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Multi-Level Feature-Based Ensemble Model for Target-Related Stance Detection

机译:基于多级功能的集合模型,用于目标相关的姿态检测

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摘要

Stance detection is the task of attitude identification toward a standpoint. Previous work of stance detection has focused on feature extraction but ignored the fact that irrelevant features exist as noise during higher-level abstracting. Moreover, because the target is not always mentioned in the text, most methods have ignored target information. In order to solve these problems, we propose a neural network ensemble method that combines the timing dependence bases on long short-term memory (LSTM) and the excellent extracting performance of convolutional neural networks (CNNs). The method can obtain multi-level features that consider both local and global features. We also introduce attention mechanisms to magnify target information-related features. Furthermore, we employ sparse coding to remove noise to obtain characteristic features. Performance was improved by using sparse coding on the basis of attention employment and feature extraction. We evaluate our approach on the SemEval-2016Task 6-A public dataset, achieving a performance that exceeds the benchmark and those of participating teams.
机译:姿态检测是态度识别对角度的任务。以前的姿势检测工作主要集中在特征提取上,但忽略了在更高级抽象过程中存在作为噪声的事实。此外,因为在文中并不总是提到目标,所以大多数方法都忽略了目标信息。为了解决这些问题,我们提出了一种神经网络集合方法,该方法将定时依赖性碱基与长短期存储器(LSTM)相结合,以及卷积神经网络的优异提取性能(CNNS)。该方法可以获得考虑本地和全局功能的多级功能。我们还介绍了注意机制,以扩大目标信息相关的功能。此外,我们采用稀疏编码来消除噪声以获得特征特征。通过在注意就业和特征提取的基础上使用稀疏编码来改善性能。我们在Semeval-2016Task 6-A公共数据集中评估我们的方法,实现了超过基准和参与团队的性能。

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