On Using Twitter to Monitor Political Sentiment and Predict Election Results 论文
摘要
The body of content available on Twitter undoubtedly contains a diverse range of political insight and commentary. But, to what extent is this representative of an \nelectorate? Can we model political sentiment effectively enough to capture the voting intentions of a nation during an election capaign? We use the recent Irish General \nElection as a case study for investigating the potential to model political sentiment through mining of social media. Our approach combines sentiment analysis using \nsupervised learning and volume-based measures. We evaluate against the conventional election polls and the final election result. We find that social analytics using \nboth volume-based measures and sentiment analysis are predictive and wemake a number of observations related to the task of monitoring public sentiment during \nan election campaign, including examining a variety of sample sizes, time periods as well as methods for qualitatively exploring the underlying content.