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Overview of the NLPCC 2020 Shared Task: Multi-Aspect-Based Multi-Sentiment Analysis (MAMS)

机译:NLPCC 2020共享任务的概述:基于多方面的多语言分析(MAM)

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In this paper, we present an overview of the NLPCC 2020 shared task on Multi-Aspect-based Multi-Sentiment Analysis (MAMS). The evaluation consists of two sub-tasks: (1) aspect term sentiment analysis (ATSA) and (2) aspect category sentiment analysis (ACSA). We manually annotated a large-scale restaurant reviews corpus for MAMS, in which each sentence contains at least two different aspects with different sentiment polarities. Thus, the provided MAMS dataset is more challenging than the existing aspect-based sentiment analysis (ABSA) datasets. MAMS attracted a total of 50 teams to participate in the evaluation task. We believe that MAMS will push forward the research in the field of aspect-based sentiment analysis.
机译:在本文中,我们概述了NLPCC 2020共享任务对基于多谱系的多种情感分析(MAM)的共享任务。评估由两个子任务组成:(1)方面的术语情绪分析(ATSA)和(2)方面类别情绪分析(ACSA)。我们手动注释了一个大型餐厅点评MAMS语料库,其中每个句子包含至少两个不同的情感极性的不同方面。因此,所提供的MAMS数据集比现有的基于ASPESS的情绪分析(ABSA)数据集更具挑战性。妈妈共吸引了50支球队参加评估任务。我们认为MAMS将推动基于宽高的情绪分析领域的研究。

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