Package: GCEstim 1.1.0

GCEstim: Regression Coefficients Estimation Using the Generalized Cross Entropy

Estimation and inference using the Generalized Maximum Entropy (GME) and Generalized Cross Entropy (GCE) framework, a flexible method for solving ill-posed inverse problems and parameter estimation under uncertainty (Golan, Judge, and Miller (1996, ISBN:978-0471145925) "Maximum Entropy Econometrics: Robust Estimation with Limited Data"). The package includes routines for generalized cross entropy estimation of linear models including the implementation of a GME-GCE two steps approach. Diagnostic tools, and options to incorporate prior information through support and prior distributions are available (Macedo, Cabral, Afreixo, Macedo and Angelelli (2025) <doi:10.1007/978-3-031-97589-9_21>). In particular, support spaces can be defined by the user or be internally computed based on the ridge trace or on the distribution of standardized regression coefficients. Different optimization methods for the objective function can be used. An adaptation of the normalized entropy aggregation (Macedo and Costa (2019) <doi:10.1007/978-3-030-26036-1_2> "Normalized entropy aggregation for inhomogeneous large-scale data") and a two-stage maximum entropy approach for time series regression (Macedo (2022) <doi:10.1080/03610918.2022.2057540>) are also available. Suitable for applications in econometrics, health, signal processing, and other fields requiring robust estimation under data constraints.

Authors:Cabral Jorge [aut, cre], Macedo Pedro [ths], Afreixo Vera [ths]

GCEstim_1.1.0.tar.gz
GCEstim_1.1.0.zip(r-4.7)GCEstim_1.1.0.zip(r-4.6)GCEstim_1.1.0.zip(r-4.5)
GCEstim_1.1.0.tgz(r-4.6-any)GCEstim_1.1.0.tgz(r-4.5-any)
GCEstim_1.1.0.tar.gz(r-4.7-any)GCEstim_1.1.0.tar.gz(r-4.6-any)
GCEstim_1.1.0.tgz(r-4.6-emscripten)
manual.pdf |manual.html
DESCRIPTION |NEWS
card.svg |card.png
GCEstim/json (API)

# Install 'GCEstim' in R:
install.packages('GCEstim', repos = c('https://jorgevazcabral.r-universe.dev', 'https://cloud.r-project.org'))

Bug tracker:https://github.com/jorgevazcabral/gcestim/issues

Datasets:

On CRAN:

Conda:

5.72 score 142 downloads 17 exports 185 dependencies

Last updated from:c30469ecf3. Checks:9 OK. Indexed: yes.

TargetResultTimeFilesSyslog
linux-devel-x86_64OK215
source / vignettesOK327
linux-release-x86_64OK213
macos-release-arm64OK160
macos-oldrel-arm64OK99
windows-develOK156
windows-releaseOK152
windows-oldrelOK162
wasm-releaseOK177

Exports:accmeasurechangestepchangesupportcv.dynlmgcecv.lmgcecv.tsbootgcedynlmgceER.testfngendatalmgcelmgceAddinlmgceAPPneaggingNormEntridgetracescalebackcoeftsbootgce

Dependencies:abindashaskpassbackportsbase64encbayestestRBHbigmemorybigmemory.sribootbriobroombslibcachemcarcarDatacellrangercliclusterGenerationcodetoolscolorspacecommonmarkcorrplotcowplotcpp11crayoncrosstalkcurldata.tabledatawizardDerivdescdigestdistributionaldoBydownlitdplyrDTdynlmevaluatefANCOVAfansifarverfastglmfastmapFNNfontawesomeforecastFormulafracdifffreshfsfuturefuture.applygenericsggdistggplot2ggpubrggrepelggsciggsignifglobalsgluegridExtragtablehdrcdehighrhmshtmltoolshtmlwidgetshttpuvhttrinsightisobandjquerylibjsonlitekernlabKernSmoothknitrkslabelinglaterlatex2explatticelazyevallbfgslbfgsb3clifecyclelistenvlme4lmtestlocfitlubridatemagrittrMASSMatrixMatrixModelsmclustmebootmemoisemgcvmicrobenchmarkmimeminiUIminqamodelrmulticoolmvnfastmvtnormnlmenloptrnnetnumDerivopenssloptimParalleloptimxotelparallellypathviewrpbkrtestpbvpillarpkgconfigplotlypolynompracmaprettyunitsprogresspromisespurrrquadprogquantregR.matlabR.methodsS3R.ooR.utilsR6rappdirsrbibutilsRColorBrewerRcppRcppArmadilloRcppEigenRdpackreadxlreformulasrematchrlangrmarkdownRsolnprstatixrstudioapiS7sassscalesshinyshinydashboardshinydashboardPlusshinyWidgetssimstudysourcetoolsSparseMstringistringrsurvivalsystibbletidyrtidyselecttimechangetimeDatetinytextruncnormurcautf8uuidvctrsviridisviridisLitewaiterwithrxfunxtableyamlzoo

Quick start
Introduction | lmgce() | lmgceAddin() | cv.lmgce() | tsbootgce() | neagging() | lmgce object | tsbootgce object | Acknowledgements

Last update: 2026-06-06
Started: 2025-10-07

Choosing the supports spaces
Introduction | Prior-informed support space construction | Ridge | Standardization | Conclusion | References | Acknowledgements

Last update: 2026-06-06
Started: 2025-10-07

Two-stage ME estimation
Introduction | Two-stage | Conclusion | References | Acknowledgements

Last update: 2026-06-05
Started: 2025-10-07

Further considerations
Normalized Entropy | References | Acknowledgements

Last update: 2026-06-05
Started: 2025-10-07

Optimization methods
Optimization | Examples | References | Acknowledgements

Last update: 2026-06-05
Started: 2025-10-07

Generalized Cross Entropy framework
Introduction | Generalized Cross Entropy estimator | Examples | Conclusion | References | Acknowledgements

Last update: 2026-06-05
Started: 2025-10-07

Generalized Maximum Entropy framework
Introduction | General Linear Model | Generalized Maximum Entropy estimator | Selecting support spaces | Common approach | Examples | Without a priori information | With a priori information | Conclusion | References | Acknowledgements

Last update: 2026-06-05
Started: 2025-10-07

Readme and manuals

Help Manual

Help pageTopics
Accuracy measuresaccmeasure
Case Names of 'lmgce' Fitted Modelscase.names.lmgce
Change the step from 'lmgce' objectchangestep
Change the support from 'lmgce' objectchangesupport
Extract 'cv.lmgce' Coefficientscoef.cv.lmgce
Extract 'cv.tsbootgce' Model Coefficientscoef.cv.tsbootgce
Coefficients used in simulated data set generated with fngendatacoef.dataThesis
Extract 'lmgce' Model Coefficientscoef.lmgce
Extract 'neagging' Coefficientscoef.neagging
Extract 'ridgetrace' Model Coefficientscoef.ridgetrace
Extract 'tsbootgce' Model Coefficientscoef.tsbootgce
Extract 'cv.lmgce' Coefficientscoefficients.cv.lmgce
Extract 'cv.tsbootgce' Model Coefficientscoefficients.cv.tsbootgce
Extract 'lmgce' Model Coefficientscoefficients.lmgce
Extract 'neagging' Coefficientscoefficients.neagging
Extract 'ridgetrace' Model Coefficientscoefficients.ridgetrace
Extract 'tsbootgce' Model Coefficientscoefficients.tsbootgce
Confidence Intervals for 'cv.tsbootgce' Model Parameters and Normalized Entropyconfint.cv.tsbootgce
Confidence Intervals for 'lmgce' Model Parameters and Normalized Entropyconfint.lmgce
Confidence Intervals for 'tsbootgce' Model Parameters and Normalized Entropyconfint.tsbootgce
Cross-validation for 'dynlmgce'cv.dynlmgce
Cross-validation for 'lmgce'cv.lmgce
Time series bootstrap Cross entropy estimationcv.tsbootgce
Simulated data set generated with fngendatadataExample
Simulated data set generated with fngendatadataGCE
Simulated data set generated with fngendatadataGCE.test
Simulated data set generated with fngendatadataincRidGME
Simulated data set generated with fngendatadataincRidGME.test
Simulated data set generated with fngendatadataThesis
Residual Degrees-of-Freedomdf.residual.lmgce
Dynamic Linear Models and Time Series Regression using Cross entropy estimationdynlmgce
Entropy Ratio testER.test
Calculate 'lmgce' Fitted Valuesfitted.lmgce
Calculate 'lmgce' Fitted Valuesfitted.values.lmgce
Data generating functionfngendata
Extract Model Formula from 'lmgce' objectformula.lmgce
Generalized Cross entropy estimationlmgce
An add-in to easily generate the code for a 'lmgce' or 'cv.lmgce' analysislmgceAddin
'lmgce' Shiny applicationlmgceAPP
Extract design matrix from 'lmgce' objectmodel.matrix.lmgce
Worldbank time series data for Mozambiquemoz_ts
Normalized Entropy Aggregation for Inhomogeneous Large-Scale Data - Neaggingneagging
Extract the Number of Observations from a 'lmgce' model fitnobs.lmgce
Normalized EntropyNormEnt
Plot Diagnostics for a 'cv.lmgce' Objectplot.cv.lmgce
Plot Diagnostics for a 'cv.tsbootgce' objectplot.cv.tsbootgce
Plot Diagnostics for a 'lmgce' Objectplot.lmgce
Plot Diagnostics for a 'neagging' Objectplot.neagging
Plot Diagnostics for a 'ridgetrace' Objectplot.ridgetrace
Plot Diagnostics for a 'tsbootgce' objectplot.tsbootgce
Predict method for 'lmgce' Linear Model Fitspredict.lmgce
Print 'cv.lmgce' objectprint.cv.lmgce
Print 'cv.tsbootgce' objectprint.cv.tsbootgce
Print a 'lmgce' objectprint.lmgce
Print a 'ridgetrace' objectprint.ridgetrace
Print Summary of 'lmgce' Model Fitsprint.summary.lmgce
Print 'tsbootgce' objectprint.tsbootgce
Example `lmgce` objectres_gce_package
Extract 'lmgce' Model Residualsresid.lmgce
Extract 'lmgce' Model Residualsresiduals.lmgce
Function to obtain the ridge trace and choose the support limits given a formularidgetrace
Scale coefficients backscalebackcoef
Summarise a linear regression model via generalized cross entropy fitsummary.lmgce
Time series bootstrap Cross entropy estimationtsbootgce
Variable Names of 'lmgce' Fitted Modelsvariable.names.lmgce
Extract 'lmgce' Model's Variance-Covariance Matrixvcov.lmgce