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Don't Count, Predict! An Automatic Approach to Learning Sentiment Lexicons for Short Text

机译:不算数,预测!用于短文本学习情绪词典的自动方法

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We describe an efficient neural network method to automatically learn sentiment lexicons without relying on any manual resources. The method takes inspiration from the NRC method, which gives the best results in SemEval13 by leveraging emoticons in large tweets, using the PMI between words and tweet sentiments to define the sentiment attributes of words. We show that better lexicons can be learned by using them to predict the tweet sentiment labels. By using a very simple neural network, our method is fast and can take advantage of the same data volume as the NRC method. Experiments show that our lexicons give significantly better accuracies on multiple languages compared to the current best methods.
机译:我们描述了一种有效的神经网络方法,可以在不依赖于任何手动资源的情况下自动学习情绪词典。该方法采用NRC方法的启发,它通过利用大推文中的表情符号,使用单词和推文情绪之间的PMI来定义单词的情感属性来提供最佳结果。我们表明可以通过使用它们来预测推文情绪标签来学习更好的词汇。通过使用一个非常简单的神经网络,我们的方法很快,可以利用与NRC方法相同的数据量。实验表明,与目前的最佳方法相比,我们的词汇对多种语言进行了明显更好的准确性。

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