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Enhanced Aspect Level Sentiment Classification with Auxiliary Memory

机译:带有辅助记忆的增强的方面水平情感分类

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In aspect level sentiment classification, there are two common tasks: to identify the sentiment of an aspect (category) or a term. As specific instances of aspects, terms explicitly occur in sentences. It is beneficial for models to focus on nearby context words. In contrast, as high level semantic concepts of terms, aspects usually have more generalizable representations. However, conventional methods cannot utilize the information of aspects and terms at the same time, because few datasets are annotated with both aspects and terms. In this paper, we propose a novel deep memory network with auxiliary memory to address this problem. In our model, a main memory is used to capture the important context words for sentiment classification. In addition, we build an auxiliary memory to implicitly convert aspects and terms to each other, and feed both of them to the main memory. With the interaction between two memories, the features of aspects and terms can be learnt simultaneously. We compare our model with the state-of-the-art methods on four datasets from different domains. The experimental results demonstrate the effectiveness of our model.
机译:在方面级别的情感分类中,有两个常见任务:识别方面(类别)或术语的情感。作为方面的特定实例,术语明确地出现在句子中。模型集中于附近的上下文词是有益的。相反,作为术语的高级语义概念,方面通常具有更可概括的表示形式。但是,常规方法不能同时利用方面和术语的信息,因为很少有同时包含方面和术语的数据集。在本文中,我们提出了一种带有辅助存储器的新型深存储器网络,以解决此问题。在我们的模型中,主存储器用于捕获情感分类的重要上下文词。此外,我们构建了一个辅助存储器,以将方面和术语彼此隐式转换,并将它们都馈入主存储器。通过两个存储器之间的交互,可以同时学习方面和术语的特征。我们将模型与来自不同领域的四个数据集上的最新方法进行了比较。实验结果证明了我们模型的有效性。

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    《》|2018年|1077-1087|共11页
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    Peisong Zhu; Tieyun Qian;

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