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2 projects in result set.
Survival analysis with BART  Bayesian additive regression trees (BART) have been shown to provide flexible nonparametric modeling of covariates to binary and continuous outcomes. This R package extends BART to timetoevent outcomes with right censoring.  
Tags: nonproportional hazards, Bayesian nonparametric, parallel computing, survival  

Activity Percentile: 0 Activity Ranking: 0 Registered: 20160106 21:54 
timebart: survival analysis with BART  Bayesian additive regression trees (BART) have been shown to provide flexible nonparametric modeling of covariates to binary and continuous outcomes. This R package extends BART to timetoevent outcomes with right censoring.  
Tags: Bayesian nonparametric, nonproportional hazards, parallel computing, survival  

Activity Percentile: 0 Activity Ranking: 0 Registered: 20160714 21:42 