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Hierarchical Semantic Representations of Online News Comments for Emotion Tagging Using Multiple Information Sources

机译:使用多个信息源进行情感标记的在线新闻评论的分层语义表示

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With the development of online news services, users now can actively respond to online news by expressing subjective emotions, which can help us understand the predilections and opinions of an individual user, and help news publishers to provide more relevant services. Neural network methods have achieved promising results, but still have challenges in the field of emotion tagging. Firstly, these methods regard the whole document as a stream or bag of words and can't encode the intrinsic relations between sentences. So these methods cannot properly express the semantic meaning of the document in which sentences may have logical relations. Secondly, these methods only use semantics of the document itself, while ignoring the accompanying information sources, which can significantly influence the interpretation of the sentiment contained in documents. Therefore, this paper presents a hierarchical semantic representation model of news comments using multiple information sources, called Hierarchical Semantic Neural Network (HSNN). In particular, we begin with a novel neural network model to learn document representation in a bottom-up way, capturing not only the semantics within sentence but also semantics or logical relations between sentences. On top of this, we tackle the task of predicting emotions for online news comments by exploiting multiple information sources including the content of comments, the content of news articles, and the user-generated emotion votes. A series of experiments and tests on real-world datasets have demonstrated the effectiveness of our proposed approach.
机译:随着在线新闻服务的发展,用户现在可以通过表达主观情绪来积极响应在线新闻,这可以帮助我们了解单个用户的偏爱和见解,并帮助新闻发布者提供更多相关服务。神经网络方法已经取得了令人鼓舞的结果,但是在情感标签领域仍然存在挑战。首先,这些方法将整个文档视为单词流或单词包,并且无法对句子之间的内在联系进行编码。因此,这些方法无法正确表达句子可能具有逻辑关系的文档的语义。其次,这些方法仅使用文档本身的语义,而忽略了附带的信息源,这可能会严重影响文档中所含情感的解释。因此,本文提出了使用多种信息源的新闻评论的分层语义表示模型,称为分层语义神经网络(HSNN)。特别是,我们从一种新型的神经网络模型开始,以自下而上的方式学习文档表示,不仅捕获了句子中的语义,还捕获了句子之间的语义或逻辑关系。最重要的是,我们通过利用多种信息源来处理在线新闻评论的情绪预测任务,这些信息源包括评论的内容,新闻文章的内容以及用户生成的情感投票。在现实世界的数据集上进行的一系列实验和测试证明了我们提出的方法的有效性。

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