用情感信息提炼词嵌入进行情感分析

Q3 Decision Sciences Journal of ICT Standardization Pub Date : 2022-01-01 DOI:10.13052/jicts2245-800X.1031
Mohammed Kasri;Marouane Birjali;Mohamed Nabil;Abderrahim Beni-Hssane;Anas El-Ansari;Mohamed El Fissaoui
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引用次数: 4

摘要

自然语言处理问题通常需要使用预先训练的分布式单词表示,以通过深度学习模型来解决。然而,分布式表示通常依赖于上下文信息,这阻碍了他们学习所有重要的单词特征。情感分析任务遇到这样的问题,因为在学习单词嵌入的过程中,情感信息被忽略了。情绪分析的性能可能会受到影响,因为具有相似向量的两个词可能具有相反的情绪方向。为了解决这一问题,本文提出了一种新的模型——连续情感上下文向量(CSCV)。所提出的模型可以利用其周围的上下文单词来学习单词情感嵌入。它使用连续词袋(CBOW)模型来处理上下文,并使用情感词典来识别情感。然后使用主成分分析(PCA)将现有的预训练向量与所获得的情绪向量相组合,以提高它们的质量。实验表明:(1)CSCV向量可以用于增强任何预先训练的词向量;(2) 结果向量有力地缓解了具有相反极性的相似词的问题;(3) 应用该方法可以提高情绪分类的性能。
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Refining Word Embeddings with Sentiment Information for Sentiment Analysis
Natural Language Processing problems generally require the use of pretrained distributed word representations to be solved with deep learning models. However, distributed representations usually rely on contextual information which prevents them from learning all the important word characteristics. The task of sentiment analysis suffers from such a problem because sentiment information is ignored during the process of learning word embeddings. The performance of sentiment analysis can be affected since two words with similar vectors may have opposite sentiment orientations. The present paper introduces a novel model called Continuous Sentiment Contextualized Vectors (CSCV) to address this problem. The proposed model can learn word sentiment embedding using its surrounding context words. It uses Continuous Bag-of-Words (CBOW) model to deal with the context and sentiment lexicons to identify sentiment. Existing pre-trained vectors are combined then with the obtained sentiment vectors using Principal component analysis (PCA) to enhance their quality. The experiments show that: (1) CSCV vectors can be used to enhance any pre-trained word vectors; (2) The result vectors strongly alleviate the problem of similar words with opposite polarities; (3) The performance of sentiment classification is improved by applying this approach.
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来源期刊
Journal of ICT Standardization
Journal of ICT Standardization Computer Science-Information Systems
CiteScore
2.20
自引率
0.00%
发文量
18
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