Showing 5 of total 5 results (show query)
enriquegit
ssr:Semi-Supervised Regression Methods
An implementation of semi-supervised regression methods including self-learning and co-training by committee based on Hady, M. F. A., Schwenker, F., & Palm, G. (2009) <doi:10.1007/978-3-642-04274-4_13>. Users can define which set of regressors to use as base models from the 'caret' package, other packages, or custom functions.
Maintained by Enrique Garcia-Ceja. Last updated 6 years ago.
data-sciencemachine-learningregressionsemi-supervised-learning
2 stars 4.46 score 29 scriptsmoseleybioinformaticslab
ScanCentricPeakCharacterization:Functionality for Characterizing Peaks in Mass Spectrometry in a Scan-Centric Manner
Provides a functions and classes for detecting, characterizing, and integrating peaks in a scan-centric manner from direct-injection mass spectrometry data.
Maintained by Robert M Flight. Last updated 1 years ago.
3.00 score 1 scriptscran
sisireg:Sign-Simplicity-Regression-Solver
Implementation of the SSR-Algorithm. The Sign-Simplicity-Regression model is a nonparametric statistical model which is based on residual signs and simplicity assumptions on the regression function. Goal is to calculate the most parsimonious regression function satisfying the statistical adequacy requirements. Theory and functions are specified in Metzner (2020, ISBN: 979-8-68239-420-3, "Trendbasierte Prognostik") and Metzner (2021, ISBN: 979-8-59347-027-0, "Adäquates Maschinelles Lernen").
Maintained by Lars Metzner. Last updated 4 months ago.
1.00 scorecran
assist:A Suite of R Functions Implementing Spline Smoothing Techniques
Fit various smoothing spline models. Includes an ssr() function for smoothing spline regression, an nnr() function for nonparametric nonlinear regression, an snr() function for semiparametric nonlinear regression, an slm() function for semiparametric linear mixed-effects models, and an snm() function for semiparametric nonlinear mixed-effects models. See Wang (2011) <doi:10.1201/b10954> for an overview.
Maintained by Yuedong Wang. Last updated 2 years ago.
1.00 score