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Target-Sensitive Memory Networks for Aspect Sentiment Classification

机译:用于方面情绪分类的目标敏感内存网络

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Aspect sentiment classification (ASC) is a fundamental task in sentiment analysis. Given an aspect/target and a sentence, the task classifies the sentiment polarity expressed on the target in the sentence. Memory networks (MNs) have been used for this task recently and have achieved state-of-the-art results. In MNs, attention mechanism plays a crucial role in detecting the sentiment context for the given target. However, we found an important problem with the current MNs in performing the ASC task. Simply improving the attention mechanism will not solve it. The problem is referred to as target-sensitive sentiment, which means that the sentiment polarity of the (detected) context is dependent on the given target and it cannot be inferred from the context alone. To tackle this problem, we propose the target-sensitive memory networks (TMNs). Several alternative techniques are designed for the implementation of TMNs and their effectiveness is experimentally evaluated.
机译:方面情绪分类(ASC)是情绪分析中的基本任务。鉴于一个方面/目标和句子,任务对句子中的目标表示的情极性分类。最近已用于此任务的内存网络(MNS)并已实现最先进的结果。在MNS中,注意机制在检测给定目标的情感上下文时起着至关重要的作用。但是,我们发现当前MNS执行ASC任务时发现了一个重要问题。简单地改善注意力机制将无法解决。问题被称为目标敏感情绪,这意味着(检测到)上下文的情感极性取决于给定的目标,并且不能单独从上下文推断出来。为了解决这个问题,我们提出了目标敏感的内存网络(TMN)。设计了几种替代技术用于实现TMN,其有效性是通过实验评估的。

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