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DOER: Dual Cross-Shared RNN for Aspect Term-Polarity Co-Extraction

机译:DOR:双交叉共享RNN,用于方面术语 - 极性共同提取

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This paper focuses on two related subtasks of aspect-based sentiment analysis, namely aspect term extraction and aspect sentiment classification, which we call aspect term-polarity co-extraction. The former task is to extract aspects of a product or service from an opinion document, and the latter is to identify the polarity expressed in the document about these extracted aspects. Most existing algorithms address them as two separate tasks and solve them one by one, or only perform one task, which can be complicated for real applications. In this paper, we treat these two tasks as two sequence labeling problems and propose a novel Dual crOss-sharEd RNN framework (DOER) to generate all aspect term-polarity pairs of the input sentence simultaneously. Specifically. DOER involves a dual recurrent neural network to extract the respective representation of each task, and a cross-shared unit to consider the relationship between them. Experimental results demonstrate that the proposed framework outperforms state-of-the-art baselines on three benchmark datasets.
机译:本文重点介绍了基于宽高的思想分析的两个相关的子任务,即曲期术语提取和宽视情绪分类,我们称之为术语术语极性共同提取。前一项任务是从意见文档中提取产品或服务的方面,后者是识别文档中表达的极性,这些提取方面是关于这些提取的方面的。大多数现有算法以两个单独的任务为它们解决,逐个解决,或者仅执行一个任务,这可能对真实应用程序很复杂。在本文中,我们将这两个任务视为两个序列标记问题,并提出了一种新的双交叉共享RNN框架(DOER),以同时生成输入句的所有宽高学术语极性对。具体来说。 DORER涉及双重复发性神经网络,以提取每个任务的相应表示,以及交叉共享单元,以考虑它们之间的关系。实验结果表明,所提出的框架在三个基准数据集中优于最先进的基线。

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