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Article Citation Sentiment Analysis Using Deep Learning

机译:使用深度学习的文章引文情感分析

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We performed sentiment analysis on article citation sentences corpora bearing three polarities viz. positive, negative, and neutral. Due to scarcity of negative citation sentences, the dataset suffers from a huge class imbalance issue. To tackle this, we proposed an ensemble feature engineering method for deep learning, which uses embedding of text and its dependency relationships. The performance of deep learning models was compared with a support vector machine and logistic regression approach using bag of words. Experimental results show that deep learning can be used effectively for an imbalanced dataset by applying the proposed ensemble features. Statistical significance test indicates that one-hot supervised LSTM is statistically not different from the baseline methods for two datasets, one developed by us and the other taken from literature.
机译:我们对带有三个极性的文章引文语料库进行了情感分析。积极,消极和中立。由于否定否定句的缺乏,数据集遭受了巨大的班级不平衡问题。为了解决这个问题,我们提出了一种用于深度学习的集成特征工程方法,该方法使用文本的嵌入及其依赖关系。深度学习模型的性能与支持向量机和使用词袋的逻辑回归方法进行了比较。实验结果表明,通过应用所提出的集成特征,深度学习可以有效地用于不平衡数据集。统计显着性检验表明,在两个数据集中,一个由热监督的LSTM在统计学上与基线方法并无差异,一个由我们开发,而另一个则取自文献。

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