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Stance and Sentiment in Tweets

机译:推特的立场和情绪

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摘要

We can often detect from a person's utterances whether he or she is in favor of or against a given target entity-one's stance toward the target. However, a person may express the same stance toward a target by using negative or positive language. Here for the first time we present a dataset of tweet-target pairs annotated for both stance and sentiment. The targets may or may not be referred to in the tweets, and they may or may not be the target of opinion in the tweets. Partitions of this dataset were used as training and test sets in a SemEval-2016 shared task competition. We propose a simple stance detection system that outperforms submissions from all 19 teams that participated in the shared task. Additionally, access to both stance and sentiment annotations allows us to explore several research questions. We show that although knowing the sentiment expressed by a tweet is beneficial for stance classification, it alone is not sufficient. Finally, we use additional unlabeled data through distant supervision techniques and word embeddings to further improve stance classification.
机译:我们可以经常从一个人的话语中发现他或她是否赞成或反对给定的目标实体 - 一个人对目标的立场。然而,通过使用负面或积极的语言,一个人可以表达对目标的相同姿态。在这里,我们首次介绍了姿态和情绪的推文 - 目标对的数据集。目标可能或可能不会在推文中提及,也可能是推文中可能不是意见的目标。该数据集的分区用作Semeval-2016共享任务竞赛中的培训和测试集。我们提出了一个简单的姿态检测系统,从所有19个参与共享任务的团队中表现出了意见。此外,访问姿态和情绪注释允许我们探索几个研究问题。我们表明,尽管知道推文表示的情绪是有益的姿态分类,但它独自是不够的。最后,我们通过遥远的监督技术和Word Embeddings使用其他未标记的数据,以进一步改善姿态分类。

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