Classias is a collection of machine-learning algorithms for classification. Currently, it supports the following formalizations: L1/L2-regularized logistic regression (aka. Maximum Entropy) L1/L2-regularized L1-loss linear-kernel Support Vector Machine (SVM) Averaged perceptron It implements several algorithms for training classifiers: Averaged perceptron Limited-memory Broyden-Fletcher-Goldfarb-Shanno (L-BFGS) [Nocedal80] Orthant-Wise Limited-memory Quasi-Newton (OWL-QN) [Andrew07] Primal Estimated sub-GrAdient SOlver (Pegasos) [Shalev-Shwartz07] Truncated Gradient [Langford09], also known as FOrward LOoking Subgradient (FOLOS) [Duchi09] specialized for L1 regularization
Binary packages can be installed with the high-level tool pkgin (which can be installed with pkg_add) or pkg_add(1) (installed by default). The NetBSD packages collection is also designed to permit easy installation from source.
The pkg_admin audit command locates any installed package which has been mentioned in security advisories as having vulnerabilities.
Please note the vulnerabilities database might not be fully accurate, and not every bug is exploitable with every configuration.
Problem reports, updates or suggestions for this package should be reported with send-pr.