An empirical study of sentiment analysis utilizing machine learning and deep learning algorithms
Abstract
Among text-mining studies, one of the most studied topics is the text classifcation
task applied in various domains, including medicine, social media, and academia.
As a sub-problem in text classifcation, sentiment analysis has been widely investigated to classify often opinion-based textual elements. Specifcally, user reviews
and experiential feedback for products or services have been employed as fundamental data sources for sentiment analysis eforts. As a result of rapidly emerging
technological advancements, social media platforms such as Twitter, Facebook, and
Reddit, have become central opinion-sharing mediums since the early 2000s. In this
sense, we build various machine-learning models to solve the sentiment analysis
problem on the Reddit comments dataset in this work. The experimental models we
constructed achieve F1 scores within intervals of 73–76%. Consequently, we present
comparative performance scores obtained by traditional machine learning and deep
learning models and discuss the results.