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Although the boom of social media in the past decade has enabled the creation, distribution, and consumption of information at a remarkable rate, it has also led to the growth of different forms of online abuse. Since the outbreak of COVID-19, hate against Chinese or Sinophobia has increased significantly in real world as well as on online platforms making it necessary to design ways to combat it. In this paper, we design a platform-agnostic model to detect Sinophobic content on social media websites automatically. We use pre-trained word embeddings with several machine learning classifiers to detect Sinophobia on three platforms---Parler, Reddit, and Twitter. Our results demonstrate that the BERT model shows the best performance among all the models by achieving an accuracy of 98.51% on Parler, 95.36% on Reddit, and 88.12% on Twitter datasets.
Morgan et al. (Wed,) studied this question.