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A multi-view attention-based deep learning system for online deviant content detection

机译:基于多视图的深度学习系统,用于在线异常内容检测

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摘要

With the exponential growth of user-generated content, policies and guidelines are not always enforced in social media, resulting in the prevalence of deviant content violating policies and guidelines. The adverse effects of deviant content are devastating and far-reaching. However, the detection of deviant content from sparse and imbalanced textual data is challenging, as a large number of stakeholders are involved with different stands and the subtle linguistic cues are highly dependent on complex context. To address this problem, we propose a multi-view attention-based deep learning system, which combines random subspace and binary particle swarm optimization (RS-BPSO) to distill content of interest (candidates) from imbalanced data, and applies the context and view attention mechanisms in convolutional neural network (dubbed as SSCNN) for the extraction of structural and semantic features. We evaluate the proposed approach on a large-scale dataset collected from Facebook, and find that RS-BPSO is able to detect whether the content is associated with marijuana with an accuracy of 87.55%, and SSCNN outperforms baselines with an accuracy of 94.50%.
机译:随着用户生成的内容的指数增长,在社交媒体中并不总是在社交媒体中强制执行策略和指南,从而导致违反政策和指南的异常内容的普遍存在。异常含量的不利影响是毁灭性和深远的影响。然而,从稀疏和不平衡的文本数据中检测到稀缺性的差异是具有挑战性的,因为大量利益相关者涉及不同的立场,并且微妙的语言线索高度依赖于复杂的背景。为了解决这个问题,我们提出了一种基于多视图的深度学习系统,它将随机子空间和二进制粒子群优化(RS-BPSO)与Imbalced数据中的蒸馏内容(候选人)结合在一起,并应用上下文和视图卷积神经网络的注意力机制(称为SSCNN),用于提取结构和语义特征。我们评估从Facebook收集的大型数据集上提出的方法,并发现RS-BPSO能够检测内容是否与大麻相关,精度为87.55%,SSCNN优于94.50%的基线。

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