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Topical Stance Detection for Twitter: A Two-Phase LSTM Model Using Attention

机译:Twitter的局部姿态检测:使用注意力的两阶段LSTM模型

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The topical stance detection problem addresses detecting the stance of the text content with respect to a given topic: whether the sentiment of the given text content is in FAVOR of (positive), is AGAINST (negative), or is NONE (neutral) towards the given topic. Using the concept of attention, we develop a two-phase solution. In the first phase, we classify subjectivity - whether a given tweet is neutral or subjective with respect to the given topic. In the second phase, we classify sentiment of the subjective tweets (ignoring the neutral tweets) - whether a given subjective tweet has a FAVOR or AGAINST stance towards the topic. We propose a Long Short-Term memory (LSTM) based deep neural network for each phase, and embed attention at each of the phases. On the SemEval 2016 stance detection Twitter task dataset [7], we obtain a best-case macro F-score of 68.84% and a best-case accuracy of 60.2%, outperforming the existing deep learning based solutions. Our framework, T-PAN, is the first in the topical stance detection literature, that uses deep learning within a two-phase architecture.
机译:局部姿态检测问题地址检测到给定主题的文本内容的立场:给定文本内容的情绪是否有利于(正面),而不是(否定),或者是朝向的(中性)给出主题。使用注意的概念,我们开发了两阶段解决方案。在第一阶段,我们对主观性进行分类 - 给定的推文是关于给定主题的中性或主观性。在第二阶段,我们对主观推文的情绪分类(忽略中性推文) - 是否给予给定的主观推文对该主题有利或抵御立场。我们为每个阶段提出了一种基于短期的短期内存(LSTM)深神经网络,并在每个阶段嵌入注意。在Semeval 2016 Stance检测Twitter任务数据集[7]中,我们获得了最佳宏F分,得分为68.84%,最佳案例精度为60.2%,优于现有的基于深度学习的解决方案。我们的框架T-Pan是局部立场检测文献中的第一个,它在两阶段建筑内使用深度学习。

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