通过Twitter提取的COVID数据的情绪分析

Rugved Mone and Bhakti Palkar
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引用次数: 0

摘要

不同类型的社交媒体网站存在,其中一些是LinkedIn, Twitter, Facebook, Instagram, WhatsApp等。随着社交媒体用户数量的增加,用户表达情感的机会也增加了。Twitter是许多用户的选择,因为它不仅允许用户表达他们的想法,而且可以与官方账户(PMO,国防部)互动,这些账户可以在网站上看到经过验证的勾选。在这篇题为“通过Twitter提取的COVID数据的情绪分析”的论文中,研究并实施了多种机器学习和深度学习技术来执行情绪分析。此外,还提出了一种使用深度学习架构的新方法。它是基于双向长短期(BiLSTM)神经网络和卷积神经网络(CNN)的组合。在实现算法之前,数据是通过使用web抓取技术和/或与Twitter相关的公共api获得的。本文还对所提出的技术的效率和性能与文献综述阶段发现的其他现有方法进行了比较分析。关键词:情感分析,机器学习,深度学习,自然语言处理
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Sentiment Analysis of COVID data extracted via Twitter
Different types of social media sites exist, wherein some of them are LinkedIn, Twitter, Facebook, Instagram, WhatsApp, etc. As the number of social media users increases, the opportunity for the user to express their feelings also increases. Twitter is a choice of many users as it not only allows the users to express their thoughts but to interact with official accounts (PMO, Defense Ministry) which can be seen with a verified tick on the website. In this thesis titled ‘Sentiment Analysis of COVID data extracted via Twitter’, multiple machine learning and deep learning techniques have been researched and implemented to perform sentiment analysis. Moreover, a novel approach using deep learning architecture has been proposed. It is based on a combination of Bidirectional Long Short Term (BiLSTM) neural networks and Convolution Neural Networks (CNN). Prior to implementing the algorithms, the data is acquired by using web-scraping techniques and/or public APIs pertaining to Twitter. A comparative analysis of the efficiency and performance of the proposed technique along with other existing approaches discovered during the literature review phase is also presented. KEYWORDS: Sentiment analysis, machine learning, deep learning, Natural Language Processing
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