论文标题

一种基于CNN-LSTM的混合深度学习方法,可检测Monkeypox推文上的情感极性

A CNN-LSTM-based hybrid deep learning approach to detect sentiment polarities on Monkeypox tweets

论文作者

Mohbey, Krishna Kumar, Meena, Gaurav, Kumar, Sunil, Lokesh, K

论文摘要

人们最近开始通过社交网站上用户生成的多媒体材料来传达自己的思想和观点。此信息可以是图像,文本,视频或音频。近年来,这种模式的发生频率有所增加。 Twitter是最广泛使用的社交媒体网站之一,它也是最好的地点之一,可以使人们对与蒙基键疾病相关的事件的感觉有一种了解。这是因为Twitter上的推文缩短并经常更新,这两者都会促进平台的角色。这项研究的基本目的是对人们对这种情况的存在更深入地了解各种反应。这项研究重点是找出个人对猴蛋白酶疾病的看法,该疾病介绍了基于CNN和LSTM的混合技术。我们已经考虑了用户推文的所有三个可能的极性:正,负和中立。使用CNN和LSTM构建的架构来确定预测模型的准确性。在Monkeypox Tweet数据集上,推荐模型的准确性为94%。其他性能指标(例如准确性,召回和F1得分)也用于测试我们的模型,并最多的时间和资源有效的方式。然后将发现与更传统的机器学习方法进行比较。这项研究的发现有助于提高对普通人群中猴子感染的认识。

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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