About Anaconda Help Download Anaconda

Functions for creating ensembles of optimal trees for regression, classification (Khan, Z., Gul, A., Perperoglou, A., Miftahuddin, M., Mahmoud, O., Adler, W., & Lausen, B. (2019). (2019) <doi:10.1007/s11634-019-00364-9>) and class membership probability estimation (Khan, Z, Gul, A, Mahmoud, O, Miftahuddin, M, Perperoglou, A, Adler, W & Lausen, B (2016) <doi:10.1007/978-3-319-25226-1_34>) are given. A few trees are selected from an initial set of trees grown by random forest for the ensemble on the basis of their individual and collective performance. Three different methods of tree selection for the case of classification are given. The prediction functions return estimates of the test responses and their class membership probabilities. Unexplained variations, error rates, confusion matrix, Brier scores, etc. are also returned for the test data.

Click on a badge to see how to embed it in your web page
badge
https://anaconda.org/r/r-ote/badges/version.svg
badge
https://anaconda.org/r/r-ote/badges/latest_release_date.svg
badge
https://anaconda.org/r/r-ote/badges/latest_release_relative_date.svg
badge
https://anaconda.org/r/r-ote/badges/platforms.svg
badge
https://anaconda.org/r/r-ote/badges/license.svg
badge
https://anaconda.org/r/r-ote/badges/downloads.svg

© 2024 Anaconda, Inc. All Rights Reserved. (v4.0.5) Legal | Privacy Policy