基于文本挖掘的社交媒体网络欺凌检测与分类

M. Nisha, J. Jebathangam
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引用次数: 1

摘要

本研究工作旨在通过文本挖掘过程对社交媒体,特别是twitter中与欺凌内容相关的文本进行分类。本研究发展了一种网络欺凌媒体的多模态检测与分类方法。该模型集成了文本和元数据,以识别社交网络中的网络欺凌媒体。该过程包括网络欺凌数据的训练和测试两个阶段,其中自然语言处理(NLP)作为预处理工具,然后使用粒子群优化作为特征选择过程。最后,采用决策树分类器对网络欺凌相关实例进行分类,分类后将这些特征与文本实例结合,检测所提模型的性能。通过仿真测试了该分类器比现有方法的检测率。结果表明,该方法比现有方法具有更高的分类率和检测准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection and Classification of Cyberbullying in Social Media using Text Mining
This research work intends to classify the texts associated with bullying contents in social media, especially twitter by using the text mining process. A Multi-Modal Detection and classification of Cyberbullying media is developed in the study. This model integrates textual, and metadata to identify the cyberbullying media in case of social networks. The process involves two phases training and test the cyberbullying data, where natural language processing (NLP) is applied as the pre-processing tool and then particle swarm optimisation is used as feature selection process. Finally, the study applies decision tree classifier to classify the instances associated with cyberbullying and after classification, these features are combined with text instances to detect the performance of the proposed model. The simulation is conducted to test the detection rate of the classifier than the existing methods. The results show that the proposed method achieves higher rate of classification and detection accuracy than the existing methods.
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