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Learning affective projections for emoticons on Twitter

机译:学习Twitter上表情表情的情感预测

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Emoticons have in the literature been shown to modify rather than provide redundancy to the accompanying textual message. Despite this, emoticons are often used merely as labels for sentiment classification tasks. This paper aims to explore the phenomenon and discover more salient emoticon-emotion associations through an embedding-based machine learning process. Using principal component analysis and k-means clustering, it is shown how similar emoticons form groups in vector space. Furthermore, a supervised classification strategy for discovering emoticon-emotion associations is presented. A qualitative evaluation of the results shows that while the clustering is highly salient, the supervised approach does not perform as well.
机译:表情符号在文献中被证明修改而不是提供伴随文本消息的冗余。尽管如此,表情符号通常仅用为有情绪分类任务的标签。本文旨在探讨通过基于嵌入的机器学习过程的现象和发现更加突出的表情情感关联。使用主成分分析和K-means聚类,显示了矢量空间中的相似表情群。此外,提出了用于发现表情情绪协会的监督分类策略。结果的定性评估表明,虽然聚类高度突出,但监督方法也不会表现。

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