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Attention-based long short-term memory network using sentiment lexicon embedding for aspect-level sentiment analysis in Korean

机译:基于情感词典的基于注意力的长期短期记忆网络,用于韩语方面的情感分析

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摘要

Although deep learning breakthroughs in NLP are based on learning distributed word representations by neural language models, these methods suffer from a classic drawback of unsupervised learning techniques. Furthermore, the performance of general-word embedding has been shown to be heavily task-dependent. To tackle this issue, recent researches have been proposed to learn the sentiment-enhanced word vectors for sentiment analysis. However, the common limitation of these approaches is that they require external sentiment lexicon sources and the construction and maintenance of these resources involve a set of complexing, time-consuming, and error-prone tasks. In this regard, this paper proposes a method of sentiment lexicon embedding that better represents sentiment word's semantic relationships than existing word embedding techniques without manually-annotated sentiment corpus. The major distinguishing factor of the proposed framework was that joint encoding morphemes and their POS tags, and training only important lexical morphemes in the embedding space. To verify the effectiveness of the proposed method, we conducted experiments comparing with two baseline models. As a result, the revised embedding approach mitigated the problem of conventional context-based word embedding method and, in turn, improved the performance of sentiment classification.
机译:尽管NLP的深度学习突破是基于通过神经语言模型学习分布式单词表示形式的,但这些方法仍存在无监督学习技术的经典缺点。此外,已显示通用词嵌入的性能在很大程度上取决于任务。为了解决这个问题,最近的研究已经提出来学习用于情感分析的情感增强词向量。但是,这些方法的共同局限性在于它们需要外部情感词典资源,并且这些资源的构建和维护涉及一系列复杂,耗时且易于出错的任务。在这方面,本文提出了一种情感词典嵌入方法,该方法比没有人工注释情感语料库的现有单词嵌入技术更好地表示了情感词的语义关系。提出的框架的主要区别因素是联合编码词素及其POS标签,并且仅在嵌入空间中训练重要的词素。为了验证所提出方法的有效性,我们与两个基线模型进行了比较。结果,修改后的嵌入方法减轻了传统的基于上下文的词嵌入方法的问题,从而提高了情感分类的性能。

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