Abstract

Over the past years the exponential growth of social media usage has given the power to every individual to share their opinions freely. This has led to numerous threats allowing users to exploit their freedom of speech, thus spreading hateful comments, using abusive language, carrying out personal attacks, and sometimes even to the extent of cyberbullying. However, determining abusive content is not a difficult task and many social media platforms have solutions available already but at the same time, many are searching for more efficient ways and solutions to overcome this issue. Traditional models explore machine learning models to identify negative content posted on social media. Shaming categories are explored, and content is put in place according to the label. Such categorization is easy to detect as the contextual language used is direct. However, the use of irony to mock or convey contempt is also a part of public shaming and must be considered while categorizing the shaming labels. In this research paper, various shaming types, namely toxic, severe toxic, obscene, threat, insult, identity hate, and sarcasm are predicted using deep learning approaches like CNN and LSTM. These models have been studied along with traditional models to determine which model gives the most accurate results.

Highlights

  • The act of instant emotional expression through social media is becoming a common phenomenon in today’s world

  • The research paper shows the implementation of Convolution Neural Network (CNN) and LSTM based approaches for detecting online public shaming

  • It is observed that the deep learning approach for online public shaming has been carried out using CNN and LSTM

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Summary

Introduction

The act of instant emotional expression through social media is becoming a common phenomenon in today’s world. Many social platforms are working on this current issue where a user can be reported/ restricted or blocked if it is observed by many users around them Such acts of shaming individuals on social media platforms need to be controlled sufficiently. This research paper includes sarcasm as a shaming category where an ironic or satirical remark tempered by humour is mainly used to say the opposite of what's true to make someone look or feel foolish.

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