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A deep learning approach for sentiment analysis of COVID-19 reviews.pdf (930.34 kB)

A deep learning approach for sentiment analysis of COVID-19 reviews

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posted on 2022-12-12, 01:35 authored by Chetanpal Singh, Tasadduq ImamTasadduq Imam, Santoso WibowoSantoso Wibowo, Srimannarayana GrandhiSrimannarayana Grandhi
User-generated multi-media content, such as images, text, videos, and speech, has recently become more popular on social media sites as a means for people to share their ideas and opinions. One of the most popular social media sites for providing public sentiment towards events that occurred during the COVID-19 period is Twitter. This is because Twitter posts are short and constantly being generated. This paper presents a deep learning approach for sentiment analysis of Twitter data related to COVID-19 reviews. The proposed algorithm is based on an LSTM-RNN-based network and enhanced featured weighting by attention layers. This algorithm uses an enhanced feature transformation framework via the attention mechanism. A total of four class labels (sad, joy, fear, and anger) from publicly available Twitter data posted in the Kaggle database were used in this study. Based on the use of attention layers with the existing LSTM-RNN approach, the proposed deep learning approach significantly improved the performance metrics, with an increase of 20% in accuracy and 10% to 12% in precision but only 12–13% in recall as compared with the current approaches. Out of a total of 179,108 COVID-19-related tweets, tweets with positive, neutral, and negative sentiments were found to account for 45%, 30%, and 25%, respectively. This shows that the proposed deep learning approach is efficient and practical and can be easily implemented for sentiment classification of COVID-19 reviews.

History

Volume

12

Issue

8

Start Page

1

End Page

13

Number of Pages

14

eISSN

2076-3417

Publisher

MDPI AG

Additional Rights

CC BY 4.0

Language

en

Peer Reviewed

  • Yes

Open Access

  • Yes

Acceptance Date

2022-03-29

Author Research Institute

  • Centre for Intelligent Systems

Era Eligible

  • Yes

Journal

Applied Sciences

Article Number

3709

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