An empirical study of sentiment analysis utilizing machine learning and deep learning algorithms
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Date
2023
Authors
Journal Title
Journal ISSN
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Publisher
SPRINGER
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.
Description
Keywords
Sentiment analysis, Machine learning, Deep learning, Text mining
Turkish CoHE Thesis Center URL
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WoS Q
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Issue
Start Page
1
End Page
17