Ignoramus, Ignorabimus? On Uncertainty in Ecological Inference

Author:

Elff Martin,Gschwend Thomas,Johnston Ron J.

Abstract

Models of ecological inference (EI) have to rely on crucial assumptions about the individual-level data-generating process, which cannot be tested because of the unavailability of these data. However, these assumptions may be violated by the unknown data and this may lead to serious bias of estimates and predictions. The amount of bias, however, cannot be assessed without information that is unavailable in typical applications of EI. We therefore construct a model that at least approximately accounts for the additional, nonsampling error that may result from possible bias incurred by an EI procedure, a model that builds on the Principle of Maximum Entropy. By means of a systematic simulation experiment, we examine the performance of prediction intervals based on this second-stage Maximum Entropy model. The results of this simulation study suggest that these prediction intervals are at least approximately correct if all possible configurations of the unknown data are taken into account. Finally, we apply our method to a real-world example, where we actually know the true values and are able to assess the performance of our method: the prediction of district-level percentages of split-ticket voting in the 1996 General Election of New Zealand. It turns out that in 95.5% of the New Zealand voting districts, the actual percentage of split-ticket votes lies inside the 95% prediction intervals constructed by our method.

Publisher

Cambridge University Press (CUP)

Subject

Political Science and International Relations,Sociology and Political Science

Reference56 articles.

1. See Appendix (Section C) on the Political Analysis Web site.

2. For details see Appendix (Section A.4) on the Political Analysis Web site.

3. As Kullback (1959) and Good (1963) have pointed out, the Principle of Maximum Entropy is just a special case of the Principle of Minimum Discriminating Information: Choosing the distribution with maximal entropy is equivalent to minimizing the directed Kullback-Leibler information divergence relative to a Uniform distribution. For details see Appendix (Section A) on the Political Analysis Web site.

4. More on the application of information theoretic concepts to contingency table analysis and to statistics in general can be found in Kullback (1959). The argumentation of Johnston and Pattie (2000), however, follows a nonprobabilistic interpretation of entropy mentioned by Jaynes (1968).

5. A probability distribution derived from the binomial distribution by regarding the probability as variable between the sets of trials;Skellam;Journal of the Royal Statistical Society. Series B (Methodological),1948

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