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首页> 外文期刊>Journal of Universal Computer Science >Open Domain Targeted Sentiment Classification Using Semi-Supervised Dynamic Generation of Feature Attributes
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Open Domain Targeted Sentiment Classification Using Semi-Supervised Dynamic Generation of Feature Attributes

机译:使用特征属性的半监督动态生成的开放域目标情感分类

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Microblogging services have been significantly increased nowadays and enabled people to share conveniently their sentiments (opinions) with regard to matters of concerns. Such sentiments have shown an impact on many fields such as economics and politics. Different sentiment analysis approaches have been proposed in the literature to predict automatically sentiments shared in micro-blogs (e.g., tweets). A class of such approaches predicts opinion towards specific target (entity); this class is referred to as target-dependent sentiment classification. Another class, called open domain targeted sentiment classification, extracts targets from the micro-blog and predicts sentiment towards them. In this research work, we propose a new semi-supervised learning technique for developing open domain targeted sentiment classification by using fewer amounts of labelled data. To the best of our knowledge, our model represents the first semi-supervised technique that is proposed for open domain targeted sentiment classification. Additionally, we propose a new supervised learning model for improving accuracy of open domain targeted sentiment classification. Moreover, we show for the first time that SVM HMM is able to improve accuracy of open domain targeted sentiment classification. Experimental results show that our proposed technique outperforms other prominent techniques available in the literature.
机译:如今,微博客服务已大大增加,使人们可以就所关注的问题方便地分享他们的观点(观点)。这种情绪已对许多领域产生了影响,例如经济和政治。在文献中已经提出了不同的情感分析方法,以自动预测在微博客中共享的情感(例如,推文)。一类这样的方法可以预测对特定目标(实体)的看法。此类称为与目标有关的情绪分类。另一类称为开放领域目标情感分类,它从微博客中提取目标并预测针对这些目标的情绪。在这项研究工作中,我们提出了一种新的半监督学习技术,用于通过使用较少量的标记数据来开发开放域目标情感分类。据我们所知,我们的模型代表了针对开放域目标情感分类提出的第一个半监督技术。此外,我们提出了一种新的监督学习模型,以提高开放领域目标情感分类的准确性。此外,我们首次展示了SVM HMM能够提高开放领域目标情感分类的准确性。实验结果表明,我们提出的技术优于文献中提供的其他突出技术。

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