Classification of posts in social media such as Twitter is difficult due to the noisy and short nature of texts. Sequence classification models based on recurrent neural networks (RNN) are popular for classifying posts that are sequential in nature. RNNs assume the hidden representation dynamics to evolve in a discrete manner and do not consider the exact time of the posting. In this work, we propose to use recurrent neural ordinary differential equations (RNODE) for social media post classification which consider the time of posting and allow the computation of hidden representation to evolve in a time-sensitive continuous manner. In addition, we propose a novel model, Bi-directional RNODE (Bi-RNODE), which can consider the information flow in both the forward and backward directions of posting times to predict the post label. Our experiments demonstrate that RNODE and Bi-RNODE are effective for the problem of stance classification of rumours in social media.
翻译:以经常性神经网络为基础的序列分类模式(RNN)在对连续性质职位进行分类方面很受欢迎; RNN承担隐性代表动态,以独立的方式演变,不考虑张贴的确切时间; 在这项工作中,我们提议在社会媒体职位分类中使用经常性神经普通差异方程式(RNODE),该方程式考虑张贴时间,并允许以对时间敏感的持续方式计算隐藏的表达方式; 此外,我们提议采用新的模式,双向RNODE(BI-RONDE),该模式可以考虑在张贴时间的前向和后向方向的信息流动,以预测张贴日期; 我们的实验表明,RONDE和BI-RODE对于社交媒体的流言立场分类问题是有效的。