What is it about?
Detecting offensive language on social media platforms and the presence of such language on the Internet has become a major challenge for modern society. To overcome this challenge, Offensive Language Classification based on the Chaotic Antlion optimization algorithm has been proposed. The best classification accuracy is achieved by the suggested method, which is 99.27% for the SOLID dataset and 98.99% for the OLID dataset. The suggested method outperforms the DCNN, Simple Logistics, and CNN methods in terms of overall accuracy by 4.99%, 8.72%, and 10.4%, respectively.
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Why is it important?
Social media has become one of the most popular medium of communication and the post may be predominantly unstructured, informal, and frequently misspelled. It has become increasingly common for users to use abusive language in their comments. Our findings show that the automatic detection of offensive language from social media by using Chaotic Antlion optimization algorithm. A Chaotic Antlion Optimization Algorithm is used to select the most relevant features during the feature selection phase. After selecting the features, a Ghost network classifies the input data into four classes namely offensive, non-offensive, swear, and offensive but not offensive.
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This page is a summary of: Detecting offensive language using Chaotic Ant Lion optimization-based Ghost net in social media, Journal of Intelligent & Fuzzy Systems, November 2023, IOS Press,
DOI: 10.3233/jifs-232217.
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