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Stance detection via sentiment information and neural network model

机译:通过情感信息和神经网络模型进行姿态检测

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Stance detection aims to automatically determine whether the author is in favor of or against a given target. In principle, the sentiment information of a post highly influences the stance. In this study, we aim to leverage the sentiment information of a post to improve the performance of stance detection. However, conventional discrete models with sentimental features can cause error propagation. We thus propose a joint neural network model to predict the stance and sentiment of a post simultaneously, because the neural network model can learn both representation and interaction between the stance and sentiment collectively. Specifically, we first learn a deep shared representation between stance and sentiment information, and then use a neural stacking model to leverage sentimental information for the stance detection task. Empirical studies demonstrate the effectiveness of our proposed joint neural model.
机译:姿态检测旨在自动确定作者是赞成还是反对给定的目标。原则上,职位的情感信息会严重影响立场。在这项研究中,我们旨在利用帖子的情感信息来改善姿势检测的性能。但是,具有情感特征的常规离散模型可能会导致错误传播。因此,我们提出了一个联合神经网络模型来同时预测帖子的立场和情感,因为神经网络模型可以同时学习立场和情感之间的表示和相互作用。具体来说,我们首先学习姿势和情感信息之间的深度共享表示,然后使用神经堆叠模型将情感信息用于姿势检测任务。实证研究证明了我们提出的联合神经模型的有效性。

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