Bayesian Multilevel Estimation with Poststratification: State-Level Estimates from National Polls

Author:

Park David K.,Gelman Andrew,Bafumi Joseph

Abstract

We fit a multilevel logistic regression model for the mean of a binary response variable conditional on poststratification cells. This approach combines the modeling approach often used in small-area estimation with the population information used in poststratification (see Gelman and Little 1997,Survey Methodology23:127–135). To validate the method, we apply it to U.S. preelection polls for 1988 and 1992, poststratified by state, region, and the usual demographic variables. We evaluate the model by comparing it to state-level election outcomes. The multilevel model outperforms more commonly used models in political science. We envision the most important usage of this method to be not forecasting elections but estimating public opinion on a variety of issues at the state level.

Publisher

Cambridge University Press (CUP)

Subject

Political Science and International Relations,Sociology and Political Science

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4. These are the interactions used by polling organizations for survey weighting (see Voss et al. 1995). The goal of our demographic adjustments is not to estimate demographic parameters but to adjust for demographics during poststratification.

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