r-cran-riskregression 2023.03.22+ds-1 source package in Ubuntu

Changelog

r-cran-riskregression (2023.03.22+ds-1) unstable; urgency=medium

  * New upstream version
  * Standards-Version: 4.6.2 (routine-update)
  * dh-update-R to update Build-Depends (routine-update)

 -- Andreas Tille <email address hidden>  Mon, 26 Jun 2023 19:56:49 +0200

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Uploaded by:
Debian R Packages Maintainers
Uploaded to:
Sid
Original maintainer:
Debian R Packages Maintainers
Architectures:
any
Section:
misc
Urgency:
Medium Urgency

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Series Pocket Published Component Section
Mantic release universe misc

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r-cran-riskregression_2023.03.22+ds-1.dsc 2.5 KiB 498722935d1e1b3ca801e14cc7e89d0df4241f0bbd44b1bc6d1f1dcc1811b183
r-cran-riskregression_2023.03.22+ds.orig.tar.xz 276.9 KiB b8c08ff73bd146cb11e7c80d63fffb0f088040954334a99d92b423ec9872a870
r-cran-riskregression_2023.03.22+ds-1.debian.tar.xz 3.5 KiB 93dd22f124ba8cf8dcd1f91f68cf6af6ef545be067eac7063b12f47de2814ca2

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Binary packages built by this source

r-cran-riskregression: GNU R Risk Regression Models and Prediction Scores for Survival

 Analysis with Competing Risks Implementation of the following methods
 for event history analysis. Risk regression models for survival
 endpoints also in the presence of competing risks are fitted using
 binomial regression based on a time sequence of binary event status
 variables. A formula interface for the Fine-Gray regression model and an
 interface for the combination of cause-specific Cox regression models. A
 toolbox for assessing and comparing performance of risk predictions
 (risk markers and risk prediction models). Prediction performance is
 measured by the Brier score and the area under the ROC curve for binary
 possibly time-dependent outcome. Inverse probability of censoring
 weighting and pseudo values are used to deal with right censored data.
 Lists of risk markers and lists of risk models are assessed
 simultaneously. Cross-validation repeatedly splits the data, trains the
 risk prediction models on one part of each split and then summarizes and
 compares the performance across splits.

r-cran-riskregression-dbgsym: debug symbols for r-cran-riskregression