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An LSTM-CNN attention approach for aspect-level sentiment classification

机译:基于方面情绪分类的LSTM-CNN注意方法

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Opinions in complex reviews often vary on different aspects of a thing. Coarse-grained sentiment analysis on a sentence can’t capture the sentiment polarity of it accurately. Therefore, aspect-level sentiment classification is a better choice because it is a fine-grained task in sentiment analysis. However, common methods used for sentiment classification are not suitable for fine-grained sentiment analysis, such as LSTM. LSTM works in a sequential way and manipulates each context word with the same operation, so that it cannot explicitly reveal the importance of each context word. To this end, we propose an Aspect-based LSTM-CNN Attention model for aspect-level sentiment classification. Our approach combines LSTM with CNN for simultaneously leveraging LSTM to handle long-range dependencies and CNN’s ability to identify local features. The features extracted by LSTM will be filtered again by convolution and pooling operations to find important local features. Then we introduce the attention mechanism to focus on the important information about the specific aspect. We experiment on the SemEval 2014 dataset and Chinese hotel reviews, and results show that our model can effectively improve the accuracy of aspect-level sentiment classification.
机译:复杂评论中的意见往往因事物的不同方面而有所不同。句子上的粗粒度观点无法准确捕捉其的情感极性。因此,方面级别情绪分类是更好的选择,因为它是情绪分析中的细粒度任务。然而,用于情感分类的常用方法不适合细粒度的情绪分析,例如LSTM。 LSTM以顺序方式工作,并以相同的操作操纵每个上下文字,以便它无法明确揭示每个上下文字的重要性。为此,我们提出了一个基于方面的LSTM-CNN注意模型,用于方面级别情绪分类。我们的方法将LSTM与CNN相结合,同时利用LSTM处理远程依赖性和CNN识别本地特征的能力。 LSTM提取的功能将通过卷积和池汇集操作再次过滤,以找到重要的本地功能。然后我们介绍了注意机制,专注于有关具体方面的重要信息。我们在2014年Semeval上进行实验,以及结果表明,我们的型号可以有效提高方面情绪分类的准确性。

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