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A Hierarchical Model of Reviews for Aspect-based Sentiment Analysis

机译:基于方面的情感分析评定的分层模型

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Opinion mining from customer reviews has become pervasive in recent years. Sentences in reviews, however, are usually classified independently, even though they form part of a review's argumentative structure. Intuitively, sentences in a review build and elaborate upon each other; knowledge of the review structure and sentential context should thus inform the classification of each sentence. We demonstrate this hypothesis for the task of aspect-based sentiment analysis by modeling the interdependencies of sentences in a review with a hierarchical bidirectional LSTM. We show that the hierarchical model outperforms two non-hierarchical baselines, obtains results competitive with the state-of-the-art, and outperforms the state-of-the-art on five multilingual, multi-domain datasets without any hand-engineered features or external resources.
机译:近年来,顾客评论挖掘成立普遍存在。然而,在评论中的句子通常独立分类,即使它们形成了评论的争论结构的一部分。直观地,审查建立和互相阐述的句子;因此,对审查结构和句子上下文的了解应告知每个句子的分类。我们通过在具有分层双向LSTM的审查中建模句子中的相互依赖性来证明基于宽度的情绪分析的任务的假设。我们表明,分层模型优于两个非分层基线,获得了与最先进的结果竞争力,并且优于五个多语言的多语言,多域数据集没有任何手工设计的功能或外部资源。

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