A framework for improving electoral forecasting based on time-aware polling

Social Network Analysis and Mining(2020)

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摘要
The prediction of opinion distribution in real-world scenarios represents a major scientific challenge for current social networks analysis. In terms of electoral forecasting, we find several prediction solutions that try to combine statistics with economic indices, and machine learning, like multilevel regression and post-stratification (MRP). Nevertheless, recent studies pinpoint toward the importance of temporal characteristics in the diffusion of opinion. As such, we take inspiration from micro-scale temporal epidemic models and develop an original time-aware (TA) forecasting methodology which is able to improve the prediction of opinion distribution in an electoral context. After a parametric analysis, we validate our TA method with pre-election survey data from three presidential elections (2012–2019) and the UK Brexit (2016). Benchmarking our TA method against two classic statistical approaches, like survey averaging (SA), and cumulative vote counting (CC), and the best pollster predictions, we find that our method is substantially closer to the real election outcomes. On average, we measure prediction errors of 9.8
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关键词
Election poll forecast, Opinion surveys, Time-aware polling, Social network mining
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