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handle: 10807/270177
Hate speech detection in social media communication has become one of the primary concerns to avoid conflicts and curb undesired activities. In an environment where multilingual speakers switch among multiple languages, hate speech detection becomes a challenging task using methods that are designed for monolingual corpora. In our work, we attempt to analyze, detect and provide a comparative study of hate speech in a code-mixed social media text. We also provide a Hindi-English code-mixed data set consisting of Facebook and Twitter posts and comments. Our experiments show that deep learning models trained on this code-mixed corpus perform better.
strategies, tools, standards for lexicographic resources (objective 3), WP2, Hate Speech, Code mixing, Convolutional Neural Networks
strategies, tools, standards for lexicographic resources (objective 3), WP2, Hate Speech, Code mixing, Convolutional Neural Networks
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influence This indicator reflects the overall/total impact of an article in the research community at large, based on the underlying citation network (diachronically). | Average | |
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