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Nature-Inspired-Based Approach for Automated Cyberbullying Classification on Multimedia Social Networking

机译:基于自然灵感的自动化网络欺骗分类方法对多媒体社交网络

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In the modern era, the cyberbullying (CB) is an intentional and aggressive action of an individual or a group against a victim via electronic media. The consequence of CB is increasing alarmingly, affecting the victim either physically or psychologically. This allows the use of automated detection tools, but research on such automated tools is limited due to poor datasets or elimination of wide features during the CB detection. In this paper, an integrated model is proposed that combines both the feature extraction engine and classification engine from the input raw text datasets from a social media engine. The feature extraction engine extracts the psychological features, user comments, and the context into consideration for CB detection. The classification engine using artificial neural network (ANN) classifies the results, and it is provided with an evaluation system that either rewards or penalizes the classified output. The evaluation is carried out using Deep Reinforcement Learning (DRL) that improves the performance of classification. The simulation is carried out to validate the efficacy of the ANN-DRL model against various metrics that include accuracy, precision, recall, and f-measure. The results of the simulation show that the ANN-DRL has higher classification results than conventional machine learning classifiers.
机译:在当今时代,网络恐吓(CB)是个人的故意和侵略行动或一组通过对电子媒体的牺牲品。 CB的结果是惊人的速度增长,影响了受害者或者生理上或心理上。这允许使用的自动检测工具,但在这样的自动化工具的研究是有限的,由于CB检测期间较差的数据集或消除宽的结构。在本文中,集成模型,提出了一种结合了来自社交媒体引擎输入的原始文本数据集的特征提取引擎和分类引擎。特征提取引擎中获得的心理特点,用户评论,并从上下文考虑的CB检测。使用人工神经网络(ANN)分类引擎分类的结果,并且它设置有评估系统,无论是奖励或惩罚分类输出。该评估是进行使用Deep强化学习(DRL),即提高了分类性能。该模拟被执行以验证对包括准确度,精密度,调用和F值的各种度量的ANN-DRL模型的功效。的仿真结果表明,ANN-DRL具有较高的分类结果比传统机器学习的分类结果。

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