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SYSTEMS AND METHODS FOR UNSUPERVISED CYBERBULLYING DETECTION VIA TIME-INFORMED GAUSSIAN MIXTURE MODEL

机译:基于时间信息高斯混合模型的无监督网络欺凌检测系统和方法

摘要

A computer-implemented framework and/or system for cyberbullying detection is disclosed. The system includes two main components: (1) A representation learning network that encodes the social media session by exploiting multi-modal features, e.g., text, network, and time; and (2) a multi-task learning network that simultaneously fits the comment inter-arrival times and estimates the bullying likelihood based on a Gaussian Mixture Model. The system jointly optimizes the parameters of both components to overcome the shortcomings of decoupled training. The system includes an unsupervised cyberbullying detection model that not only experimentally outperforms the state-of-the-art unsupervised models, but also achieves competitive performance compared to supervised models.
机译:公开了一种用于网络欺凌检测的计算机实现的框架和/或系统。该系统包括两个主要组成部分:(1)表示学习网络,通过利用多模态特征(例如文本、网络和时间)对社交媒体会话进行编码;(2)一个多任务学习网络,同时拟合评论到达时间,并基于高斯混合模型估计欺凌可能性。该系统联合优化两个组件的参数,以克服解耦训练的缺点。该系统包括一个无监督的网络欺凌检测模型,该模型不仅在实验上优于最先进的无监督模型,而且与有监督模型相比具有竞争力。

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