Support vector machines (SVMs) and related kernel-based learning algorithms are a well-known class of machine learning algorithms, for non-parametric classification and regression. liquidSVM is an implementation of SVMs whose key features are: fully integrated hyper-parameter selection, extreme speed on both small and large data sets, full flexibility for experts, and inclusion of a variety of different learning scenarios: multi-class classification, ROC, and Neyman-Pearson learning, and least-squares, quantile, and expectile regression.
- apache-spark
- octave
- ml
- r-package
- svm
- expectile-regression
- matlab
- quantile-regression
- machine-learning
- python
- classification
- rstats
- r
- regression
- c-plus-plus
Scala versions:
2.11
Latest version
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JVM badge
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