Aspect Sentiment Triplet Extraction (ASTE) aims to extract triplets from sentences, where each triplet includes an entity, its associated sentiment, and the opinion span explaining the reason for the sentiment. Most existing research addresses this problem in a multi-stage pipeline manner, which neglects the mutual information between such three elements and has the problem of error propagation. In this paper, we propose a Semantic and Syntactic Enhanced aspect Sentiment triplet Extraction model (S3E2) to fully exploit the syntactic and semantic relationships between the triplet elements and jointly extract them. Specifically, we design a Graph-Sequence duel representation and modeling paradigm for the task of ASTE: we represent the semantic and syntactic relationships between word pairs in a sentence by graph and encode it by Graph Neural Networks (GNNs), as well as modeling the original sentence by LSTM to preserve the sequential information. Under this setting, we further apply a more efficient inference strategy for the extraction of triplets. Extensive evaluations on four benchmark datasets show that S3E2 significantly outperforms existing approaches, which proves our S3E2's superiority and flexibility in an end-to-end fashion.
翻译:以三重元素包括一个实体、其相关情绪和观点来解释这种情绪的原因。 多数现有研究以多阶段管道方式解决这一问题,忽视了这三个元素之间的相互信息,并存在错误传播问题。 在本文件中,我们提议采用三重元素三重元素(S3E2)的语义和同步强化元素感应模式(S3E2),以充分利用三重元素之间的综合和语义关系,并共同提取它们。具体地说,我们设计了ASTE任务的图表序列对齐表达和建模模式:我们以图解和图解形式代表了对词对对词之间的语义和合成关系,用图解神经网络(GNNS)对其进行编码,并以LSTM的原句为模型来保存顺序信息。在此设置下,我们进一步采用更高效的推论战略来提取三重元素。 在四个基准数据集上,我们设计了一个图表序列对立式模型的公式和模型模型模型展示了S3E2的高度灵活性。