The covariate-adjusted frequency plot

Count data arise in numerous fields of interest. Analysis of these data frequently require distributional assumptions. Although the graphical display of a fitted model is straightforward in the univariate scenario, this becomes more complex if covariate information needs to be included into the mode...

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Veröffentlicht in:Statistical methods in medical research 2016-04, Vol.25 (2), p.902-916
Hauptverfasser: Holling, Heinz, Böhning, Walailuck, Böhning, Dankmar, Formann, Anton K
Format: Artikel
Sprache:eng
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Zusammenfassung:Count data arise in numerous fields of interest. Analysis of these data frequently require distributional assumptions. Although the graphical display of a fitted model is straightforward in the univariate scenario, this becomes more complex if covariate information needs to be included into the model. Stratification is one way to proceed, but has its limitations if the covariate has many levels or the number of covariates is large. The article suggests a marginal method which works even in the case that all possible covariate combinations are different (i.e. no covariate combination occurs more than once). For each covariate combination the fitted model value is computed and then summed over the entire data set. The technique is quite general and works with all count distributional models as well as with all forms of covariate modelling. The article provides illustrations of the method for various situations and also shows that the proposed estimator as well as the empirical count frequency are consistent with respect to the same parameter.
ISSN:0962-2802
1477-0334
DOI:10.1177/0962280212473386