Polling India via regression and post-stratification of non-probability online samples

Recent technological advances have facilitated the collection of large-scale administrative data and the online surveying of the Indian population. Building on these we propose a strategy for more robust, frequent and transparent projections of the Indian vote during the campaign. We execute a modif...

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Main Authors: Cerina, R, Duch, R
Format: Journal article
Language:English
Published: Public Library of Science 2021
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author Cerina, R
Duch, R
author_facet Cerina, R
Duch, R
author_sort Cerina, R
collection OXFORD
description Recent technological advances have facilitated the collection of large-scale administrative data and the online surveying of the Indian population. Building on these we propose a strategy for more robust, frequent and transparent projections of the Indian vote during the campaign. We execute a modified MrP model of Indian vote preferences that proposes innovations to each of its three core components: stratification frame, training data, and a learner. For the post-stratification frame we propose a novel Data Integration approach that allows the simultaneous estimation of counts from multiple complementary sources, such as census tables and auxiliary surveys. For the training data we assemble panels of respondents from two unorthodox online populations: Amazon Mechanical Turks workers and Facebook users. And as a modeling tool, we replace the Bayesian multilevel regression learner with Random Forests. Our 2019 pre-election forecasts for the two largest Lok Sahba coalitions were very close to actual outcomes: we predicted 41.8% for the NDA, against an observed value of 45.0% and 30.8% for the UPA against an observed vote share of just under 31.3%. Our uniform-swing seat projection outperforms other pollsters—we had the lowest absolute error of 89 seats (along with a poll from ‘Jan Ki Baat’); the lowest error on the NDA-UPA lead (a mere 8 seats), and we are the only pollster that can capture real-time preference shifts due to salient campaign events.
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spelling oxford-uuid:b26d31a2-ba55-4671-a762-fc2166590aa12022-03-27T04:11:40ZPolling India via regression and post-stratification of non-probability online samplesJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:b26d31a2-ba55-4671-a762-fc2166590aa1EnglishSymplectic ElementsPublic Library of Science2021Cerina, RDuch, RRecent technological advances have facilitated the collection of large-scale administrative data and the online surveying of the Indian population. Building on these we propose a strategy for more robust, frequent and transparent projections of the Indian vote during the campaign. We execute a modified MrP model of Indian vote preferences that proposes innovations to each of its three core components: stratification frame, training data, and a learner. For the post-stratification frame we propose a novel Data Integration approach that allows the simultaneous estimation of counts from multiple complementary sources, such as census tables and auxiliary surveys. For the training data we assemble panels of respondents from two unorthodox online populations: Amazon Mechanical Turks workers and Facebook users. And as a modeling tool, we replace the Bayesian multilevel regression learner with Random Forests. Our 2019 pre-election forecasts for the two largest Lok Sahba coalitions were very close to actual outcomes: we predicted 41.8% for the NDA, against an observed value of 45.0% and 30.8% for the UPA against an observed vote share of just under 31.3%. Our uniform-swing seat projection outperforms other pollsters—we had the lowest absolute error of 89 seats (along with a poll from ‘Jan Ki Baat’); the lowest error on the NDA-UPA lead (a mere 8 seats), and we are the only pollster that can capture real-time preference shifts due to salient campaign events.
spellingShingle Cerina, R
Duch, R
Polling India via regression and post-stratification of non-probability online samples
title Polling India via regression and post-stratification of non-probability online samples
title_full Polling India via regression and post-stratification of non-probability online samples
title_fullStr Polling India via regression and post-stratification of non-probability online samples
title_full_unstemmed Polling India via regression and post-stratification of non-probability online samples
title_short Polling India via regression and post-stratification of non-probability online samples
title_sort polling india via regression and post stratification of non probability online samples
work_keys_str_mv AT cerinar pollingindiaviaregressionandpoststratificationofnonprobabilityonlinesamples
AT duchr pollingindiaviaregressionandpoststratificationofnonprobabilityonlinesamples