package svmwrap
Install
Dune Dependency
Authors
Maintainers
Sources
sha256=e245917b3dd5ce71d59b2769bfabc4dfd8dc0ca5c0c3a7d91cb71b3c38cdbc04
md5=3faf2d055599dba3375b3bcab57d060c
Description
Svmwrap can be used to train/test regressors using libsvm-tools.
(Scary) usage: usage: svmwrap -i : training set or DB to screen --feats : number of features [-o ]: predictions output file [-np ]: ncores [--kernel ] choose kernel type {Lin|RBF|Sig|Pol} [-c ]: fix C [-e ]: epsilon in the loss function of epsilon-SVR; (0 <= epsilon <= max_i(|y_i|)) [--nlopt ]: use NLopt with MAX_ITER (global optim.) instead of grid-search (recommended: MAX_ITER >= 100) [-g ]: fix gamma (for RBF and Sig kernels) [-r ]: fix r for the Sig kernel [--iwn]: turn ON instance-wise-normalization [--scale]: turn ON [0:1] scaling (NOT PRODUCTION READY) [--no-plot]: no gnuplot [{-n|--NxCV} ]: folds of cross validation [-q]: quiet [-v|--verbose]: equivalent to not specifying -q [--seed ]: fix random seed [-p ]: training set portion (in [0.0:1.0]) [--pairs]: read from .AP files (atom pairs; will offset feat. indexes by 1) [--train <train.liblin>]: training set (overrides -p) [--valid <valid.liblin>]: validation set (overrides -p) [--test <test.liblin>]: test set (overrides -p) [{-l|--load} ]: prod. mode; use trained models [{-s|--save} ]: train. mode; save trained models [-f]: force overwriting existing model file [--scan-c]: scan for best C [--scan-e ]: epsilon scan #steps for SVR [--scan-g]: scan for best gamma [--regr]: regression (SVR); also, implied by -e and --scan-e [--e-range ::]: specific range for e (semantic=start:nsteps:stop) [--c-range <float,float,...>] explicit scan range for C (example='0.01,0.02,0.03') [--g-range <float,float,...>] explicit range for gamma (example='0.01,0.02,0.03') [--scan-k]: scan number of bags [--k-range <int,int,...>] explicit scan range for k (example='1,2,3,5,10') [-k ]: explicit value for k [--r-range <float,float,...>] explicit range for r (example='0.01,0.02,0.03')
Published: 12 Oct 2022
README
svmwrap
Wrapper on top of libsvm-tools
Bibliography
[1] Chang, C. C., & Lin, C. J. (2011). LIBSVM: a library for support vector machines. ACM transactions on intelligent systems and technology (TIST), 2(3), 1-27.
[2] Hsu, C. W., Chang, C. C., & Lin, C. J. (2003). A practical guide to support vector classification.
Dependencies (12)
- dokeysto_camltc
- nlopt
-
line_oriented
>= "1.2.0"
-
parany
>= "11.0.0"
-
molenc
>= "16.0.0"
-
minicli
>= "5.0.0"
-
dune
>= "2.9"
-
dolog
>= "6.0.0"
-
cpm
>= "11.0.0"
- conf-libsvm-tools
- batteries
- base-unix
Dev Dependencies
None
Used by
None
Conflicts
None