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首页> 外文期刊>Journal of intelligent & fuzzy systems: Applications in Engineering and Technology >Multi-head attention model for aspect level sentiment analysis
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Multi-head attention model for aspect level sentiment analysis

机译:方面级别情绪分析的多主题注意模型

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Aspect level sentiment classification task requires topical polarity classification for different description aspect. There is a polysemy in the same vocabulary, and the emotional polarity is different for different objects. Word embedding can capture semantic information but cannot adapt to the polysemy. Attention mechanism has achieved good performance in the above tasks; however, it is only able to get the degree of association between words and unable to get detailed descriptions. In this paper, the ELMOs model is used to adjust the polysemy of the word. The Transformer model is used to extract the features with the highest degree of relevance to the target object for emotional polarity classification. Our work contribution is to overcome the polysemy interference, and use the attention mechanism to model the network relationship between words, so that the model can extract important classification features according to different target words. Experiments on laptop and restaurant datasets demonstrate that our approach achieves a new state-of-the-art performance on a few benchmarks.
机译:方面级别情绪分类任务需要针对不同描述方面的局部极性分类。在相同的词汇中有一个多晶结构,并且对于不同的物体,情绪极性是不同的。嵌入单词可以捕获语义信息,但不能适应多义。注意机制在上述任务中取得了良好的性能;但是,只能获得单词之间的关联程度,无法获得详细说明。在本文中,ELMOS模型用于调整单词的多义。变压器模型用于提取与目标对象的最高相关性的特征,用于情绪极性分类。我们的工作贡献是克服多义的干扰,并利用注意机制来模拟单词之间的网络关系,使得模型可以根据不同的目标单词提取重要的分类特征。笔记本电脑和餐厅数据集的实验表明,我们的方法在几个基准上实现了新的最先进的性能。

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