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A Rumor Events Detection Method Based on Deep Bidirectional GRU Neural Network

机译:基于深度双向GRU神经网络的谣言事件检测方法

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Traditional rumors detection methods often rely on statistical analysis to manually select features to construct classifiers. Not only is the message feature selection difficult, but the gap, between the representation space where the shallow statistical features of information exist and the representation space where the highly abstract features including semantics and emotion of information exist, is very big. Thus, the result of traditional classifiers based on the shallow or middle features is not so good. Due to this problem, a rumors deteciton method based on Deep Bidirectional Gated Recurrent Unit (D-Bi-GRU) is presented. To capture the evolution of group response information of microblog events over time, we consider the forward and backward sequences of microblog flow of group response information along time line simultaneously. The evolution representations of deep latent space including semantic and emotion learned by stack multi layers Bi-GRUs to rumor detection. Experimental results on a real world data set showed that rumor events detection by considering bidirectional sequence of group response information simultaneously can obtain a better performance, and stack multi-layers Bi-GRUs can better detect rumor events in microblog.
机译:传统的谣言检测方法通常依靠统计分析来手动选择要构建分类器的特征。不仅信息特征选择困难,而且存在信息的浅统计特征的表示空间与存在包括信息的语义和情感的高度抽象的特征的表示空间之间的差距也很大。因此,基于浅层或中层特征的传统分类器的结果不是很好。由于这个问题,提出了一种基于深度双向选通递归单元(D-Bi-GRU)的谣言检测方法。为了捕获微博事件的群体响应信息随时间的演变,我们同时考虑了沿时间线的群体响应信息的微博流的前向和后向序列。深层潜在空间的演化表示,包括通过堆栈多层Bi-GRU学习的语义和情感以进行谣言检测。在现实世界数据集上的实验结果表明,同时考虑组响应信息的双向顺序进行谣言事件检测可以获得更好的性能,而堆栈多层Bi-GRU可以更好地检测微博中的谣言事件。

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