This paper presents a sentiment analysis of tweets regarding the 2020 US presidential election, utilizing a bidirectional long short-term memory (BiLSTM) model trained on 1.2 million tweets. The analysis aims to predict election outcomes based on sentiment comparison with the 2016 election and considers the impact of COVID-19 on public sentiment. The authors achieved a 93.45% accuracy in their predictive model and discuss the methodology, data processing, and implications of their findings.
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