Enhancing Impulsive Hatred Detection with Ensemble Techniques and Active Learning

The increasing propagation in recent years of hatred on social media and the dire requirement for counter measures have drawn critical speculation from state run administrations, organizations, and analysts. Despite the fact that specialists have observed that disdain is an issue across different So...

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Bibliographic Details
Published inE3S web of conferences Vol. 430; p. 1155
Main Authors Bommala, Harikrishna, Bhargavi, P., Yanamadni, Venkata Rao, Kumar, Y. Jeevan Nagendra, Pandey, S.D.
Format Journal Article
LanguageEnglish
Published EDP Sciences 01.01.2023
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Summary:The increasing propagation in recent years of hatred on social media and the dire requirement for counter measures have drawn critical speculation from state run administrations, organizations, and analysts. Despite the fact that specialists have observed that disdain is an issue across different Social media stages, there is an absence of models for online disdain location utilizing this multi-stage information. Different techniques have been produced for robotizing disdain discovery on the web. Here we will begin by giving the current issue that comes the right to speak freely of discourse on the Internet and the abuse of virtual entertainment stages like Twitter, as well as distinguishing the holes present in the current works. At long last, figured out how to tackle these issues. It is a considerably more testing task, as examination of the language in the common datasets shows that disdain needs one of a kind, discriminative highlights and in this manner making it challenging to find. Removing a few exceptional and significant elements and joining them in various sets to look at and dissect the presentation of different machine learning classification calculations as to each list of capabilities. At long last, subsequent to leading a top to bottom investigation, results show that it is feasible to fundamentally expand the classification score acquired.
ISSN:2267-1242
2267-1242
DOI:10.1051/e3sconf/202343001155