Package: plsRglm 1.7.1

plsRglm: Partial Least Squares Regression for Generalized Linear Models
Provides (weighted) Partial least squares Regression for generalized linear models and repeated k-fold cross-validation of such models using various criteria <doi:10.48550/arXiv.1810.01005>. It allows for missing data in the explanatory variables. Bootstrap confidence intervals constructions are also available.
Authors:
plsRglm_1.7.1.tar.gz
plsRglm_1.7.1.tar.gz(r-4.7-arm64)plsRglm_1.7.1.tar.gz(r-4.7-x86_64)plsRglm_1.7.1.tar.gz(r-4.6-arm64)plsRglm_1.7.1.tar.gz(r-4.6-x86_64)
plsRglm_1.7.1.tgz(r-4.6-emscripten)
manual.pdf |manual.html✨
card.svg |card.png
plsRglm/json (API)
NEWS
| # Install 'plsRglm' in R: |
| install.packages('plsRglm', repos = c('https://cran.r-universe.dev', 'https://cloud.r-project.org')) |
Bug tracker:https://github.com/fbertran/plsrglm/issues
Pkgdown/docs site:https://fbertran.github.io
- aze - Microsatellites Dataset
- aze_compl - As aze without missing values
- bordeaux - Quality of wine dataset
- bordeauxNA - Quality of wine dataset
- CorMat - Correlation matrix for simulating plsR datasets
- Cornell - Cornell dataset
- fowlkes - Fowlkes dataset
- pine - Pine dataset
- pine_full - Complete Pine dataset
- pine_sup - Complete Pine dataset
- pineNAX21 - Incomplete dataset from the pine caterpillars example
- XbordeauxNA - Incomplete dataset for the quality of wine dataset
- XpineNAX21 - Incomplete dataset from the pine caterpillars example
Last updated from:36e4e7bd42. Checks:6 OK. Indexed: no.
| Target | Result | Time | Files | Syslog |
|---|---|---|---|---|
| linux-devel-arm64 | OK | 240 | ||
| linux-devel-x86_64 | OK | 274 | ||
| source / vignettes | OK | 301 | ||
| linux-release-arm64 | OK | 245 | ||
| linux-release-x86_64 | OK | 271 | ||
| wasm-release | OK | 201 |
Exports:aic.dofAICplsbic.dofbootplsbootplsglmboxplots.bootplsclassbiplotcoef.plsRglmmodelcoef.plsRmodelcoefs.plsRcoefs.plsR.rawcoefs.plsRglmcoefs.plsRglm.rawcoefs.plsRglmnpcoefs.plsRnpconfints.bootplsconfints2signifindcv.plsRcv.plsRglmcv.plsRglmmodel.defaultcv.plsRglmmodel.formulacv.plsRmodel.defaultcv.plsRmodel.formulacv.plsRmulticv.plsRmultiModelcv.plsRmultiModel.defaultcv.plsRmultiModel.formulacvtablecvtable.plsRcvtable.plsRglmdichogmdl.dofinfcrit.dofkfolds2Chisqkfolds2Chisqindkfolds2coeffkfolds2CVinfos_glmkfolds2CVinfos_lmkfolds2Mclassedkfolds2Mclassedindkfolds2Presskfolds2Pressindloglikplspermcoefs.plsRpermcoefs.plsR.rawpermcoefs.plsRglmpermcoefs.plsRglm.rawpermcoefs.plsRglmnppermcoefs.plsRnpplot.table.summary.cv.plsRglmmodelplot.table.summary.cv.plsRmodelplots.confints.bootplsPLS_glmPLS_glm_formulaPLS_glm_kfoldcvPLS_glm_kfoldcv_formulaPLS_glm_wvcPLS_lmPLS_lm_formulaPLS_lm_kfoldcvPLS_lm_kfoldcv_formulaPLS_lm_wvcplsRplsR.dofplsRglmplsRglmmodel.defaultplsRglmmodel.formulaplsRmodel.defaultplsRmodel.formulaplsRmultiplsRmultiModelplsRmultiModel.defaultplsRmultiModel.formulapredict.plsRglmmodelpredict.plsRmodelpredict.plsRmultiModelprint.cv.plsRglmmodelprint.cv.plsRmodelprint.plsRglmmodelprint.plsRmodelprint.summary.plsRglmmodelprint.summary.plsRmodelsignpredsimul_data_completesimul_data_UniYXsimul_data_UniYX_binomsimul_data_YXsummary.cv.plsRglmmodelsummary.cv.plsRmodelsummary.cv.plsRmultiModelsummary.plsRglmmodelsummary.plsRmodeltilt.bootplstilt.bootplsglmweighted_significance
Dependencies:abindbackportsbipartitebootbroomcarcarDatacliclustercodacolorspacecorpcorcowplotcpp11DerivdoBydotCall64dplyrfarverfieldsforecastFormulafracdiffgenericsggplot2gluegtableigraphisobandlabelinglatticelifecyclelme4lmtestmagrittrmapsMASSMatrixMatrixModelsmgcvmicrobenchmarkminqamodelrmvtnormnetworknlmenloptrnnetnumDerivpbkrtestpermutepillarpkgconfigpurrrquantregR6rbibutilsRColorBrewerRcppRcppArmadilloRcppEigenRdpackreformulasrlangS7scalessnaspamSparseMstatnet.commonstringistringrsurvivaltibbletidyrtidyselecttimeDateurcautf8vctrsveganviridisLitewithrzoo
