A CNN-LSTM-based hybrid deep learning approach to detect sentiment
polarities on Monkeypox tweets
- URL: http://arxiv.org/abs/2208.12019v1
- Date: Thu, 25 Aug 2022 11:53:04 GMT
- Title: A CNN-LSTM-based hybrid deep learning approach to detect sentiment
polarities on Monkeypox tweets
- Authors: Krishna Kumar Mohbey, Gaurav Meena, Sunil Kumar, K Lokesh
- Abstract summary: This study focuses on finding out what individuals think about monkeypox illnesses, which presents a hybrid technique based on CNN and LSTM.
An architecture built on CNN and LSTM is utilized to determine how accurate the prediction models are.
The recommended model's accuracy was 94% on the monkeypox tweet dataset.
- Score: 0.5104181562775777
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: People have recently begun communicating their thoughts and viewpoints
through user-generated multimedia material on social networking websites. This
information can be images, text, videos, or audio. Recent years have seen a
rise in the frequency of occurrence of this pattern. Twitter is one of the most
extensively utilized social media sites, and it is also one of the finest
locations to get a sense of how people feel about events that are linked to the
Monkeypox sickness. This is because tweets on Twitter are shortened and often
updated, both of which contribute to the platform's character. The fundamental
objective of this study is to get a deeper comprehension of the diverse range
of reactions people have in response to the presence of this condition. This
study focuses on finding out what individuals think about monkeypox illnesses,
which presents a hybrid technique based on CNN and LSTM. We have considered all
three possible polarities of a user's tweet: positive, negative, and neutral.
An architecture built on CNN and LSTM is utilized to determine how accurate the
prediction models are. The recommended model's accuracy was 94% on the
monkeypox tweet dataset. Other performance metrics such as accuracy, recall,
and F1-score were utilized to test our models and results in the most time and
resource-effective manner. The findings are then compared to more traditional
approaches to machine learning. The findings of this research contribute to an
increased awareness of the monkeypox infection in the general population.
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