利用三重词嵌入和长短时记忆识别包含 COVID-19 症状自我报告的社交媒体帖子

Raisa Amalia, M. Faisal, Fatma Indriani, Irwan Budiman, Muhammad Itqan Mazdadi, Friska Abadi, Muhammad Meftah Mafazy
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引用次数: 0

摘要

COVID-19 大流行已渗透到全球范围,影响到几乎所有国家和地区。这种流行病的常见症状包括发烧、咳嗽、疲劳和嗅觉丧失。COVID-19 对公众健康和经济的影响已成为全球关注的焦点。它已导致印度尼西亚经济萎缩,尤其是在面对面交流和流动性行业,如运输、仓储、建筑、食品和饮料。自疫情开始以来,推特用户在推文中分享了一些症状。然而,由于测试限制、报告延迟以及医疗保健的预登记要求,他们无法确认自己的担忧。推特数据中有关 COVID-19 主题的文本分类主要集中在有关大流行病或疫苗接种的情感分析上。通过社交媒体信息识别 COVID-19 症状的研究在文献中非常有限。本研究的主要目的是利用词嵌入技术和 LSTM 算法识别症状。研究中使用了多种技术,如 Word2Vec、GloVe、FastText 和一种复合方法。LSTM 用于分类,改进了 RNN 技术。评估标准包括准确度、精确度和召回率。输入维度为 147x100 的模型准确率最高,达到 89%。本研究旨在找出检测社交媒体推文中 COVID-19 症状的最佳 LSTM 模型。它评估了采用不同词嵌入技术和输入维度的 LSTM 模型,为通过社交媒体文本检测 COVID-19 提供了基于文本的最佳方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Social Media Posts Containing Self-reported COVID-19 Symptoms using Triple Word Embeddings and Long Short-Term Memory
The COVID-19 pandemic has permeated the global sphere and influenced nearly all nations and regions. Common symptoms of this pandemic include fever, cough, fatigue, and loss of sense of smell. The impact of COVID-19 on public health and the economy has made it a significant global concern. It has caused economic contraction in Indonesia, particularly in face-to-face interaction and mobility sectors, such as transportation, warehousing, construction, and food and beverages. Since the pandemic began, Twitter users have shared symptoms in their tweets. However, they couldn't confirm their concerns due to testing limitations, reporting delays, and pre-registration requirements in healthcare. The classification of text from Twitter data about COVID-19 topics has predominantly focused on sentiment analysis regarding the pandemic or vaccination. Research on identifying COVID-19 symptoms through social media messages is limited in the literature. The main objective of this study is to identify symptoms using word embedding techniques and the LSTM algorithm. Various techniques such as Word2Vec, GloVe, FastText, and a composite approach are used. LSTM is used for classification, improving upon the RNN technique. Evaluation criteria include accuracy, precision, and recall. The model with an input dimension of 147x100 achieves the highest accuracy at 89%. This study aims to find the best LSTM model for detecting COVID-19 symptoms in social media tweets. It evaluates LSTM models with different word embedding techniques and input dimensions, providing insights into the optimal text-based method for COVID-19 detection through social media texts.
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