package linwrap

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Wrapper on top of liblinear-tools

Install

Dune Dependency

Authors

Maintainers

Sources

v9.1.5.tar.gz
sha256=eb0cbbbcedab1ef9be06bacf75545053c01c8dab4104c810296e8060c6c12279
md5=f59e8b0452a5bb33f0fe239e524b5b40

Description

Linwrap can be used to train a L2-regularized logistic regression classifier or a linear Support Vector Regressor. You can optimize C (the L2 regularization parameter), w (the class weight) or k (the number of bags, i.e. use bagging). You can also find the optimal classification threshold using MCC maximization, use k-folds cross validation, parallelization, etc. In the regression case, you can only optimize C and epsilon.

When using bagging, each model is trained on balanced bootstraps from the training set (one bootstrap for the positive class, one for the negative class). The size of the bootstrap is the size of the smallest (under-represented) class.

usage: linwrap -i : training set or DB to screen [-o ]: predictions output file [-np ]: ncores [-c ]: fix C [-e ]: fix epsilon (for SVR); (0 <= epsilon <= max_i(|y_i|)) [-w ]: fix w1 [--no-plot]: no gnuplot [-k ]: number of bags for bagging (default=off) [{-n|--NxCV} ]: folds of cross validation [--mcc-scan]: MCC scan for a trained model (requires n>1) also requires (c, w, k) to be known [--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 [--regr]: regression (SVR); also, implied by -e and --scan-e [--scan-w]: scan weight to counter class imbalance [--w-range ::]: specific range for w (semantic=start:nsteps:stop) [--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') [--k-range <int,int,...>] explicit scan range for k (example='1,2,3,5,10') [--scan-k]: scan number of bags (advice: optim. k rather than w)

Published: 13 Jan 2023

README

linwrap

Wrapper on top of liblinear-tools.

Linwrap can be used to train a L2-regularized logistic regression classifier or a linear Support Vector Regressor. You can optimize C (the L2 regularization parameter), w (the class weight) or k (the number of bags, i.e. use bagging). You can also find the optimal classification threshold using MCC maximization, use k-folds cross validation, parallelization, etc. In the regression case, you can only optimize C and epsilon.

Bibliography

[1] Fan, R. E., Chang, K. W., Hsieh, C. J., Wang, X. R., & Lin, C. J. (2008). LIBLINEAR: A library for large linear classification. Journal of machine learning research, 9(Aug), 1871-1874.

[2] Hsu, C. W., Chang, C. C., & Lin, C. J. (2003). A practical guide to support vector classification.

[3] Hsia, J. Y., & Lin, C. J. (2020). Parameter selection for linear support vector regression. IEEE Transactions on Neural Networks and Learning Systems.

[4] Breiman, L. (1996). Bagging predictors. Machine learning, 24(2), 123-140.

Dependencies (12)

  1. parany >= "11.0.0"
  2. molenc
  3. minicli >= "5.0.0"
  4. dune >= "1.10"
  5. dolog >= "6.0.0"
  6. ocaml >= "5.0.0"
  7. dokeysto
  8. cpm >= "11.0.0"
  9. conf-liblinear-tools
  10. bst
  11. batteries >= "3.3.0"
  12. base-unix

Dev Dependencies

None

Used by

None

Conflicts

None

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