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Graph-Based Attention Networks for Aspect Level Sentiment Analysis

机译:基于图的注意力网络用于方面情感分析

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With the increasing numbers of user-generated content on the web, identifying the sentiment polarity of the given aspect provides more complete and in-depth results for businesses and customers. Existing deep learning methods ignore that the sentiment polarity of the target is related to the entire text structure, and prevalent approaches among them cannot effectively use the syntactic information. In this paper, we present a deep learning model that employs graph neural networks and graph-based attention mechanisms for aspect based sentiment analysis. In our work, the given text is considered as a graph based on its syntactic structure and the target is the specific region of the graph. Structural attention model and graph attention model are used to concentrate on relations between words and certain regions of the graph. We conduct comprehensive experiments on publicly accessible datasets, and results demonstrate that our model outperforms the state-of-the-art baselines.
机译:随着网络上用户生成内容的数量不断增加,识别给定方面的情感极性可为企业和客户提供更完整,更深入的结果。现有的深度学习方法忽略了目标的情感极性与整个文本结构有关,并且其中流行的方法无法有效地使用句法信息。在本文中,我们提出了一种深度学习模型,该模型采用图神经网络和基于图的注意力机制进行基于方面的情感分析。在我们的工作中,给定的文本基于其句法结构被视为图,并且目标是图的特定区域。结构注意力模型和图注意力模型用于集中于单词和图的某些区域之间的关系。我们对可公开访问的数据集进行了全面的实验,结果表明我们的模型优于最新的基准。

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