软件包机器学习科研包与框架

scikit-survival

Comprehensive toolkit for survival analysis and time-to-event modeling in Python using scikit-survival. Use this skill when working with censored survival data, performing time-to-event analysis, fitting Cox models, Random Survival Forests, Gradient Boosting models, or Survival SVMs, evaluating survival predictions with concordance index or Brier score, handling competing risks, or implementing any survival analysis workflow with the scikit-survival library.

这页展示的是上游仓库条目,不代表已进入 SCI Skills 精选目录。

原始路径
scientific-skills/scikit-survival
允许工具
-
仓库版本
2.31.0
同步时间
2026年3月27日

条目说明

条目说明

scikit-survival is a Python library for survival analysis built on top of scikit-learn. It provides specialized tools for time-to-event analysis, handling the unique challenge of censored data where some observations are only partially known.

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