Dataset Statistics of Numbers of 'Hateful', 'Normal', 'Other' Users in Dataset

Dataset Statistics of Numbers of 'Hateful', 'Normal', 'Other' Users in Dataset

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The ubiquity of social media has transformed communication patterns and interactions in contemporary society, allowing individuals to share experiences, thoughts, and opinions on a global scale. However, this unprecedented connectivity has also facilitated the dissemination of hate speech, posing novel challenges for platforms, policymakers, and re...

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... viewing the results in terms of the research question, I started with the dataset itself. Table 1 demonstrates the statistics of the dataset. The dataset contains three kinds of users: "hateful," "normal," and "other." ...

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