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使用BERT + NBSVM和地理空间方法的疫苗情绪分析。

Vaccine sentiment analysis using BERT + NBSVM and geo-spatial approaches.

作者信息

Umair Areeba, Masciari Elio, Ullah Muhammad Habib

机构信息

Department of Electrical Engineering and Information Technology, University of Naples Federico II, Via Claudio 21, 80125 Naples, Campania Italy.

出版信息

J Supercomput. 2023 May 7:1-31. doi: 10.1007/s11227-023-05319-8.

DOI:10.1007/s11227-023-05319-8
PMID:37359330
原文链接:https://pmc.ncbi.nlm.nih.gov/articles/PMC10164419/
Abstract

Since the spread of the coronavirus flu in 2019 (hereafter referred to as COVID-19), millions of people worldwide have been affected by the pandemic, which has significantly impacted our habits in various ways. In order to eradicate the disease, a great help came from unprecedentedly fast vaccines development along with strict preventive measures adoption like lockdown. Thus, world wide provisioning of vaccines was crucial in order to achieve the maximum immunization of population. However, the fast development of vaccines, driven by the urge of limiting the pandemic caused skeptical reactions by a vast amount of population. More specifically, the people's hesitancy in getting vaccinated was an additional obstacle in fighting COVID-19. To ameliorate this scenario, it is important to understand people's sentiments about vaccines in order to take proper actions to better inform the population. As a matter of fact, people continuously update their feelings and sentiments on social media, thus a proper analysis of those opinions is an important challenge for providing proper information to avoid misinformation. More in detail, sentiment analysis (Wankhade et al. in Artif Intell Rev 55(7):5731-5780, 2022. 10.1007/s10462-022-10144-1) is a powerful technique in natural language processing that enables the identification and classification of people feelings (mainly) in text data. It involves the use of machine learning algorithms and other computational techniques to analyze large volumes of text and determine whether they express positive, negative or neutral sentiment. Sentiment analysis is widely used in industries such as marketing, customer service, and healthcare, among others, to gain actionable insights from customer feedback, social media posts, and other forms of unstructured textual data. In this paper, Sentiment Analysis will be used to elaborate on people reaction to COVID-19 vaccines in order to provide useful insights to improve the correct understanding of their correct usage and possible advantages. In this paper, a framework that leverages artificial intelligence (AI) methods is proposed for classifying tweets based on their polarity values. We analyzed Twitter data related to COVID-19 vaccines after the most appropriate pre-processing on them. More specifically, we identified the word-cloud of negative, positive, and neutral words using an artificial intelligence tool to determine the sentiment of tweets. After this pre-processing step, we performed classification using the BERT + NBSVM model to classify people's sentiments about vaccines. The reason for choosing to combine bidirectional encoder representations from transformers (BERT) and Naive Bayes and support vector machine (NBSVM ) can be understood by considering the limitation of BERT-based approaches, which only leverage encoder layers, resulting in lower performance on short texts like the ones used in our analysis. Such a limitation can be ameliorated by using Naive Bayes and Support Vector Machine approaches that are able to achieve higher performance in short text sentiment analysis. Thus, we took advantage of both BERT features and NBSVM features to define a flexible framework for our sentiment analysis goal related to vaccine sentiment identification. Moreover, we enrich our results with spatial analysis of the data by using geo-coding, visualization, and spatial correlation analysis to suggest the most suitable vaccination centers to users based on the sentiment analysis outcomes. In principle, we do not need to implement a distributed architecture to run our experiments as the available public data are not massive. However, we discuss a high-performance architecture that will be used if the collected data scales up dramatically. We compared our approach with the state-of-art methods by comparing most widely used metrics like Accuracy, Precision, Recall and -measure. The proposed BERT + NBSVM outperformed alternative models by achieving 73% accuracy, 71% precision, 88% recall and 73% -measure for classification of positive sentiments while 73% accuracy, 71% precision, 74% recall and 73% -measure for classification of negative sentiments respectively. These promising results will be properly discussed in next sections. The use of artificial intelligence methods and social media analysis can lead to a better understanding of people's reactions and opinions about any trending topic. However, in the case of health-related topics like COVID-19 vaccines, proper sentiment identification could be crucial for implementing public health policies. More in detail, the availability of useful findings on user opinions about vaccines can help policymakers design proper strategies and implement ad-hoc vaccination protocols according to people's feelings, in order to provide better public service. To this end, we leveraged geospatial information to support effective recommendations for vaccination centers.

摘要

自2019年新冠病毒流感(以下简称COVID-19)传播以来,全球数百万人受到这一流行病的影响,它在各个方面显著影响了我们的生活习惯。为了根除这种疾病,前所未有的快速疫苗研发以及采取诸如封锁等严格预防措施带来了巨大帮助。因此,全球范围内的疫苗供应对于实现最大程度的人群免疫至关重要。然而,在限制疫情的紧迫性推动下,疫苗的快速研发引发了大量人群的怀疑反应。更具体地说,人们对接种疫苗的犹豫是抗击COVID-19的又一障碍。为了改善这种情况,了解人们对疫苗的看法以便采取适当行动更好地向公众宣传非常重要。事实上,人们在社交媒体上不断更新他们的感受和情绪,因此对这些观点进行适当分析是为避免错误信息而提供正确信息的一项重要挑战。更详细地说,情感分析(Wankhade等人,《人工智能评论》55(7):5731 - 5780,2022. 10.1007/s10462 - 022 - 10144 - 1)是自然语言处理中的一项强大技术,它能够(主要在文本数据中)识别和分类人们的情感。它涉及使用机器学习算法和其他计算技术来分析大量文本,并确定它们表达的是积极、消极还是中性情感。情感分析广泛应用于营销、客户服务和医疗保健等行业,以从客户反馈、社交媒体帖子和其他形式的非结构化文本数据中获得可操作的见解。在本文中,将使用情感分析来阐述人们对COVID-19疫苗的反应,以便提供有用的见解来增进对其正确使用和可能优势的正确理解。本文提出了一个利用人工智能(AI)方法的框架,用于根据推文的极性值对其进行分类。我们在对与COVID-19疫苗相关的推特数据进行最合适的预处理后对其进行了分析。更具体地说,我们使用人工智能工具识别了负面、正面和中性词汇的词云,以确定推文的情感。在这个预处理步骤之后,我们使用BERT + NBSVM模型进行分类,以对人们对疫苗的情感进行分类。选择将来自变换器的双向编码器表示(BERT)与朴素贝叶斯和支持向量机(NBSVM)相结合的原因,可以通过考虑基于BERT的方法的局限性来理解,该方法仅利用编码器层,导致在像我们分析中使用的短文本上性能较低。通过使用在短文本情感分析中能够实现更高性能的朴素贝叶斯和支持向量机方法,可以改善这种局限性。因此,我们利用BERT的特征和NBSVM的特征来为与疫苗情感识别相关的情感分析目标定义一个灵活的框架。此外,我们通过使用地理编码、可视化和空间相关性分析对数据进行空间分析来丰富我们的结果,以便根据情感分析结果向用户推荐最合适的疫苗接种中心。原则上,由于可用的公共数据量不大,我们不需要实现分布式架构来运行我们的实验。然而,我们讨论了一种高性能架构,如果收集的数据量大幅增加将使用该架构。我们通过比较最广泛使用的指标,如准确率、精确率、召回率和F1值,将我们的方法与现有方法进行了比较。所提出的BERT + NBSVM在对积极情感进行分类时,准确率达到73%,精确率达到71%,召回率达到88%,F1值达到73%;在对消极情感进行分类时,准确率达到73%,精确率达到71%,召回率达到74%,F1值达到73%,优于替代模型。这些有前景的结果将在接下来的部分进行适当讨论。使用人工智能方法和社交媒体分析可以更好地理解人们对任何热门话题的反应和观点。然而,在像COVID-19疫苗这样与健康相关的话题中,正确的情感识别对于实施公共卫生政策可能至关重要。更详细地说,关于用户对疫苗看法的有用发现的可用性可以帮助政策制定者根据人们的感受设计适当的策略并实施临时疫苗接种方案,以便提供更好的公共服务。为此,我们利用地理空间信息来支持对疫苗接种中心的有效推荐。

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