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Joint Extraction of Opinion Targets and Opinion Expressions Based on Cascaded Model

机译:基于级联模型的观点目标和观点表达联合提取

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Fine-grained opinion analysis is a very important task, especially identifying opinion target and opinion expression. In this paper, a new neural architecture is proposed for the sentence-level joint extraction of opinion target and opinion expression. The neural architecture namely cascaded model includes pre-trained model BERT Base, linguistic features, bi-directional LSTM, soft attention network and CRF layer from bottom to top. The cascaded model provides the best joint extraction results in the SemEval-2014/2016 Task 4/5 data sets compared with the state-of-the-art. There are three main contributions in our work, (1) attention network is introduced into the task of sentence-level joint extraction of opinion target and opinion expression, which enhances the dependence between opinion target and opinion expression. (2) pre-trained model BERT-Base and linguistic features are introduced into our work, which greatly improve the convergence speed and the performance of the cascaded model. (3) opinion target and opinion expression are synchronously extracted, and achieved better results compared with the most of the existing pipelined methods.
机译:细粒度的意见分析是一项非常重要的任务,尤其是确定意见目标和意见表达方式。本文提出了一种新的神经体系结构,用于句子水平的观点目标和观点表达的联合提取。神经体系结构即级联模型包括预训练的模型BERT Base,语言特征,双向LSTM,软注意力网络和从下到上的CRF层。与最新技术相比,级联模型在SemEval-2014 / 2016 Task 4/5数据集中提供了最佳的联合提取结果。在我们的工作中,主要有三个方面的贡献:(1)将注意网络引入到了意见目标和意见表达的句子级联合提取任务中,这增强了意见目标和意见表达之间的依赖性。 (2)将经过预训练的模型BERT-Base和语言特征引入到我们的工作中,极大地提高了级联模型的收敛速度和性能。 (3)同步提取观点目标和观点表达,与大多数现有流水线方法相比,取得了更好的效果。

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