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Target-specified Sequence Labeling with Multi-head Self-attention for Target-oriented Opinion Words Extraction

机译:目标指定的序列标记,具有用于目标导向的意见单词提取的多头自我关注

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Opinion target extraction and opinion term extraction are two fundamental tasks in Aspect Based Sentiment Analysis (ABSA). Many recent works on ABSA focus on Target-oriented Opinion Words (or Terms) Extraction (TOWE), which aims at extracting the corresponding opinion words for a given opinion target. TOWE can be further applied to Aspect-Opinion Pair Extraction (AOPE) which aims at extracting aspects (i.e., opinion targets) and opinion terms in pairs. In this paper, we propose Target-Specified sequence labeling with Multi-head Self-Attention (TSMSA) for TOWE, in which any pre-trained language model with multi-head self-attention can be integrated conveniently. As a case study, we also develop a Multi-Task structure named MT-TSMSA for AOPE by combining our TSMSA with an aspect and opinion term extraction module. Experimental results indicate that TSMSA outperforms the benchmark methods on TOWE significantly; meanwhile, the performance of MT-TSMSA is similar or even better than state-of-the-art AOPE baseline models.
机译:意见目标提取和意见术语提取是基于方面的情绪分析(ABSA)中的两个基本任务。最近关于ABSA的最新作品专注于目标导向的意见单词(或术语)提取(TOWE),旨在提取给定的观点目标的相应意见单词。 TOTE可以进一步应用于旨在以成对提取方面(即意见目标)和意见术语的方面拟参数对提取(AOPE)。在本文中,我们提出了针对TOWE的多头自我关注(TSMSA)的目标指定的序列标记,其中可以方便地集成具有多头自我关注的任何预先接受的语言模型。作为一个案例研究,我们还通过将TSMSA与一个方面和意见术语提取模块组合,开发一个名为MT-TSMSA的多任务结构。实验结果表明,TSMSA显着优于拖曳的基准方法;同时,MT-TSMSA的性能比最先进的AOPE基线模型相似甚至更好。

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