#248).
-
Added the new
"aorsf"engine forrand_forest()for accelerated oblique random survival forests with the aorsf package (@bcjaeger, #211). -
Added the new
flexsurvsplineengine forsurvival_reg()(@mattwarkentin, #213).
-
Predictions of type
"linear_pred"forsurvival_reg(engine = "flexsurv")are now on the correct scale for distributions where the natural scale and the unrestricted scale of the location parameter are identical, e.g.dist = "lnorm"(#229). -
Predictions of type
"linear_pred"forproportional_hazards(engine = "glmnet")viamulti_predict()now have the same sign as those viapredict()(#242). -
Predictions of survival probability for
survival_reg(engine = "flexsurv")for a single time point are now nested correctly (#254). -
Predictions of survival probability for
decision_tree(engine = "rpart")for a single observation now work (#256). -
Predictions of type
"quantile"forsurvival_reg(engine = "survival")for a single observation now work (#257). -
Fixed a bug for printing
coxnetmodels, i.e.,proportional_hazards()models fitted with the"glmnet"engine (#249).
-
Predictions of survival probabilities are now calculated via
summary.survfit()forproportional_hazards()models with the"survival"and"glmnet"engines,bag_tree()models with the"rpart"engine,decision_tree()models with the"partykit"engines, as well asrand_forest()models with the"partykit"engine (#221, #224). -
Added internal
survfit_summary_*()helper functions (#216).
-
For boosted trees with the
"mboost"engine, survival probabilities can now be predicted fortime = -Inf. This is always 1. Fortime = Infthis now predicts a survival probability of 0 (#215). -
Updated tests on model arguments and
update()methods (#208). -
Internal re-organisation of code (#206, 209).
-
Added a
NEWS.mdfile to track changes to the package.