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Learning Representation From Concurrence-Words Graph For Aspect Sentiment Classification

机译:从并发 - 字词图的学习表示,方面情绪分类

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摘要

Aspect sentiment classification is an important research topic in natural language processing and computational linguistics, assisting in automatically review analysis and emotional tendency judgement. Different from extant methods that focus on text sequence representations, this paper presents a network framework to learn representation from concurrence-words relation graph (LRCWG), so as to improve the Macro-F1 and accuracy. The LRCWG first employs the multi-head attention mechanism to capture the sentiment representation from the sentences which can learn the importance of text sequence representation. And then, it leverages the priori sentiment dictionary information to construct the concurrence relations of sentiment words with Graph Convolution Network (GCN). This assists in that the learnt context representation can keep both the semantics integrity and the features of sentiment concurrence-words relations. The designed algorithm is experimentally evaluated with all the five benchmark datasets and demonstrated that the proposed aspect sentiment classification can significantly improve the prediction performance of learning task.
机译:方面情绪分类是自然语言处理和计算语言学中的一个重要研究课题,协助自动审查分析和情感倾向判断。与远端方法不同,专注于文本序列表示,本文介绍了一种网络框架,用于从并发 - 单词关系图(LRCWG)中学习表示,从而提高宏F1和准确性。 LRCWG首先采用多主题注意机制来捕捉来自句子的情绪表示,该句子可以了解文本序列表示的重要性。然后,它利用先验的情绪字典信息来构造与图形卷积网络(GCN)的情绪单词的并发关系。这有助于学习的上下文表示可以保持语义完整性和情绪并发词关系的特征。设计算法通过所有五个基准数据集进行了实验评估,并证明了所提出的方面情绪分类可以显着提高学习任务的预测性能。

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