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The rapid proliferation of social media platforms has facilitated the expression of opinions but also enabled the spread of hate speech. Detecting multimodal hate speech in low-resource multilingual contexts poses significant challenges. This study presents a deep learning framework that integrates bidirectional long short-term memory (BiLSTM) and EfficientNetB1 to classify hate speech in Urdu-English tweets, leveraging both text and image modalities. We introduce multimodal multilingual hate speech (MMHS11K), a manually annotated dataset comprising 11,000 multimodal tweets. Using an early fusion strategy, text and image features were combined for classification. Experimental results demonstrate that the BiLSTM+EfficientNetB1 model outperforms unimodal and baseline multimodal approaches, achieving an F1-score of 81.2% for Urdu tweets and 75.5% for English tweets. This research addresses critical gaps in multilingual and multimodal hate speech detection, offering a foundation for future advancements.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC12190340 | PMC |
http://dx.doi.org/10.7717/peerj-cs.2801 | DOI Listing |
Public Opin Q
August 2025
Associate Professor, School of Applied Politics, Université de Sherbrooke, Sherbrooke, QC, Canada.
Journalists face intricate decisions regarding what to publish, especially when problematic content may impact public opinion in a way that could fuel hate and/or undermine democratic attitudes. While scholarship has recognized the importance of this issue, most studies focus on published content, how citizens engage with it, and the implications of published news. In this article, we provide a fresh perspective on the crucial dilemma faced by journalists concerning their perceived impact on public opinion, by leveraging data based on 36 semistructured in-depth interviews with journalists covering Brazil's political landscape.
View Article and Find Full Text PDFSci Rep
August 2025
Department of Psychology and Israel Center for Addiction and Mental Health, The Hebrew University of Jerusalem, Jerusalem, Israel.
Post-traumatic stress disorder (PTSD) after traumatic events is prevalent and can lead to negative consequences. While social media use has been associated with PTSD, little is known about the specific association of online hate speech on social media networks and PTSD, and whether such association is stronger among those with difficulties in emotion regulation, who may have a harder time coping with hate speech. In a general population sample of Jewish adults (aged 18-70) in Israel (N = 3,998), assessed about two months after the wide-scale terror attacks of October 7, 2023, regression analysis was used to explore the association of online hate speech and self-reported PTSD symptomology.
View Article and Find Full Text PDFSoc Stud Sci
August 2025
Department of Science Studies, Seoul National University, Seoul, Korea.
This paper examines the case of Iruda, an AI chatbot launched in December 2020 by the South Korean startup Scatter Lab. Iruda quickly became the center of a controversy, because of inappropriate remarks and sexual exchanges. As conversations between Iruda and users spread through online communities, the controversy expanded to other issues, including hate speech against minorities and privacy violations.
View Article and Find Full Text PDFJ Homosex
July 2025
Health & Wellbeing, Whitireia Community Polytechnic, Porirua, New Zealand.
In late 2022, a collaborative research study was designed by a group of polytechnic researchers that aimed to explore how safe and inclusive the various campuses of New Zealand's polytechnic sector were for rainbow students. Two online surveys were distributed to students and staff in 14 of the nation's 16 polytechnics. One of the surveys was designed to be completed by rainbow students and the other, by cisgender (cis) heterosexual students and all staff.
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