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Early Fusion of Low Level Features for Emotion Mining

机译:早期融合低级功能以进行情感挖掘

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摘要

We study the discrimination of emotions annotated in free texts at the sentence level: a sentence can either be associated with no emotion (neutral) or multiple labels of emotion. The proposed system relies on three characteristics. We implement an early fusion of grams of increasing orders transposing an approach successfully employed in the related task of opinion mining. We apply a filtering process that consists in extracting frequent n-grams and making use of the Shannon’s entropy measure to respectively maintain dictionaries at balanced sizes and keep emotion specific features. Finally the overall system is implemented as a 2-step decision process: a first classifier discriminates between neutral and emotion bearing sentences, then one classifier per emotion is applied on emotion bearing sentences. The final decision is given by the classifier holding the maximum confidence. Results obtained on the testing set are promising.
机译:我们在句子级别研究在自由文本中注释的情绪的辨别:一个句子可以与无情绪(中性)或多种情绪标签相关联。所提出的系统依赖于三个特征。我们实现了克数递增顺序的早期融合,从而将一种成功应用于观点挖掘相关任务的方法进行了融合。我们采用了一种过滤过程,该过程包括提取频繁出现的n-gram和利用Shannon的熵测度分别将字典保持在平衡的大小并保持情感特有的特征。最终,整个系统由两步决策过程实现:第一个分类器区分中性和带有情感的句子,然后将每个情感一个分类器应用于带有情感的句子。最终决策由拥有最大置信度的分类器给出。在测试集上获得的结果是有希望的。

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