A Hybrid Classifier of Cyber Bullying Detection in Social Media Platforms

Humera Aqeel, Anupriya Kamble
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Abstract

The increase in online and social media connection has made it simple for hate speech and insulting language to spread. Cyberbullying is the phrase used to describe such online abuse, insults, and assaults. It has become difficult to detect such unauthorized material due to the huge number of user-generated content. Deep neural networks are being used more often by academics to identify cyberbullying than regular machine learning algorithms because to their many benefits over them. Machine learning has several uses in text categorization. Hence, it is fundamental to distinguish and sort CB utilizing profound learning (DL) models in informal organizations to avoid this pattern. FSSDL-CBDC is a fresh out of the plastic new methodology for informal communities that joins profound learning and element subset determination. The SSA-DBN model has demonstrated to be more exact than different calculations with a 99.983% precision rate. Generally speaking, the trials' discoveries showed that the FSSDL-CBDC strategy performs better compared to the contending systems in various ways.
社交媒体平台中网络欺凌检测的混合分类器
网络和社交媒体联系的增加使得仇恨言论和侮辱性语言的传播变得更加容易。“网络欺凌”这个词用来描述网络上的虐待、侮辱和攻击。由于大量用户生成的内容,检测此类未经授权的材料变得非常困难。与常规机器学习算法相比,深度神经网络被学者们更多地用于识别网络欺凌,因为深度神经网络比常规机器学习算法有很多好处。机器学习在文本分类中有几种用途。因此,在非正式组织中利用深度学习(DL)模型来区分和分类CB是避免这种模式的基础。FSSDL-CBDC是非正式社区的一种新方法,它结合了深度学习和元素子集确定。SSA-DBN模型的精度可达99.983%。总的来说,试验的发现表明,与竞争系统相比,FSSDL-CBDC策略在各种方面表现更好。
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