Package: eiIT 0.0.1-1

Jose M. Pavía

eiIT: Ecological Inference via Information Theory

Estimates RxC transfer matrices from aggregated marginal data using a two-stage (GME+IPF) information-theoretic approach within a two-step (global+local) estimation procedure. The resulting matrices are consistent with observed row and column marginals across collections of subtables (e.g. precincts, polling stations, or districts). References: Golan, A., Judge, G., & Miller, D. (1996). Maximum Entropy Econometrics: Robust Estimation with Limited Data. Wiley. Judge, G., Miller, D.J., & Cho, W.K.T. (2004). An information theoretic approach to ecological estimation and inference. In G. King, O. Rosen, & M. A. Tanner (Eds.), Ecological Inference: New Methodological Strategies (pp. 162–187). Cambridge University Press. Mittelhammer, R., Judge, G., & Miller, D. (2000). Econometric Foundations. Cambridge University Press. Pavia, J.M. (2023) <doi:10.1007/s43545-023-00658-y> Acknowledgements: The author wish to thank Conselleria de Economia, Hacienda y Administracion Publica (grant CIACIO/2023/031) for supporting this research.

Authors:Jose M. Pavía [aut, cre]

eiIT_0.0.1-1.tar.gz
eiIT_0.0.1-1.tar.gz(r-4.7-any)eiIT_0.0.1-1.tar.gz(r-4.6-any)
eiIT_0.0.1-1.tgz(r-4.6-emscripten)
manual.pdf |manual.html
card.svg |card.png
eiIT/json (API)

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

On CRAN:

Conda:

This package does not link to any Github/Gitlab/R-forge repository. No issue tracker or development information is available.

1.00 score 1 exports 1 dependencies

Last updated from:8b33bb740c. Checks:4 OK. Indexed: yes.

TargetResultTimeFilesSyslog
linux-devel-x86_64OK110
source / vignettesOK216
linux-release-x86_64OK113
wasm-releaseOK101

Exports:ei_it

Dependencies:nloptr