A Neuro-NLP Induced Deep Learning Model Developed Towards Comment Based Toxicity Prediction

Kulaye Shreyal Ashok, Kulaye Aishwarya Ashok, Shaikh Mohammad Bilal Naseem
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Abstract

The comments sections of online forums and social media platforms have become the new playing field for cyber harassment. Correspondingly, various organizations and companies have decided to abolish toxic and nasty comments altogether to avoid this kind of issue. To protect authorized and genuine users from being exposed to comments which contain offensive language on online mediums or social media platforms, organizations have started flagging such comments and they are blocking those users who are using unpleasant forms of language. Most of the organizations use computerized algorithms for instinctive discovery of comment toxicity using machine learning and artificial intelligence based systems. In the present research study, we have tried to build multi headed comment toxicity detection models. We have built three toxicity detection models using deep learning techniques and compared the accuracy and results. We have also developed a menu driven interface which will help to link machine learning models which is uncomplicated for non programmers and this connection of model to interface will be convenient for making interactive programming interfaces with great accuracy and operationality.
基于评论的毒性预测的神经- nlp诱导深度学习模型
网络论坛和社交媒体平台的评论区已经成为网络骚扰的新竞技场。相应的,各种组织和公司已经决定完全废除有毒和肮脏的评论,以避免这类问题。为了保护授权用户和真正的用户不接触到在线媒体或社交媒体平台上含有攻击性语言的评论,组织已经开始标记这些评论,并阻止那些使用令人不快的语言形式的用户。大多数组织使用计算机化算法,通过机器学习和基于人工智能的系统本能地发现评论的毒性。在目前的研究中,我们试图建立多头评论毒性检测模型。我们使用深度学习技术建立了三种毒性检测模型,并比较了准确性和结果。我们还开发了一个菜单驱动的界面,它将有助于连接机器学习模型,这对于非程序员来说并不复杂,并且这种模型与界面的连接将便于制作具有高准确性和可操作性的交互式编程界面。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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