2021
DOI: 10.15837/ijccc.2021.2.4207
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An Ensemble Machine Learning Approach to Understanding the Effect of a Global Pandemic on Twitter Users’ Attitudes

Abstract: It is thought that the COVID-19 outbreak has significantly fuelled racism and discrimination, especially towards Asian individuals[10]. In order to test this hypothesis, in this paper, we build upon existing work in order to classify racist tweets before and after COVID-19 was declared a global pandemic. To overcome the difficult linguistic and unbalanced nature of the classification task, we combine an ensemble of machine learning techniques such as a Linear Support Vector Classifiers, Lo… Show more

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Cited by 3 publications
(4 citation statements)
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“…the, a, etc. ), misspellings, and web data are often filtered out via regular expressions and parsing libraries [4,27,46,47,52,69,71,81,84]. Compared to semantic or reply networks, community detection models tend to extract metadata for separate clustering for entity and concept relationships.…”
Section: Data Filteringmentioning
confidence: 99%
See 1 more Smart Citation
“…the, a, etc. ), misspellings, and web data are often filtered out via regular expressions and parsing libraries [4,27,46,47,52,69,71,81,84]. Compared to semantic or reply networks, community detection models tend to extract metadata for separate clustering for entity and concept relationships.…”
Section: Data Filteringmentioning
confidence: 99%
“…Deep Learning Algorithms (DLAs) DL studies are rising, with less than a third of studies including DLAs pre-2019[10, 18, 27, 32, 45,91,99]. The percentage of all studies which included a DLA per year was 0% in 2016, 27.3% in 2017[10, 27, 45,99], and 33.3% in 2018[18, 32,91], compared to being the majority post-2018 (81.8% in 2019[1, 4,53,67,71,77,83,84,90,[128][129][130], 54.5% in 2020[14,55,57,81,107,111] and 80% in 2021[3,52,126])-with Figure12displaying the shift towards DLAs since 2015.…”
mentioning
confidence: 99%
“…Online remarks and posts inciting racial tensions have threatened the social, political, and cultural equilibrium of various nations [10]. The rapid dissemination of racist ideologies via social media underscores the urgency of identifying and eliminating such content [11].…”
Section: Introductionmentioning
confidence: 99%
“…Using Tweets, researchers have investigated topics as varied as the stigma surrounding homelessness (Kim et al, 2021), the experiences of first year university students (Liu et al, 2018), and the misuse of prescription opioids (Chary et al, 2017). At the time of writing, the COVID-19 pandemic is impacting every corner of the globe, and Twitter has proved a powerful resource for gaining insights related to topical issues including vaccine hesitancy (Griffith et al, 2021), attitudes to mask wearing (He et al, 2021), and the impact of the pandemic on the discrimination of Asian people (Jia et al, 2021).…”
Section: Introductionmentioning
confidence: 99%