Sentiment analysis on COVID-19 tweets
Abstract
The global spread of COVID-19, as well as the emergence of platforms as for many
people a key source of information, has resulted in a wide range of reactions. But it
is hard to keep up with this mass scenario. A significant number of individuals share
their ideas and perspective on current events on social media, making it hard for a
human to read and understand everything. There are a lot of information spreading
through tweets. Using public comments available on Twitter, our study tries to do a
sentiment analysis of the total conversation over COVID-19 in a document. We will
try to improve the techniques and methods that were previously used in sentiment
analysis. Our main focus is to look at tweets about COVID-19 from the previous
year using natural language processing and neural network approaches. We have
used a multiclass dataset and applied the same dataset to BOW, TF-IDF and One
Hot Encoding. Furthermore, we tried to do a competitive analysis after training four
different classifiers by applying these different pre-processing techniques in each classifier
to find a better result. This way we tried to observe three different sentiment
classes which are Negative, Neutral, and Positive in every methodology. However,
we tried to generate a report of the best-performing combination of classifying algorithms
and methods. Along the way, we tried to implement latest techniques to
contributions on themes relating to Sentiment Analysis and compared the result
with other techniques.