Binomial-Beta Hierarchical Models for Ecological Inference
Gary King, Ori Rosen, Martin Tanner. 1999.
"Binomial-Beta Hierarchical Models for Ecological Inference".
Sociological Methods and Research, 28, Pp. 61–90.

Abstract
The authors develop binomial-beta hierarchical models for ecological inference using insights from the literature on hierarchical models based on Markov chain Monte Carlo algorithms and King’s ecological inference model. The new approach reveals some features of the data that King’s approach does not, can easily be generalized to more complicated problems such as general R x C tables, allows the data analyst to adjust for covariates, and provides a formal evaluation of the significance of the covariates. It may also be better suited to cases in which the observed aggregate cells are estimated from very few observations or have some forms of measurement error. This article also provides an example of a hierarchical model in which the statistical idea of “borrowing strength” is used not merely to increase the efficiency of the estimates but to enable the data analyst to obtain estimates.
See Also
- [Book] A Solution to the Ecological Inference Problem: Reconstructing Individual Behavior from Aggregate Data (1997)
- [Paper] Aggregation Among Binary, Count, and Duration Models: Estimating the Same Quantities from Different Levels of Data (2001)
- [Paper] Bayesian and Frequentist Inference for Ecological Inference: The RxC Case (2001)
- [Paper] Did Illegal Overseas Absentee Ballots Decide the 2000 U.S. Presidential Election? (2004)
- [Book] Ecological Inference (2006)
- [Book] Ecological Inference: New Methodological Strategies (2004)
- [Paper] Ecological Regression With Partial Identification (2019)
- [Book] Information in Ecological Inference: An Introduction (2004)