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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论的分层模型

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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,来自客户评论的观点挖掘已变得无处不在。但是,即使评论中的句子构成了评论的论证结构的一部分,它们通常也被独立地分类。凭直觉,评论中的句子相互补充并相互阐述;因此,对复习结构和句子上下文的了解应有助于对每个句子进行分类。我们通过对带有分层双向LSTM的审阅中句子的相互依赖性进行建模,证明了这一基于方面的情感分析任务的假设。我们展示了层次模型优于两个非层次基线,获得了与最新技术竞争的结果,并且在五个没有任何人工设计功能的多语言,多域数据集上均优于最新技术或外部资源。

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