Extracting Explicit and Implicit Aspects Using Deep Learning

Mikail Muhammad Azman Busst, K. Anbananthen, Subarmaniam Kannan, Rajkumar Kannan
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Abstract

The proliferation of user-generated content on social networks and websites has heightened the significance of sentiment analysis, also known as opinion mining, as a critical tool for comprehending people’s attitudes toward various topics. Aspect-level sentiment analysis, which considers specific aspects or features of texts, provides a more comprehensive view of sentiment analysis. The aspect-level approach encompasses both explicit and implicit aspects, where explicit aspects are readily mentioned in texts while implicit aspects are implied or inferred from contextual clues. Despite the significance of implicit aspects in the overall review, previous research has predominantly focused on explicit aspect extraction. Limited attention has been given to the extraction of implicit aspects, despite their potential impact on capturing the complete sentiment picture of texts. Therefore, this study aims to find an aspect extraction solution capable of identifying and extracting both explicit and implicit aspects from texts. This study compares various machine and deep learning models on the SemEval-2014 and SemEval-2016 restaurant datasets. The experimental analysis demonstrates that the proposed Aspect-BiLSTM model emerged as the best-performing model, achieving high accuracy in classifying both explicit and implicit aspects, with 92.9% accuracy for the 2014 and 90.7% accuracy for the 2016 datasets. Notably, the proposed solution was able to capture multiple aspects of texts, making it more robust and versatile. This study highlights the efficacy of the Aspect-BiLSTM model for aspect extraction, which will give valuable insights into the advancement of aspect-level sentiment analysis. Doi: 10.28991/ESJ-2024-08-01-05 Full Text: PDF
利用深度学习提取显性和隐性特征
随着社交网络和网站上用户生成内容的激增,情感分析(又称意见挖掘)作为理解人们对各种话题的态度的重要工具,其重要性日益凸显。方面级情感分析考虑了文本的特定方面或特征,为情感分析提供了更全面的视角。方面级方法包括显性方面和隐性方面,显性方面在文本中很容易被提及,而隐性方面则是隐含的或根据上下文线索推断出来的。尽管隐含方面在整个评论中非常重要,但以前的研究主要集中在显性方面的提取上。对隐含方面的提取关注有限,尽管它们对捕捉文本的完整情感图景具有潜在影响。因此,本研究旨在找到一种能够从文本中识别和提取显性和隐性方面的方面提取解决方案。本研究在 SemEval-2014 和 SemEval-2016 餐厅数据集上比较了各种机器学习和深度学习模型。实验分析表明,所提出的 Aspect-BiLSTM 模型是表现最好的模型,在对显性和隐性方面进行分类方面都达到了很高的准确率,2014 年数据集的准确率为 92.9%,2016 年数据集的准确率为 90.7%。值得注意的是,所提出的解决方案能够捕捉文本的多个方面,使其更加强大和通用。本研究强调了Aspect-BiLSTM模型在方面提取方面的功效,这将为方面级情感分析的发展提供有价值的启示。Doi: 10.28991/ESJ-2024-08-01-05 全文:PDF
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