IRCLSIApr 8, 2020

Word frequency and sentiment analysis of twitter messages during Coronavirus pandemic

arXiv:2004.03925v25 citations
Originality Synthesis-oriented
AI Analysis

This provides insights into public sentiment during the pandemic, but it is incremental as it applies standard methods to new data.

The paper analyzed Twitter messages during the COVID-19 pandemic using word frequency and sentiment analysis, finding that most tweets had neutral sentiment with only 2.57% expressing negative polarity.

The COVID-19 epidemic has had a great impact on social media conversation, especially on sites like Twitter, which has emerged as a hub for public reaction and information sharing. This paper deals by analyzing a vast dataset of Twitter messages related to this disease, starting from January 2020. Two approaches were used: a statistical analysis of word frequencies and a sentiment analysis to gauge user attitudes. Word frequencies are modeled using unigrams, bigrams, and trigrams, with power law distribution as the fitting model. The validity of the model is confirmed through metrics like Sum of Squared Errors (SSE), R-squared ($R^2$), and Root Mean Squared Error (RMSE). High $R^2$ and low SSE/RMSE values indicate a good fit for the model. Sentiment analysis is conducted to understand the general emotional tone of Twitter users messages. The results reveal that a majority of tweets exhibit neutral sentiment polarity, with only 2.57\% expressing negative polarity.

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