Abstract
Version 1.1.5 Description Versatile method for ungrouping histograms (binned count data) assuming that counts are Poisson distributed and that the underlying sequence on a fine grid to be estimated is smooth. The method is based on the composite link model and estimation is achieved by maximizing a penalized likelihood. Smooth detailed sequences of counts and rates are so estimated from the binned counts. Ungrouping binned data can be desirable for many reasons: Bins can be too coarse to allow for accurate analysis; comparisons can be hindered when different grouping approaches are used in different histograms; and the last interval is often wide and open-ended and, thus, covers a lot of information in the tail area. Age-at-death distributions grouped in age classes and abridged life tables are examples of binned data. Because of modest assumptions, the approach is suitable for many demographic and epidemiological applications. For a detailed description of the method and applications see Rizzi et al. (2015). License MIT + file LICENSE LazyData TRUE Depends R (>= 3.4.0) Imports MortalitySmooth (>= 2.3.4), pbapply (>= 1.3), Rcpp (>= 0.12.0), rgl (>= 0.99.0), Rdpack (>= 0.8) LinkingTo Rcpp, RcppEigen Suggests MortalityLaws (>= 1.5.0), knitr (>= 1.20), rmarkdown (>= 1.10), testthat (>= 2.0.0) RdMacros Rdpack
Cite
CITATION STYLE
D. Pascariu, M., J. Dańko, M., Schöley, J., & Rizzi, S. (2018). ungroup: An R package for efficient estimation of smooth distributions from coarsely binned data. Journal of Open Source Software, 3(29), 937. https://doi.org/10.21105/joss.00937
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