2021
DOI: 10.1109/access.2021.3087827
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Improving Hate Speech Detection of Urdu Tweets Using Sentiment Analysis

Abstract: Sentiment Analysis is a technique that is being used abundantly nowadays for customer reviews analysis, popularity analysis of electoral candidates, hate speech detection and similar applications. Sentiment analysis on tweets encounters challenges such as highly skewed classes, high dimensional feature vectors and highly sparse data. In this study, we have analyzed the improvement achieved by successively addressing these problems in order to determine their severity for sentiment analysis of tweets. Firstly, … Show more

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Cited by 36 publications
(12 citation statements)
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“…Numerous research investigations have meticulously delved into the realm of identifying hate speech, with a notable emphasis on discerning hate speech within political contexts, as is evident from the works of (Oriola & Kotze, 2020; Ribeiro et al, 2018; Wang et al, 2022). Additionally, the academic discourse extends to the scrutiny of hate speech intertwined with religious themes, as underscored by (Al‐Hassan & Al‐Dossari, 2022; Ali et al, 2021; Ghosh et al, 2023; Mozafari et al, 2022; Qureshi & Sabih, 2021; Sajid et al, 2020). Visual representation of the distribution of these topics is offered in Figure 12 and Table 9, which convey the number of instances within each thematic domain.…”
Section: Discussionmentioning
confidence: 99%
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“…Numerous research investigations have meticulously delved into the realm of identifying hate speech, with a notable emphasis on discerning hate speech within political contexts, as is evident from the works of (Oriola & Kotze, 2020; Ribeiro et al, 2018; Wang et al, 2022). Additionally, the academic discourse extends to the scrutiny of hate speech intertwined with religious themes, as underscored by (Al‐Hassan & Al‐Dossari, 2022; Ali et al, 2021; Ghosh et al, 2023; Mozafari et al, 2022; Qureshi & Sabih, 2021; Sajid et al, 2020). Visual representation of the distribution of these topics is offered in Figure 12 and Table 9, which convey the number of instances within each thematic domain.…”
Section: Discussionmentioning
confidence: 99%
“…Race (Mathew et al, n.d.;Alatawi et al, 2021;Chiu et al, 2021;MacAvaney et al, 2019;Sajid et al, 2020;Shannaq et al, 2022;Sharma & Shrivastava, 2018;Zhang & Luo, 2018) Religion (Sajid et al, 2020;Zhang & Luo, 2018), (Mathew et al, n.d.;Ali et al, 2021;Mozafari et al, 2022;Qureshi & Sabih, 2021) Ethnicity (Ali et al, 2021;Ghosh et al, 2023;Mozafari et al, 2022;Pronoza et al, 2021;Watanabe et al, 2018) Sexist (Al-Hassan & Al-Dossari, 2022;Baydogan & Alatas, 2021;Chiu et al, 2021;MacAvaney et al, 2019;Mozafari et al, 2022;Qureshi & Sabih, 2021;Shannaq et al, 2022) Political (Govers et al, 2023;Oriola & Kotze, 2020;Plaza-Del-Arco et al, 2021;Ribeiro et al, 2017;Wang et al, 2022) Women and immigrants (Irani et al, 2021;MacAvaney et al, 2019;Zhou et al, 2020) Covid-19 (Ahmed & Lin, 2022;Khanday et al, 2022;Su et al, 2023) Gender (Ghosh et al, 2023) Crime (Mathew et al, n.d.) and those addressing hate speech within the framework of the COVID-19 outbreak, such as Khanday et al (2022) and…”
Section: Target Studymentioning
confidence: 99%
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“…Offensive texts, hate speech, and misogynous language are often correlated with negative sentiments, whereas the tone, context, and content is often highly loaded with polarized language (Ali et al, 2021;Gitari et al, 2015); as such, our intuition to enhance the UNITER model with a sentiment classifier. We focused only on image modality since large language models often already capture features required for text sentiment analysis.…”
Section: Visual Sentiment-enhanced Unitermentioning
confidence: 99%
“…They presented a comparative analysis of the performance of different deep learning algorithms over Urdu datasets for sentiment analysis. Ali et al [31] used word filtering and feature selection and optimization techniques to improve the detection of hate speech from Urdu Tweets. They used machine learning algorithms to classify the text.…”
Section: Sentiment Analysis In the Urdu Languagementioning
confidence: 99%