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0. Installation & Setup

Welcome to SuperSurv!

SuperSurv is designed to be a unified ecosystem for machine learning and survival analysis. The framework integrates modern ensemble learning techniques for right-censored data and is motivated by recent advances in machine learning-based survival curve estimation (Westling et al., 2024) and unified ensemble modeling for survival analysis (Lyu et al., 2026).

However, installing 19 different machine learning engines at once can take a long time and cause dependency conflicts on some operating systems.

To make your experience as smooth as possible, SuperSurv uses a Modular Dependency Philosophy.

The core package is incredibly lightweight and installs in seconds. Heavy machine learning libraries (like XGBoost or Elastic Net) are only required when you explicitly ask to use them!


Step 1: Install the Core Package

You can install the development version of SuperSurv directly from GitHub using the devtools or remotes package:

# Install devtools if you don't have it
if (!requireNamespace("devtools", quietly = TRUE)) {
  install.packages("devtools")
}

# Install SuperSurv from GitHub
devtools::install_github("yuelyu21/SuperSurv")

Once installed, you can load the package and view all the available modeling and screening wrappers:

library(SuperSurv)

# See all 19 prediction models and 6 screening algorithms!
list_wrappers()

Step 3: You’re Ready!

Your environment is now completely set up. You are ready to build your first optimal survival ensemble!

👉 Click here to proceed to Tutorial 1: The SuperSurv Ensemble

References

Westling, T., Luedtke, A., Gilbert, P. B., & Carone, M. (2024).
Inference for treatment-specific survival curves using machine learning.
Journal of the American Statistical Association.
doi:10.1080/01621459.2023.2205060

Lyu, Y., Huang, X., Lin, S. H., & Li, Z. (2026).
SuperSurv: A Unified Framework for Machine Learning Ensembles in Survival Analysis.
bioRxiv.
doi:10.64898/2026.03.11.711010

These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.
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