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Sentiment Embedded Semantic Space for More Accurate Sentiment Analysis

机译:情感嵌入式语义空间,可进行更准确的情感分析

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Word embedding is one common word vector representation with improved performance for sentiment analysis task. Most existing methods of learning context-based word embedding are semantic oriented, but they typically fail to capture the sentiment information. This may result in words with similar vectors but with very different sentiment polarities, thus degrading the followed sentiment analysis performance. In this paper, we propose a novel and efficient method to yield the Sentiment Embedded Semantic Space that captures the connection between the sentiment space and the semantic space. The proposed method is based on K-means and CNN. In addition, we develop a more fine-grained sentiment dictionary based on HowNet Dictionary together with the processing dataset. Extensive experiments on benchmark datasets show that the proposed method leads to more accurate sentiment classifier and reduces the task-specific word embedding effort.
机译:词嵌入是一种常见的词向量表示形式,可提高情感分析任务的性能。学习基于上下文的单词嵌入的大多数现有方法都是面向语义的,但是它们通常无法捕获情感信息。这可能导致单词具有相似的向量,但情感极性却大不相同,从而降低了后续的情感分析性能。在本文中,我们提出了一种新颖有效的方法来产生情感嵌入的语义空间,该空间捕获了情感空间和语义空间之间的联系。所提出的方法是基于K-means和CNN的。此外,我们基于HowNet词典和处理数据集开发了更细粒度的情感词典。在基准数据集上进行的大量实验表明,该方法可导致情感分类器更加准确,并减少了针对特定任务的词嵌入工作量。

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