Affiliation:
1. Decision Sciences Area Indian Institute of Management Bangalore Bengaluru KA India
2. School of Mathematics, Statistics and Actuarial Science University of Essex Colchester, Essex UK
Abstract
AbstractPredicting the winner of an election is of importance to multiple stakeholders. To formulate the problem, we consider an independent sequence of categorical data with a finite number of possible outcomes in each. The data is assumed to be observed in batches, each of which is based on a large number of such trials and can be modeled via multinomial distributions. We postulate that the multinomial probabilities of the categories vary randomly depending on batches. The challenge is to predict accurately on cumulative data based on data up to a few batches as early as possible. On the theoretical front, we first derive sufficient conditions of asymptotic normality of the estimates of the multinomial cell probabilities and present corresponding suitable transformations. Then, in a Bayesian framework, we consider hierarchical priors using multivariate normal and inverse Wishart distributions and establish the posterior convergence. The desired inference is arrived at using these results and ensuing Gibbs sampling. The methodology is demonstrated with election data from two different settings—one from India and the other from the United States. Additional insights of the effectiveness of the proposed methodology are attained through a simulation study.
Reference34 articles.
1. THE TRANSFORMATION OF POISSON, BINOMIAL AND NEGATIVE-BINOMIAL DATA
2. Anuta D. Churchin J. &Luo J.(2017).Election bias: Comparing polls and twitter in the 2016 us election. arXiv preprint arXiv:1701.06232.
3. Modeling covariance matrices in terms of standard deviations and correlations, with application to shrinkage;Barnard J.;Statistica Sinica,2000
4. Estimation of covariance matrices based on hierarchical inverse-Wishart priors
5. Bayesian forecasting of multinomial time series through conditionally gaussian dynamic models;Cargnoni C.;Journal of the American Statistical Association,1997