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Ternary Twitter Sentiment Classification with Distant Supervision and Sentiment-Specific Word Embeddings

机译:三元Twitter情绪分类与遥远的监督和特定情绪的单词嵌入式

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The paper proposes the Ternary Sentiment Embedding Model, a new model for creating sentiment embeddings based on the Hybrid Ranking Model of Tang et al. (2016), but trained on ternary-labeled data instead of binary-labeled, utilizing sentiment embeddings from datasets made with different distant supervision methods. The model is used as part of a complete Twitter Sentiment Analysis system and empirically compared to existing systems, showing that it outperforms Hybrid Ranking and that the quality of the distant-supervised dataset has a great impact on the quality of the produced sentiment embeddings.
机译:本文提出了三元情绪嵌入模型,一种基于Tang等人的混合排名模型创建情绪嵌入的新模型。 (2016),但在三元标记的数据上培训而不是二进制标签,利用来自不同远程监督方法的数据集中的情绪嵌入。该模型用作完整的Twitter情感分析系统的一部分,并与现有系统进行了经验,表明它优于混合排名,并且远处监督数据集的质量对所产生的情绪嵌入的质量产生很大影响。

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