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Aspect Level Sentiment Analysis with Aspect Attention

机译:注意方面的方面水平情感分析

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摘要

Aspect level sentiment classification is a fundamental task in the field of sentiment analysis, which goal is to inferring sentiment on entities mentioned within texts or aspects of them. Since it performs finer-grained analysis, aspect level sentiment classification is more challenging. Recently, neural network approaches, such as LSTMs, have achieved much progress in sentiment analysis. However, most neural models capture little aspect information in sentences. Aspect level sentiment of a sentence is determined not only by the content but also by the concerned aspect. In this paper, we propose a novel LSTM with Aspect Attention model (LSTM_AA) for aspect level sentiment classification. Our model introduces aspect attention to relate the aspect level sentiment of a sentence closely to the concerned aspect, as well as to explore the connection between an aspect and the content of a sentence. We experiment on the SemEval 2014 datasets and results show that our model performs comparable to state-of-the-art deep memory network, and substantially better than other neural network approaches. Besides, our approach is more robust than deep memory network which performance heavily depends on the hops.
机译:方面级别的情感分类是情感分析领域的一项基本任务,其目的是推断文本或其中各方面中提到的实体的情感。由于它执行更细粒度的分析,因此方面级别的情感分类更具挑战性。近年来,神经网络方法(例如LSTM)在情感分析中取得了很大进展。但是,大多数神经模型在句子中捕获的方面信息很少。句子的方面层次感不仅取决于内容,还取决于相关方面。在本文中,我们提出了一种具有方面注意模型(LSTM_AA)的新型LSTM,用于方面级别的情感分类。我们的模型引入了方面关注,以将句子的方面级别的情感与所关注的方面紧密联系起来,并探索一个方面与句子内容之间的联系。我们对SemEval 2014数据集进行了实验,结果表明,该模型的性能可与最新的深度存储网络相媲美,并且比其他神经网络方法要好得多。此外,我们的方法比深度内存网络更健壮,后者的性能很大程度上取决于跃点。

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