Last data update: 2014.03.03

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Results 1 - 10 of 15 found.
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lpredprob.GP (Package: plgp) :

Log-predictive probability calculation for Gaussian process (GP) regression, classification, or combined unknown constraint models; primarily to be used particle learning (PL) re-sample step
● Data Source: CranContrib
● Keywords: methods, models, regression
● Alias: lpredprob.CGP, lpredprob.ConstGP, lpredprob.GP
● 0 images

plgp-package (Package: plgp) : Particle Learning of Gaussian Processes

Sequential Monte Carlo inference for fully Bayesian Gaussian process (GP) regression and classification models by particle learning (PL). The sequential nature of inference and the active learning (AL) hooks provided facilitate thrifty sequential design (by entropy) and optimization (by improvement) for classification and regression models, respectively. This package essentially provides a generic PL interface, and functions (arguments to the interface) which implement the GP models and AL heuristics. Functions for a special, linked, regression/classification GP model and an integrated expected conditional improvement (IECI) statistic is provides for optimization in the presence of unknown constraints. Separable and isotropic Gaussian, and single-index correlation functions are supported. See the examples section of ?plgp and demo(package="plgp") for an index of demos
● Data Source: CranContrib
● Keywords: package
● Alias: plgp-package
● 0 images

pred.GP (Package: plgp) :

Prediction on a per-particle basis for Gaussian process (GP) regression, classification, or combined unknown constraint models
● Data Source: CranContrib
● Keywords: classif, methods, models, regression
● Alias: pred.CGP, pred.ConstGP, pred.GP
● 0 images

init.GP (Package: plgp) :

Functions for initializing particles for Gaussian process (GP) regression, classification, or combined unknown constraint models
● Data Source: CranContrib
● Keywords: classif, methods, models, regression
● Alias: init.CGP, init.ConstGP, init.GP
● 0 images

exp2d.C (Package: plgp) :

Generates 2-d classification data with two or three class labels, based on the Hessian data from a 2-d real-valued response
● Data Source: CranContrib
● Keywords: datagen
● Alias: exp2d.C
● 0 images

params.GP (Package: plgp) :

Extract parameters from particles for Gaussian process (GP) regression, classification, or combined unknown constraint models
● Data Source: CranContrib
● Keywords: classif, methods, models, regression
● Alias: params.CGP, params.ConstGP, params.GP
● 0 images

propagate.GP (Package: plgp) :

Incorporation of a new data point for Gaussian process (GP) regression, classification, or combined unknown constraint models; primarily to be used particle learning (PL) propagate step
● Data Source: CranContrib
● Keywords: classif, methods, models, regression
● Alias: propagate.CGP, propagate.ConstGP, propagate.GP
● 0 images

rectscale (Package: plgp) :

Scale data lying in an arbitrary rectangle to lie in the unit rectangle, and back again
● Data Source: CranContrib
● Keywords: utilities
● Alias: rectscale, rectunscale
● 0 images

PL (Package: plgp) :

Implements the Particle Learning sequential Monte Carlo algorithm on the data sequence provided, using re-sample and propagate steps
● Data Source: CranContrib
● Keywords: iterations, methods
● Alias: PL, PL.env, plgp
● 0 images

prior.GP (Package: plgp) :

Generate priors for Gaussian process (GP) regression, classification, or combined unknown constraint models
● Data Source: CranContrib
● Keywords: classif, methods, models, regression
● Alias: prior.CGP, prior.ConstGP, prior.GP
● 0 images