speedglm: Fitting Linear and Generalized Linear Models to Large Data Sets
Fitting linear models and generalized linear models to large data sets by updating algorithms.
Version: |
0.3-4 |
Depends: |
Matrix, MASS |
Imports: |
methods, stats |
Published: |
2022-02-24 |
Author: |
Marco Enea [aut, cre],
Ronen Meiri [ctb] (on behalf of DMWay Analytics LTD),
Tomer Kalimi [ctb] (on behalf of DMWay Analytics LTD) |
Maintainer: |
Marco Enea <marco.enea at unipa.it> |
License: |
GPL-2 | GPL-3 [expanded from: GPL] |
NeedsCompilation: |
no |
Materials: |
NEWS |
In views: |
HighPerformanceComputing |
CRAN checks: |
speedglm results |
Documentation:
Downloads:
Reverse dependencies:
Reverse depends: |
GWASinlps, Rediscover |
Reverse imports: |
adapt4pv, allestimates, alpine, bigstep, btergm, chest, CytoGLMM, DMCFB, EventPointer, exomePeak2, GEint, hit, LogisticDx, ltmle, nullranges, PrInCE, smurf, survtmle, tensorregress |
Reverse suggests: |
broom, disk.frame, dynamichazard, insight, marginaleffects, mediation, parglm, scoringTools, SuperLearner, superMICE |
Reverse enhances: |
fastlogitME, prediction, texreg |
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