Improving predictive accuracy of exit polls
Pavia, J.M.
Pages 68-81
AbstractExit polls are best known for their use in election forecasting. In
recent years, however, some prominent mistaken predictions have been made,
undermining public confidence in the accuracy of both exit polls and survey
methods. Nonresponse bias has been claimed as being one of the main reasons
for inaccurate projections. Traditionally, the issue has been handled
through an age-race-sex adjustment at the national and state levels. An
alternative solution is suggested and detailed in this paper. A two-step
strategy is proposed to reduce nonresponse bias and improve predictions.
First, ''vote-remembering'' (vote recall) is used to correct party
proportion estimates at polling locations; second, this is used to estimate
party proportions at precinct level through a regression estimator. The
method is gauged by forecasting the 2003 and 2007 Corts Valencianes
elections using raw data from the exit polls conducted by SigmaDos for
Generalitat Valenciana. In light of the results, this procedure
considerably improves raw data projections and shows a substantial
improvement over industry (SigmaDos) forecasts. It therefore represents an
interesting alternative that could easily be adopted for exit polling in
any country where precinct-level voting data exist.
Keywords: Election forecasts
, Exit polling
, Evaluating forecasts
, Survey sampling
, Vote-remembering
, Vote recall
, Spanish elections