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Sentiment Analysis Based on Bi-LSTM Using Tone

机译:基于Bi-LSTM的音调情感分析

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In view of most of sentiment analysis texts are too short to get enough textual features, a method of bidirectional Long Short-Term Memory using tone (Word, Character and Tone model based on Bidirectional Long Short-Term Memory, WCT-Bi-LSTM) was proposed. Distinguished from the general method of sentiment analysis only taking word as the feature, the model also used character and tone features as input to enrich the characteristics of the text. After that, the model integrated the deep semantic meaning of word, character and tone. It could better grasp the emotion of the text and improve the accuracy of sentiment classification. The experimental results show that, compared with the model which does not integrate tone, the accuracy of the proposed model is increased by 1.2% and 0.9%on two experimental datasets respectively, which proves that the proposed method can effectively improve the accuracy of sentiment classification.
机译:鉴于大多数情感分析文本太短而无法获得足够的文本特征,因此一种使用声调的双向长短期记忆的方法(基于双向长短期记忆,WCT-Bi-LSTM的单词,字符和音调模型)被提出。与仅以单词为特征的情感分析的一般方法不同,该模型还使用字符和语气特征作为输入来丰富文本的特征。之后,该模型整合了单词,字符和语调的深层语义。它可以更好地把握文本的情感,提高情感分类的准确性。实验结果表明,与不整合音调的模型相比,该模型在两个实验数据集上的准确率分别提高了1.2%和0.9%,证明了该方法可以有效提高情感分类的准确性。 。

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